Water Confitions
Water Confitions
                                         Abstract: Remotely piloted aircraft (RPA) are essential in precision coffee farming due to
                                         their capability for continuous monitoring, rapid data acquisition, operational flexibility
                                         at various altitudes and resolutions, and adaptability to diverse terrain conditions. This
                                         study evaluated the soil water conditions in a coffee plantation using remotely piloted
                                         aircraft to obtain multispectral images and vegetation indices. Fifteen vegetation indices
                                         were chosen to evaluate the vigor, water stress, and health of the crop. Soil samples
                                         were collected to measure gravimetric and volumetric moisture at depths of 0–10 cm and
                                         10–20 cm. Data were collected at thirty georeferenced sampling points within a 1.2 ha area
                                         using GNSS RTK during the dry season (August 2020) and the rainy season (January 2021).
                                         The highest correlation (51.57%) was observed between the green spectral band and the
                                         0–10 cm volumetric moisture in the dry season. Geostatistical analysis was applied to
                                         map the spatial variability of soil moisture, and the correlation between vegetation indices
                                         and soil moisture was evaluated. The results revealed a strong spatial dependence of
                                         soil moisture and significant correlations between vegetation indices and soil moisture,
                                         highlighting the effectiveness of RPA and geostatistics in assessing water conditions in
                                         coffee plantations. In addition to soil moisture, vegetation indices provided information
Academic Editors: Simone Pascuzzi        about plant vigor, water stress, and general crop health.
and Francesco Marinello
Received: 26 December 2024               Keywords: precision coffee farming; kriging interpolation; water status monitoring
Revised: 20 March 2025
Accepted: 31 March 2025
Published: 8 April 2025
                               Organization (ICO) [6]. In Minas Gerais, the main state producing arabica coffee, the
                               scarcity and irregularity of rainfall have compromised biennial productivity. According
                               to Conab [2], the 2025 harvest was estimated at 34.68 million bags, a reduction of 12.4%
                               compared with the previous year. Productivity also dropped by 11.0%, reaching 23.4 bags
                               per hectare.
                                     Given this scenario, soil attributes, such as moisture, are fundamental for coffee culti-
                               vation, directly influencing growth and productivity [7]. Studies on the effects of irrigation
                               on coffee production and development indicate that water application can either accelerate
                               or delay fruit maturation [8,9]. Beverage quality is associated with uniform maturation,
                               which depends on flowering synchronization and proper irrigation management, avoiding
                               water stress during critical grain formation phases [10]. Soil water scarcity can reduce the
                               number of reproductive nodes, compromising flower and fruit formation.
                                     However, water movement in the soil is heterogeneous and influenced by factors such
                               as climate, soil type, topography, and vegetation cover, resulting in significant spatial and
                               temporal variability [11,12]. Studies by [13] demonstrate that creating soil moisture distribu-
                               tion maps using interpolation techniques allows for more efficient irrigation management,
                               increasing productivity and reducing waste. Additionally, according to [14], spatial and
                               temporal variations in soil moisture can be integrated into precision irrigation management.
                                     A comprehensive understanding of the spatial and temporal variability of soil moisture
                               is crucial for optimizing water management in coffee cultivation. To quantify coffee
                               plants’ water needs, adopting precision agriculture (PA) technologies has proven to be an
                               effective strategy. The application of precision agriculture (PA) techniques and tools in
                               coffee cultivation remains relatively recent, particularly in the assessment of soil and plant
                               heterogeneity [15]. Studies such as those by [16], which analyzed the spatial variability of
                               soil moisture through gravimetric moisture, and studies by [15], which investigated the
                               spatial variability of soil fertility and productivity in coffee crops, exemplify this application.
                                     Remote sensing and remotely piloted aircraft (RPA) have been extensively utilized
                               to evaluate soil and plant attribute variability, offering advantages such as ease of data
                               acquisition, enhanced operational flexibility, and greater reliability compared with tradi-
                               tional methods [17,18]. These technologies employ reflectance spectroscopy-based sensors
                               to measure electromagnetic radiation reflected after interacting with various surfaces at
                               specific wavelengths, such as near-infrared and mid-infrared [19]. This reflection gener-
                               ates spectral bands, allowing the extraction of vegetation indices, which are essential for
                               agricultural monitoring [20,21].
                                     In agricultural fields, each surface uniquely reflects electromagnetic radiation, present-
                               ing a specific spectral signature. Water and soil have reflectance peaks in the near-infrared
                               wavelength, while vegetation emits radiation in this range and absorbs radiation in the
                               visible spectrum band. In the mid-infrared wavelength, spectral behavior is influenced by
                               water presence in the leaves [22]. Plant chlorophylls exhibit absorption peaks in the blue
                               and red regions of the spectrum, making the red spectral band a key component of remote
                               sensing applications This facilitates the application of indices such as NDVI (normalized
                               difference vegetation index), described by Rouse et al. (1973) [23], and the CIrededge index,
                               described by Gitelson [24]. Additionally, the normalized difference water index (NDWI),
                               introduced by McFeeters [25], is extensively utilized for soil moisture estimation.
                                     Numerous studies emphasize the application of vegetation indices in coffee cultiva-
                               tion [26,27]. Despite the large volume of research on using multispectral images obtained
                               by RPA in coffee plantations, only [28] has evaluated plant water conditions through the
                               leaf water potential attribute.
AgriEngineering 2025, 7, x FOR PEER REVIEW                                                                                      3 of 23
                                 2. Materials
                                 2.           and Methods
                                    Materials and Methods
                                       The research workflow (Figure 1) was divided into four stages. The first stage in-
                                      The research workflow (Figure 1) was divided into four stages. The first stage involved
                                 volved the construction of the sampling mesh and the georeferencing of the area and col-
                                 the construction of the sampling mesh and the georeferencing of the area and collection
                                 lection points. The second stage involved collecting soil samples from georeferenced
                                 points. The second stage involved collecting soil samples from georeferenced plants to
                                 plants to determine soil moisture (gravimetric and volumetric moisture). The third stage
                                 determine soil moisture (gravimetric and volumetric moisture). The third stage involved
                                 involved conducting
                                 conducting              a flight
                                              a flight with      with a multispectral
                                                              a multispectral           sensor mounted
                                                                               sensor mounted    on the on   theThe
                                                                                                          RPA.   RPA.  Thestage
                                                                                                                    final   final
                                 stage involved
                                 involved         carrying
                                           carrying         out correlation
                                                     out correlation        and regression
                                                                     and linear  linear regression
                                                                                            analysisanalysis
                                                                                                     betweenbetween   soil mois-
                                                                                                              soil moisture and
                                 ture and  vegetation  indices  calculated using  multispectral
                                 vegetation indices calculated using multispectral bands.       bands.
                                 Figure 1.
                                 Figure 1. Work
                                           Work sequence.
                                                sequence.
                                 2.1.
                                 2.1. Crop
                                      Crop Characterization
                                            Characterization
                                       The
                                       The study
                                            study site
                                                   site (Figure
                                                        (Figure 2)2) consisted
                                                                     consisted of
                                                                                of aa 1.2
                                                                                      1.2 ha
                                                                                          ha coffee
                                                                                              coffee plantation
                                                                                                      plantation of
                                                                                                                 of the
                                                                                                                    the species
                                                                                                                         species Coffea
                                                                                                                                 Coffea
                                 arabica,
                                 arabica, specifically the Topázio MG1190 cultivar. The spacing between coffee rows was
                                           specifically  the  Topázio   MG1190    cultivar.  The   spacing  between   coffee  rows  was
                                 3.70
                                 3.70 m
                                      m and
                                         andbetween
                                              betweenplants
                                                          plants0.70
                                                                  0.70m.m.The
                                                                           Thearea is is
                                                                                area  located  in in
                                                                                         located  thethe
                                                                                                       municipality
                                                                                                         municipalityof Três Pontas,
                                                                                                                        of Três      the
                                                                                                                                Pontas,
                                 southern   region
                                 the southern       of the
                                                region   of state of Minas
                                                            the state        Gerais,
                                                                       of Minas       at 905
                                                                                  Gerais,  at m
                                                                                              905altitude and with
                                                                                                   m altitude        UTMUTM
                                                                                                               and with     coordinates
                                                                                                                                coordi-
                                 S7640030.4 and E449531.5, zone 23K.
                                 nates S7640030.4 and E449531.5, zone 23K.
                                       According to the Köppen–Geiger climate classification, the region has a Cwb climate.
                                       According to the Köppen–Geiger climate classification, the region has a Cwb climate.
                                 This climate type is characterized as a high-altitude temperate or tropical highland climate,
                                 This climate type is characterized as a high-altitude temperate or tropical highland cli-
                                 with dry winters (temperatures below 18 ◦ C) and mild summers (temperatures below
                                 mate, with dry winters (temperatures below 18 °C) and mild summers (temperatures be-
                                 23 ◦ C). It generally occurs in regions with altitudes above 900 m. Therefore, the Cwb
                                 low 23 °C). It generally occurs in regions with altitudes above 900 m. Therefore, the Cwb
                                 classification reflects climatic conditions marked by wetter summers and dry winters,
                                 classification reflects climatic conditions marked by wetter summers and dry winters, typ-
                                 typical of higher altitude areas in Brazil.
                                 ical of higher altitude areas in Brazil.
                                       The same study area was evaluated in the works of [15,29]. The authors also aimed
                                 to analyze the correlation between vegetation indices and attributes related to coffee trees.
                                 However, none of these studies explored the application of soil moisture in assessing the
                                 water status of coffee plants.
AgriEngineering  2025, 7,
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                                                                                                                                       4 of 22
                                      The same study area was evaluated in the works of [29,15]. The authors also aimed
                                 to analyze the correlation between vegetation indices and attributes related to coffee trees.
                                 However, none of these studies explored the application of soil moisture in assessing the
                                 water status of coffee plants.
Figure 3. Sampling grid for the collection of 30 points from this study.
                                       The equidistant sampling grid methodology for precision coffee farming, as proposed
                                  by [30], was employed in the construction of the sampling grid. This method aimed to
                                  optimize movements within the study area by defining walking routes. In total, 30 points
                                  were sampled, with distances ranging from 6 m (minimum) to 175 m (maximum).
                                            In this experiment, each of the 30 sampling points corresponded to an individual
                                        plant, which was numerically identified. To assess the water status of the coffee trees, two
 AgriEngineering 2025, 7, 110
                                        sampling campaigns were conducted:
                                                                                                                                     5 of 22
                                        •    August 2020 (dry season).
                                        •    January 2021 (rainy season).
                                             In this experiment, each of the 30 sampling points corresponded to an individual
                                             Table 1 presents climatological data for August 2020 and January 2021, correspond-
                                        plant, which was numerically identified. To assess the water status of the coffee trees,
                                        ing to the sampling period, along with water balance information. The table was con-
                                         two sampling campaigns were conducted:
                                        structed based on data from the National Institute of Meteorology (INMET is the acronym
                                         • August 2020 (dry season).
                                        in Portuguese) and the Phytosanitary Bulletins of the Procafé Foundation. Table 2 repre-
                                         • January 2021 (rainy season).
                                        sents the altitude range among the sampling points and the soil properties of the study
                                        area. Table 1 presents climatological data for August 2020 and January 2021, corresponding
                               to the sampling period, along with water balance information. The table was constructed
                               based1.on
                              Table        data from
                                        Climatic       the National
                                                  conditions  and waterInstitute
                                                                         balanceof  Meteorology
                                                                                  during  the dry and(INMET    is the acronym in
                                                                                                        rainy seasons.
                               Portuguese) and the Phytosanitary Bulletins of the Procafé Foundation. Table 2 represents
                               theMonthly
                                   altitude range         Monthly Accumu-
                  Monthly Mean               Mean among
                                                    Rel- the sampling points       and Wind
                                                                                 Mean   the soil properties of the study area.
    Season                                                lated Precipitation                                Water Balance
                 Temperature (°C) ative Moisture (%)                             Speed (m/s)
                                                                 (mm)balance during the dry and rainy seasons.
                               Table 1. Climatic conditions and water
                                                                                                   PET       SWS       EXC     WD
                      Monthly          Monthly             Monthly
Dry (Aug/2020)        18.3*
                       Mean                59.3*
                                         Mean                     17.6*
                                                        Accumulated                  2.0*
                                                                             Mean Wind             53.8*      0.0*     0.0*    94.1*
        Season                                                                                          Water Balance
Rainy (Jan/2021)      23.0*
                    Temperature            70.9*
                                       Relative                  270.6*
                                                         Precipitation               1.7*
                                                                             Speed (m/s)          110.0*     39.9*    212.9*    0.0*
                                (◦ C)         Moisture (%)            (mm)
                                        PET—potential evapotranspiration, SWS—soil water storage, EXC—excess water and WD—water
                                                                                                   PET       SWS          EXC       WD
   Dry (Aug/2020)               18.3 * deficit. * Source:
                                                  59.3 * INMET (2020,17.6
                                                                      2021);
                                                                          * Foundation PROCAFE
                                                                                        2.0 *  (2020,
                                                                                                  53.82021).
                                                                                                       *     0.0 *        0.0 *    94.1 *
   Rainy (Jan/2021)             23.0 *            70.9 *            270.6 *             1.7 *    110.0 *     39.9 *      212.9 *    0.0 *
                                        Table 2. Altitude
                                        PET—potential     and soil properties.
                                                       evapotranspiration, SWS—soil water storage, EXC—excess water and WD—water deficit.
                                        * Source: INMET (2020, 2021); Foundation PROCAFE (2020, 2021).
                                        Parameter                                                 Value
                                        Altitude    range (m)
                                        Table 2. Altitude   and soil properties.                  917–935
                                        Elevation variation (m)                                   18
                                          Parameter                                                             Value
                                        Soil texture                                              clayey
                                          Altitude range (m)                                                    917–935
                                        Clay (%)                                                  36–38
                                          Elevation variation (m)                                               18
                                        Silt
                                          Soil(%)texture                                          32–33         clayey
                                        Sand
                                          Clay(%) (%)                                             29–32         36–38
                                          Silt  (%)
                                        Organic matter (%)                                        2.08–3.38     32–33
                                          Sand (%)                                                              29–32
                                        PhOrganic
                                             (KCl) matter (%)                                     6.23–8.11     2.08–3.38
                                        Cation
                                          Ph (KCl)exchange capacity (cmol/dm3)                    6.0           6.23–8.11
                                        Base   saturation
                                          Cation           (%) capacity (cmol/dm3 )
                                                    exchange                                      69.56–74.16   6.0
                                          Base saturation (%)                                                   69.56–74.16
                                            Figure 4 illustrates soil water storage levels, highlighting different absorption and
                                        waterFigure
                                              deficit4 zones  for plants.
                                                      illustrates soil water storage levels, highlighting different absorption and
                                        water deficit zones for plants.
                                        Figure 4. Soil water storage from water balance. Source: adapted from FUNDAÇÃO PROCAFÉ
                                        (2020, 2021). Own translation.
AgriEngineering 2025, 7, 110                                                                                            6 of 22
                                                                                           dry soil
                                                                      SD    g    =                                         (2)
                                                                           cm3         volumetric ring
                                    The volumetric moisture (VM) of the soil is defined as the volume of water contained
                               in a given volume of soil sample. It can also be related to gravimetric moisture. According
                               to [32], a mathematical equation (Equation (3)) is applied to convert soil moisture from
                               a mass-based to a volume-based measurement. The product of the multiplication of the
                               gravimetric moisture values by the soil density, divided by water density, gives rise to
                               moisture based on volume, expressed in m3 of water/m3 of soil, cm3 /cm3 , or mm3 /mm3 .
                                                                                           GM × SD
                                                                        Vm cm3 =                                           (3)
                                                                                 cm3        WD
                               where GM is the gravimetric moisture (g/g), SD is the soil density (g/cm3 ), and WD is the
                               water density (g/cm3 ).
                                                                                 Ni =(h)
                                                                        1
                                                           γ̂(h) =
                                                                     2 N (h)       ∑       [ Z ( xi ) − Z ( xi + h)]2      (4)
                                                                                   i =1
AgriEngineering 2025, 7, 110                                                                                          7 of 22
                               where N (h) is the number of experimental pairs of observations Z(xi ) and Z (xi + h)
                               separated by a distance h. The semivariogram is represented by the graph as a function of h.
                               By fitting a mathematical model to the calculated values, the coefficients of the theoretical
                               semivariogram model were estimated. These coefficients include the nugget effect (C0), sill
                               (C0 + C), and range (a), as described by [36].
                                    In this study, the ordinary least squares (OLS) method was applied alongside spherical,
                               exponential, and Gaussian models. The selection of the most suitable model was based on
                               the leave-one-out cross-validation (LOO-CV) method, using the lowest mean error (ME) as
                               the criterion. To minimize model bias, the mean error should be as close to zero as possible.
                                    To ensure that the models met cross-validation requirements, the mean error (ME) was
                               calculated following [37], and should be as close to zero as possible. With the adjustment
                               of semivariograms, after detection of the spatial variability, the data were interpolated by
                               ordinary kriging.
                                    The degree of spatial dependence (DSD) of the variables was calculated according to
                               the classification proposed by [38]. This classification indicated strong spatial dependence
                               when the semivariogram’s nugget effect was equal to or less than 25% of the threshold,
                               moderate spatial dependence when it was between 25% and 75%, and weak spatial de-
                               pendence when it exceeded 75%. Geostatistical analysis was performed using the freely
                               distributed RStudio software version 1.3 [34] and the geoR package [39], while the isoline
                               map was created in QGis software version 3.4.8.
                                      After completing the flights for each sampling period, the images were processed
                                 in Pix4D software 4.5.2 version, generating 5 orthomosaics, 1 being RGB and 4 for the
                                 multispectral bands (RED, NIR, RED EDGE, and GREEN).
Table 3. Vegetation indices of images obtained by the multispectral sensor coupled to RPA.
                                        As a result, for each vegetation index calculated, 30 average values were obtained,
                                   corresponding to the 30 georeferenced sampled plants. This procedure guaranteed that the
                                   values utilized in the correlation analysis accurately reflected the actual canopy conditions
                                   of each plant, minimizing the influence of external variations.
                                        The average values of each vegetation index, along with the gravimetric and volu-
                                   metric moisture values, were exported to a table for calculating the Pearson correlation
                                   coefficient (R), as expressed in Equation (5). The R value consistently ranged from −1 to
                                   1. The interpretation of the coefficient (R) followed the criteria established in the study
                                   by [50].
                                                                       n∑in=1 xi yi −∑in=1 xi ∑in=1 yi
                                                       R= p n                                                                 (5)
                                                              n∑i=1 xi 2 − (∑in=1 xi )2 n∑in=1 yi 2(∑in=1 yi )2
                                                                                        p
                                   3. Results
                                   3.1. Statistical Evaluation
                                   3.1.1. Statistical Summary
                                         Table 4 compares the gravimetric moisture (Gm) and volumetric moisture (Vm) of the
                                   soil at different depths (0–10 cm and 10–20 cm) during the dry and rainy seasons.
                                   Table 4. Gravimetric moisture (Gm) and volumetric moisture (Vm) in dry season (Dry) and rainy
                                   season (Rainy).
                                        The results indicate that the moisture content for both Gm and Vm was significantly
                                   higher during the rainy season compared with the dry season. Soil moisture tended to be
                                   slightly lower at a depth of 10–20 cm, where the average values were 15.36% for volumetric
                                   moisture and 18.48% for gravimetric moisture, compared with the 0–10 cm layer, which
                                   presented 18.92% and 12.50%, respectively. This difference was more evident during the
                                   dry season. The variability of volumetric moisture (Vm) and gravimetric moisture (Gm)
                                   was considered low (<12%) under all conditions, except for Vm during the rainy season,
                                   which was classified as moderate.
                                        The monthly accumulated precipitation data indicate a significant difference between
                                   the analyzed periods. During the dry season in August 2020, precipitation was only
                                   17.6 mm, whereas in the rainy season of January 2021, it reached 270.6 mm. Consequently,
                                   soil water availability was impacted, reflecting in the gravimetric Gm and volumetric Vm
                                   moisture values. The water balance also illustrates this difference, with a water deficit of
                                   94.1 mm in the dry season, while, in the rainy season, there was a surplus of 212.9 mm,
                                   indicating a greater availability of water in the soil for plant absorption.
                                        The study area’s altitude ranged from 917 to 935 m, with an altimetric difference of
                                   18 m. The soil texture was classified as clayey 36 to 38 percent clay, 32 to 33 percent silt,
                                   and 29 to 32 percent sand, which provides a high-water retention capacity. Clayey soils,
                                   such as those observed in this area, tend to retain more water, especially during rainy
                                   seasons, reducing surface runoff and increasing moisture storage. However, this same
AgriEngineering 2025, 7, 110                                                                                                              10 of 22
                                 characteristic can lead to slower drainage, and under excess water conditions, it may hinder
                                 water absorption by plants due to low porosity.
                                       Based on soil water storage through the water balance shown in Figure 4, it can be
                                 stated that, during the dry season, volumetric moisture was closer to water deficit zones,
                                 making absorption by plants more difficult. In the rainy season, the higher moisture
                                 values remained close to or above the maximum storage capacity, ensuring greater water
                                 availability for the roots.
                                       The results corroborate the statements of [51], who highlighted the influence of climatic
                                 factors, especially precipitation and temperature, on the phenological phases of coffee
                                 plants. The variation in soil moisture throughout the year can directly impact coffee
                                 productivity and quality, as periods of water deficiency may compromise vegetative growth
                                 and fruiting.
                                       Additionally, the analyzed data align with the observations of [52], who emphasized
                                 the need for adequate moisture between October and May to ensure fruit growth and
                                 filling, while a dry season after May favors uniform grain ripening and flowering induction.
                                 The water balance evidenced in this study reinforces this necessity, demonstrating that
                                 water deficiency during the dry season can hinder crop development, while the greater
                                 availability of water in the rainy season is essential for the coffee plant’s productive cycle.
                                 Table 5. Parameters used in modeling the geostatistical semivariogram of gravimetric moisture (Gm)
                                 and volumetric moisture (Vm) during the dry season (Dry) and the rainy season (Rainy).
                                       Geostatistical analysis of soil moisture, both gravimetric (Gm) and volumetric (Vm),
                                 was conducted using spherical (Sph) and exponential (Exp) models for different depths
                                 (0–10 cm and 10–20 cm) and seasons (dry and rainy).
                                       The results revealed that all variables exhibited strong spatial dependence (SSD),
                                 indicating that soil moisture follows a defined spatial pattern. The range varied from 45 to
                                 20 m in the rainy season and from 70 to 35 m in the dry season.
                                       The mean error (ME) was low for all variables, confirming the accuracy of the geostatis-
                                 tical models applied. Variations in the semivariogram parameters were observed between
                                 the dry and rainy seasons, reflecting changes in the spatial structure of soil moisture
                                 throughout the year.
                                       Analysis of the four semivariograms (Figures 5 and 6) provided an overview of the
                                 spatial dependence of soil moisture (gravimetric and volumetric) at both depths (0–10 cm
                                 and 10–20 cm) during the dry season.
                                 tween
                               tween  thethe dry
                                           dry andand   rainy
                                                     rainy      seasons,
                                                             seasons,    reflecting
                                                                       reflecting    changes
                                                                                 changes  in in
                                                                                             thethe spatial
                                                                                                 spatial     structure
                                                                                                          structure of of soil
                                                                                                                       soil    moisture
                                                                                                                            moisture
                                 throughout
                               throughout    thethe year.
                                                  year.
                                       Analysis
                                    Analysis   of of
                                                   thethe  four
                                                        four      semivariograms
                                                               semivariograms      (Figures
                                                                                 (Figures    5 and
                                                                                          5 and   6) 6) provided
                                                                                                     provided    anan overview
                                                                                                                    overview    of of
                                                                                                                                   thethe
AgriEngineering 2025, 7, 110   spatial dependence of soil moisture (gravimetric and volumetric) at both depths (0–10 cmcm 11 of 22
                                 spatial  dependence      of  soil moisture  (gravimetric and  volumetric)    at both depths   (0–10
                                 and
                               and    10–20
                                   10–20   cm)cm)  during
                                                 during   thethedrydry season.
                                                                     season.
                                (a)(a)                                                            (b)(b)
                                  Figure
                               Figure
                               Figure  5.  5.Semivariograms
                                              Semivariograms
                                       5.Semivariograms        fitted
                                                            fitted  byby
                                                                fitted   the
                                                                       the
                                                                        by    spherical
                                                                           spherical
                                                                            the         and
                                                                                      and
                                                                                spherical     exponential
                                                                                           exponential
                                                                                             and          models
                                                                                                       models
                                                                                                  exponential forfor
                                                                                                                  thethe
                                                                                                               models    variables
                                                                                                                      variables     (a) Gm
                                                                                                                                         0– 0– (a) Gm
                                                                                                                         for the(a)variables
                                                                                                                                     Gm
                               10 10
                               0–10  cm
                                  cmcmand and
                                          and(b)(b)
                                                 Gm
                                                 (b)Gm 10–20
                                                     10–20
                                                     Gm    cmcm
                                                         10–20    collected
                                                              collected
                                                                cm           during
                                                                          during
                                                                     collected    thethe
                                                                                during drydry season.
                                                                                           season.
                                                                                          the  dry season.
                                (a)(a)                                                                (b)(b)
                                 Figure   6. Semivariograms   fitted
                                                                  byby
                               Figure
                               Figure 6.
                                      6.Semivariograms
                                           Semivariograms  fitted
                                                              fitted  bythe
                                                                     the     spherical
                                                                          spherical
                                                                           the      andand
                                                                               spherical    exponential
                                                                                         exponential
                                                                                           and          models
                                                                                                      models
                                                                                                exponential  forfor
                                                                                                                 thethe
                                                                                                              models    variables
                                                                                                                     variables
                                                                                                                        for the(c)(c)
                                                                                                                                   Vm Vm
                                                                                                                                variables (a) Vm
                                 0–10
                               0–10 cmcm    and (d) Vm  10–20 cm   collected  during the  dry season.
                               0–10 cm and
                                         and(d)(b)Vm
                                                   Vm10–20 cmcm
                                                       10–20   collected   during
                                                                   collected       the dry
                                                                               during   theseason.
                                                                                            dry season.
                                        All four
                                      All         graphs   indicate  spatial   dependence,    with   semivariance    increasing  with   dis-
                                      All four
                                           fourgraphs
                                                 graphsindicate
                                                          indicatespatial   dependence,
                                                                      spatial    dependence,with  semivariance    increasing
                                                                                                  with semivariance            with
                                                                                                                           increasingdis-with dis-
                                   tance  (20–40  m) until  reaching
                                tance (20–40 m) until reaching a sill. a sill.
                               tance (20–40 m) until reaching a sill.
                                        Figures
                                      Figures     7a–d
                                               7a–d    and
                                                     and      8a–d
                                                           8a–d     represent
                                                                 represent       kriging
                                                                               kriging    maps
                                                                                        maps   of of  soil
                                                                                                   soil    gravimetric
                                                                                                        gravimetric      moisture
                                                                                                                      moisture   in in per-
                                                                                                                                     per-
                                      Figures
                                   centage  (%)
                                                7a–d  and    8a–d  represent     kriging   maps    of  soil gravimetric     moisture   in  percent-
                                centage   (%) at at depths
                                                 depths of of  0–10
                                                             0–10 cmcm andand   10–20
                                                                             10–20  cmcm   during
                                                                                        during   thethe  dry
                                                                                                       dry andand  rainy
                                                                                                                rainy     seasons,
                                                                                                                       seasons,    respec-
                                                                                                                                respec-
                               age   (%)These
                                   tively.
                                tively.
                                          at depths
                                           These  maps
                                               maps
                                                      ofwere
                                                         0–10
                                                      were
                                                                cm andto10–20
                                                               generated
                                                             generated       to     cm during
                                                                                visualize
                                                                              visualize thethe
                                                                                                  thedistribution
                                                                                               spatial
                                                                                             spatial
                                                                                                        dry  and rainy
                                                                                                         distribution
                                                                                                                    of of
                                                                                                                          seasons,
                                                                                                                          soil
                                                                                                                       soil
                                                                                                                                     respectively.
                                                                                                                               moisture
                                                                                                                            moisture   in in
                                thethe
                               These   study
                                        maps
                                     study    area.
                                                were
                                            area.      generated      to  visualize    the  spatial    distribution    of  soil moisture     in the
                               study area.
                                    The values in Figures 7 and 8 exhibit high variability. This variation highlights
                               how relying solely on the means of field observations can lead to management errors, as
                               discussed in studies by [51,52]. These findings underscore the significance of precision
                               agriculture (PA) in coffee production management and highlight the relevance of statistical
                               tools that incorporate spatial relationships.
                                    In Figure 8c, Vm 10–20 cm (dry season) presents a relatively homogeneous spatial
                               distribution of soil moisture in the study area. A slight variation is observed, with some
                               areas appearing wetter (18% to 23%) and others drier (27%). The color gradient indicates
                               that cooler colors (green shades) represent areas with lower moisture, while warmer colors
                               (yellow shades) indicate areas with higher moisture.
                                    In Figure 8d, Vm 10–20 cm (rainy season), the map indicates greater variability in soil
                               moisture compared with the dry season. High-moisture areas are depicted in warm colors,
                               whereas low-moisture areas appear in cool colors. A more distinct moisture distribution
                               pattern is evident, with high-moisture zones concentrated in specific regions of the map.
                               This suggests that rainfall may have contributed to a heterogeneous distribution of moisture
                               across the study area.
AgriEngineering 2025, 7, x FOR PEER REVIEW                                                                               12 of 23
AgriEngineering 2025, 7, 110                                                                                              12 of 22
                                 Figure 7. Kriging map for the variables (a) Gm 0–10 cm, (b) Gm 0–10 cm, (c) Gm 10–20 cm, and (d)
                                 Gm  10–20
                                 Figure    cm in themap
                                        7. Kriging   dry for
                                                         andthe
                                                             rainy seasons,
                                                                variables  (a)respectively.
                                                                               Gm 0–10 cm, (b) Gm 0–10 cm, (c) Gm 10–20 cm, and
                                 (d) Gm 10–20 cm in the dry and rainy seasons, respectively.
                                 Figure 7. Kriging map for the variables (a) Gm 0–10 cm, (b) Gm 0–10 cm, (c) Gm 10–20 cm, and (d)
                                 Gm 10–20 cm in the dry and rainy seasons, respectively.
                                 Figure 8. Cont.
AgriEngineering 2025, 7, x FOR PEER REVIEW                                                                                                   13 of 23
AgriEngineering 2025, 7, 110                                                                                                                 13 of 22
                                     Figure 8. Kriging map for the variables (a) Vm 0–10 cm, (b) Vm 0–10 cm, (c) Vm 10–20 cm, and
                                      Figure
                                     (d)     8. Kriging
                                         Vm 10–20  cm inmap
                                                         the for
                                                             drythe
                                                                 andvariables (a) Vmrespectively.
                                                                     rainy seasons,  0–10 cm, (b) Vm 0–10 cm, (c) Vm 10–20 cm, and (d)
                                      Vm 10–20 cm in the dry and rainy seasons, respectively.
                                     3.2. Statistical Correlation Between Vegetation Indices and Soil Moisture
                                         Theassess
                                        To     values thein potential
                                                            Figures 7 of  and    8 exhibit high images
                                                                             high-resolution      variability.    This variation
                                                                                                            for detecting          highlights
                                                                                                                              the water    statushowof
                                   relying
                                   coffee     solely
                                           trees,     on the means
                                                  correlation            of field
                                                                   analysis          observations
                                                                               was conducted         can lead
                                                                                                  between        to management
                                                                                                             field-collected          errors, asdata
                                                                                                                                soil moisture     dis-
                                   cussed
                                   and       in studies
                                        vegetation         by [54,55].
                                                       indices    (TableThese
                                                                           3).     findings underscore the significance of precision agri-
                                   culture
                                        Table (PA)  in coffee
                                                6 presents     theproduction       management
                                                                    R values (Pearson              and coefficients)
                                                                                           correlation  highlight the   forrelevance
                                                                                                                            the studied of variables,
                                                                                                                                           statistical
                                   tools that
                                   spectral     incorporate
                                             bands,              spatial relationships.
                                                      and vegetation       indices. An F-test was performed to evaluate the significance
                                   of theIncorrelations
                                             Figure 8c, at  Vm the10–20    cm (dry
                                                                    0.05 (5%)         season) level.
                                                                                  significance   presents a relatively homogeneous spatial
                                   distribution of soil moisture in the study area. A slight variation is observed, with some
                                  Table 6. Correlation analysis between vegetation indices and soil gravimetric moisture (Gm) and
                                   areas appearing wetter (18% to 23%) and others drier (27%). The color gradient indicates
                                   volumetric moisture (Vm) in dry season (Dry) and rainy season (Rainy).
                                   that cooler colors (green shades) represent areas with lower moisture, while warmer col-
                                   ors (yellow shades)
                         Gm (0–10 cm)                         indicate
                                                        Gm (10–20      cm)areas with higher Vm moisture.
                                                                                                 (0–10 cm)                   Vm (10–20 cm)
     Index
                       Dry          RainyIn Figure Dry8d, Vm 10–20       cm (rainy season),
                                                                       Rainy              Dry the map      indicates greater
                                                                                                        Rainy              Dry variabilityRainyin soil
    RED             0.3005 ns      moisture compared
                                  0.2767 ns        0.1235 with 0.2781
                                                           ns         the dry season.
                                                                              ns           High-moisture
                                                                                       0.4637 *        0.4163areas
                                                                                                                *    are   depicted in 0.4368
                                                                                                                        0.2668  ns        warm*col-
    NIR             0.1991 ns     0.0185 ns        0.0938 ns         0.0110 ns         0.2213 ns       0.1155 ns        0.2210 ns        0.1020 ns
 RED EDGE           0.1782 ns      ors,
                                  0.0878
                                        whereas
                                         ns         low-moisture
                                                   0.0355  ns           areas
                                                                     0.1732   nsappear   in cool
                                                                                       0.2608 ns  colors.  A
                                                                                                       0.0506
                                                                                                              more
                                                                                                               ns    distinct
                                                                                                                        0.2289
                                                                                                                                moisture
                                                                                                                                ns          distribu-
                                                                                                                                         0.0197 ns
  GREEN             0.2840 ns      tion pattern 0.1093
                                  0.0618 ns        is evident, with
                                                           ns        0.3141high-moisture
                                                                              ns       0.5157zones
                                                                                              *       concentrated
                                                                                                       0.1692  ns      in  specific regions
                                                                                                                        0.3601  ns       0.2597of
                                                                                                                                                ns the
   NDVI             0.1328 ns     0.1791 ns        0.0463 ns         0.1604 ns         0.2421 ns       0.3275 ns        0.0871 ns        0.3329 ns
   NDWI             0.0129 ns
                                   map. This suggests
                                  0.0841 ns        0.0299 ns
                                                              that rainfall
                                                                     0.2558 ns
                                                                               may have     contributed
                                                                                       0.1079 ns
                                                                                                           to a heterogeneous
                                                                                                       0.2815 ns        0.0011 ns
                                                                                                                                     distribution
                                                                                                                                         0.3418 ns
                                                                                                                                                    of
    EVI2            0.0627 ns      moisture across
                                  0.0584 ns             the study0.0330
                                                   0.0375  ns          area.  ns       0.0177 ns       0.1738  ns       0.0950  ns       0.1652 ns
   NDRE             0.1202 ns       0.0853 ns       0.1854 ns      0.2312 ns       0.0156 ns      0.1809 ns       0.0786 ns      0.2458 ns
    CVI             0.4363 *        0.0277 ns       0.2487 ns      0.2798 ns       0.3791 *       0.1283 ns       0.2602 ns      0.2195 ns
  GNDVI             0.0129 ns        3.2. Statistical
                                    0.0841 ns         Correlation
                                                    0.0299 ns      Between
                                                                   0.2558 nsVegetation
                                                                                   0.1079Indices
                                                                                          ns     and SoilnsMoisture
                                                                                                  0.2815          0.0011 ns      0.3418 ns
   CCCI             0.0431 ns       0.0277 ns       0.1035 ns      0.0325 ns       0.0881 ns      0.1454 ns       0.0302 ns      0.2664 ns
    GVI             0.0409 ns       0.1141 To
                                           ns assess   thenspotential
                                                    0.0287              of ns
                                                                   0.2642  high-resolution
                                                                                   0.0833 ns images    forns detecting
                                                                                                  0.3033          0.0129the
                                                                                                                         ns water   status
                                                                                                                                 0.3587  ns of
    MSR             0.1328 ns        coffee trees, 0.0463
                                    0.1791 ns
                                                    correlation analysis
                                                           ns      0.1604 was conducted
                                                                           ns      0.2421 ns
                                                                                              between
                                                                                                  0.3275field-collected
                                                                                                          ns      0.0871 soil moisture
                                                                                                                         ns      0.3329 nsdata
    IPVI            0.1328 ns       0.1791 ns       0.0463 ns      0.1604 ns       0.2421 ns      0.3275 ns       0.0871 ns      0.3329 ns
    SAVI            0.0827 ns        and
                                    0.0655vegetation
                                           ns           indices
                                                    0.0480 ns    (Table
                                                                   0.04113).
                                                                           ns      0.0457 ns      0.1848  ns      0.1171 ns      0.1774  ns
  MSAVI             0.0158 ns       0.0542 Table
                                           ns
                                                  6 presents
                                                    0.0200 ns
                                                               the R  values
                                                                   0.0301  ns
                                                                              (Pearson
                                                                                   0.0490correlation
                                                                                          ns
                                                                                                      coefficients)
                                                                                                  0.1696  ns
                                                                                                                     for
                                                                                                                  0.0536  the
                                                                                                                         ns
                                                                                                                              studied
                                                                                                                                 0.1613varia-
                                                                                                                                         ns
   OSAVI            0.0076 ns       0.1002 ns       0.0098 ns      0.0778 ns       0.0799 ns      0.2321 ns       0.0331 ns      0.2287 ns
  CIgreen           0.0409 ns        bles, ns
                                    0.1141 spectral0.0287
                                                      bands,
                                                           ns and vegetation
                                                                   0.2642 ns    indices.
                                                                                   0.0833 An
                                                                                          ns F-test  wasnsperformed
                                                                                                  0.3033          0.0129to
                                                                                                                         ns evaluate  thenssig-
                                                                                                                                 0.3587
 CIrededge          0.1360 ns        nificance of the
                                    0.0876 ns
                                                        correlations
                                                    0.1941 ns
                                                                       at the 0.05 0.0005
                                                                   0.2377  ns
                                                                                   (5%) significance
                                                                                          ns      0.1751level.
                                                                                                          ns      0.0908 ns      0.2424 ns
                                     ns—not significant, * = significant at 5%.
                                     Table 6. Correlation analysis between vegetation indices and soil gravimetric moisture (Gm) and
                                     volumetric
                                         The REDmoisture (Vm)
                                                   spectral   in dry
                                                            band     season
                                                                  (dry  and(Dry)
                                                                            rainyand rainy season
                                                                                  seasons)        (Rainy).
                                                                                            and the GREEN spectral band (rainy
                                     season), along with the chlorophyll vegetation index (CVI) (dry and rainy seasons), exhib-
                               Gm (0–10 cm)                 Gm (10–20 cm)               Vm (0–10 cm)               Vm (10–20 cm)
         Index                       ited significant correlations at the 5% significance level, according to Pearson’s correlation
                             Dry           Rainy          Dry          Rainy          Dry         Rainy          Dry          Rainy
        RED                0.3005 ns
                                     analysis  (Figures0.1235
                                          0.2767 ns
                                                         9–11).nsThe CVI  exhibited0.4637
                                                                     0.2781 ns
                                                                                      the strongest
                                                                                           *
                                                                                                    statistically
                                                                                                 0.4163 *
                                                                                                                  significant0.4368
                                                                                                               0.2668 ns
                                                                                                                              positive
                                                                                                                                    *
        NIR                0.1991 ns correlation
                                          0.0185  with
                                                 ns    Gm   (0–10
                                                        0.0938 ns cm)  (r =
                                                                     0.0110 0.4363).
                                                                             ns    0.2213  ns   0.1155  ns     0.2210 ns    0.1020 ns
      RED EDGE             0.1782 ns      0.0878 ns     0.0355 ns    0.1732 ns     0.2608 ns    0.0506 ns      0.2289 ns    0.0197 ns
       GREEN               0.2840 ns      0.0618 ns     0.1093 ns    0.3141  ns     0.5157 *    0.1692  ns     0.3601 ns    0.2597 ns
                                       tion with Vm (10–20 cm) (r = 0.4368).
                                            Figures 9–11 illustrate the spectral analysis across different seasons. Figure 9 depicts
                                       the RED band for the dry season (a) and the rainy season (b), Figure 10 represents the
          AgriEngineering 2025, 7, 110 GREEN band for both seasons, and Figure 11 illustrates the CVI vegetation index for the              14 of 22
                                       dry season (a) and the rainy season (b).
Figure 9. RED spectral bands for the dry season (a) and rainy season (b).
                                 Figure 10. GREEN spectral band for the dry season (a) and rainy season (b).
                                            Figure 10. GREEN spectral band for the dry season (a) and rainy season (b).
                                  Figure 10. GREEN spectral band for the dry season (a) and rainy season (b).
                                            Figure 11. CVI vegetation index for the dry season (a) and rainy season (b).
                                 Figure 11. CVI vegetation index for the dry season (a) and rainy season (b).
                                  Figure
                                      The11.RED
                                             CVI band
                                                 vegetation index values
                                                       exhibited  for the dry seasonfrom
                                                                          ranging    (a) and rainy
                                                                                          0.01     season
                                                                                                to 0.33,  (b). no noticeable visual
                                                                                                         with
                                 differences between the two periods (Table 1). The GREEN spectral band ranged from
                                       The RED band exhibited values ranging from 0.01 to 0.33, with no noticeable visual
                                 0.01 to 0.24, with predominant values between 0.01 and 0.08 during the dry season and
AgriEngineering 2025, 7, 110                                                                                          15 of 22
                                     The GREEN index exhibited the strongest significant positive correlation with Vm
                               (0–10 cm) (r = 0.5157). The RED index exhibited the strongest significant positive correlation
                               with Vm (10–20 cm) (r = 0.4368).
                                     Figures 9–11 illustrate the spectral analysis across different seasons. Figure 9 depicts
                               the RED band for the dry season (a) and the rainy season (b), Figure 10 represents the
                               GREEN band for both seasons, and Figure 11 illustrates the CVI vegetation index for the
                               dry season (a) and the rainy season (b).
                                     The RED band exhibited values ranging from 0.01 to 0.33, with no noticeable visual
                               differences between the two periods (Table 1). The GREEN spectral band ranged from 0.01
                               to 0.24, with predominant values between 0.01 and 0.08 during the dry season and between
                               0.08 and 0.16 during the rainy season. The CVI vegetation index displayed distinct visual
                               differences between the two periods, ranging from 5.76 to 8.17 in the dry season and from
                               0.94 to 3.35 in the rainy season.
                               4. Discussion
                               4.1. Descriptive Statistics
                                    During the dry season, the variables Gm (10–20 cm) and Vm (0–10 cm and 10–20 cm)
                               exhibited CV values below 10%. The CV value for Gm at 0–10 cm was 11%, indicating
                               moderate variability. In the rainy season, only Vm (0–10 cm) exhibited low heterogeneity
                               (CV < 10%), while the other variables presented moderate heterogeneity (10% < CV < 20%).
                                    The lowest gravimetric and volumetric moisture values during the dry season were
                               recorded at depths of 10–20 cm, at 11.75% and 18.48%, respectively. A similar pattern was
                               observed during the rainy season, with the lowest gravimetric and volumetric moisture
                               values recorded at depths of 10–20 cm (15.36% and 22.79%). The highest moisture values
                               for both the dry and rainy seasons were recorded at depths of 0–10 cm for both gravimetric
                               and volumetric measurements.
                                    The gravimetric moisture levels observed in coffee cultivation soils in this study were
                               consistent with those reported by [53], who recorded a mean value of 17.82%, and [54],
                               who reported values of 18.20% at a depth of 0–20 cm and 20.00% at 20–40 cm. Another
                               similarity between this study and [54] is that the gravimetric moisture values did not vary
                               significantly with sampling depth.
                                    The mean gravimetric moisture values recorded were 17.67% for samples collected at a
                               depth of 0–10 cm and 17.93% for samples collected at a depth of 10–20 cm in the dry season.
                               In the rainy season, the values were 23.06% and 23.23% for samples collected at depths of
                               0–10 cm and 10–20 cm, respectively. The mean volumetric moisture values recorded were
                               24.83% and 25.26% at depths of 0–10 cm and 10–20 cm, respectively, during the dry season.
                               For the rainy season, the values were 35.02% for the 0–10 cm sampling depth and 33.87%
                               for the 0–20 cm depth.
                                    Ref. [55] assessed soil volumetric moisture at three depths (0–5 cm, 5–10 cm, and
                               10–20 cm), reporting values of 45.00%, 41.00%, and 38.00%, respectively. The volumetric
                               moisture at a depth of 0–10 cm in this study (35.02%) closely matched the value reported
                               by [55], who recorded 38.00% at a depth of 10–20 cm. Another common finding was the
                               decline in volumetric moisture as sampling depth increased.
                                    Refs. [51,53] analyzed the physical attributes of a coffee plantation located in the
                               municipality of Três Pontas. Both studies determined gravimetric moisture values from
                               samples collected at six depth layers within a 0–60 cm soil profile. Ref. [51] reported an
                               average moisture content of 22.33%, while [53] reported an average moisture range of
                               20.57% to 24.58%. These authors examined five coffee strains of different heights. The
                               average soil moisture values reported by these authors closely resembled those observed in
AgriEngineering 2025, 7, 110                                                                                        16 of 22
                               this study. Although the sampling depth differed, the crop and the region studied remained
                               the same.
                                     Gravimetric and volumetric moisture levels increased during the dry season (August
                               2020) and the wet season (January 2021). One of the main factors influencing this condition
                               was rainfall during these periods. According to the precipitation data in Table 1, the last
                               recorded rainfall before data collection in August 2020 occurred 74 days earlier (20 mm on
                               31 May 2020, which was likely associated with a period of water scarcity for the crop. In
                               contrast, a total of 115 mm of rainfall was recorded seven days before the second collection
                               in January 2021 (Table 1), representing a precipitation volume six times greater than that
                               observed prior to data collection in the dry season.
                                     Analyzing the mean, maximum, minimum, and CV values presented in Table 5
                               revealed variations between measurements. However, simply knowing these values was
                               insufficient to fully express variable variability. Therefore, a geostatistical analysis was
                               necessary to evaluate the spatial distribution of the attributes assessed in this study. In
                               addition to the geostatistical assessment, thematic maps were generated to facilitate the
                               visual interpretation of the spatial distribution of attributes within the study area.
                                     The results corroborated the findings of [56], who highlighted the impact of climatic
                               factors, particularly precipitation and temperature, on the phenological stages of coffee
                               plants. Variations in soil moisture throughout the year can directly impact coffee produc-
                               tivity and quality, as periods of water deficiency may compromise vegetative growth and
                               fruit development.
                                     Furthermore, the analyzed data were consistent with the observations of [57], who
                               stressed the importance of adequate moisture between October and May to ensure fruit
                               growth and filling, while a dry season after May promotes uniform grain ripening and
                               flowering induction. The water balance observed in this study reinforced this requirement,
                               demonstrating that water deficiency during the dry season can hinder crop development,
                               whereas greater water availability in the rainy season is essential for the coffee plant’s
                               productive cycle.
                               observed. This pattern was attributed to the sampling times, which were conducted in two
                               distinct climatic seasons (dry and rainy).
                                     Studies by [42] indicate that CVI exhibits high sensitivity to leaf chlorophyll concen-
                               tration. Moreover, even in soils with significant reflectance variability due to moisture, CVI
                               maintains a stable linear relationship with chlorophyll concentration, particularly under
                               extreme conditions of completely dry or wet soil. This result highlights the robustness of
                               the index in adapting to soil moisture variations.
                                     The aforementioned authors emphasize in their studies the applications of RPA in
                               coffee farming, along with the evaluation of possible correlations between coffee tree
                               attributes and vegetation indices. However, to date, no studies have been identified that
                               assess the water conditions of coffee trees using high-resolution images while incorporating
                               soil moisture variability analysis.
                               5. Conclusions
                                     Gravimetric and volumetric moisture data collected at different depths and during
                               different periods (dry and rainy seasons) served as a basis for evaluating the spatial
                               variability of these attributes through geostatistical analysis. By adjusting semivariograms,
                               a mathematical function was fitted to express the spatial dependence structure of soil
                               moisture. Additionally, kriging interpolation enabled the estimation of this attribute’s
                               values in unsampled locations.
                                     Spatial variability in the studied variables was assessed by calculating the coefficient
                               of variation, which indicated strong spatial dependence for all evaluated variables. The
                               semivariograms were best fitted to the spherical and exponential models. The kriging maps
                               illustrate the spatial distribution of the studied variables, allowing the identification of
                               areas with higher and lower intensities for each variable.
                                     Conversely, vegetation indices revealed the extent to which a crop’s reflectance values
                               fluctuate between different periods (i.e., dry and rainy seasons). These methods allowed
                               the evaluation of multiple parameters, including plant health, chlorophyll content, and
                               leaf water content. Therefore, correlation and regression analyses were conducted to assess
                               whether soil moisture was correlated with vegetation indices. The results indicated that the
                               RED and GREEN spectral bands, along with the CVI index, were significantly correlated
                               with soil moisture.
                                     The application of geostatistical tools and vegetation indices derived from high-resolution
                               images proved to be effective in this study. However, future research could enhance the
                               efficiency of these tools for monitoring and detecting water variability in coffee plantations,
                               providing valuable support for producers in making informed management decisions.
                               Funding: This work was funded by the Consórcio Pesquisa Café (10.18.20.023.00.00 and 10.18.20.041.00.00),
                               the National Council for Scientific and Technological Development (CNPq) (project 310186/2023-4),
                               and the Minas Gerais Research Support Foundation (FAPEMIG) (project APQ-00661-22).
                               Data Availability Statement: All relevant data are included in the manuscript.
AgriEngineering 2025, 7, 110                                                                                                          20 of 22
                                   Acknowledgments: The authors would like to thank the Agricultural Research Corporation of Minas
                                   Gerais (EPAMIG), especially the Consórcio Pesquisa Café project, and also the Federal University of
                                   Lavras (UFLA), the Department of Agricultural Engineering (DEA), Conselho Nacional de Desen-
                                   volvimento Científico e Tecnológico (CNPq), Coordenação de Aperfeiçoamento de Pessoal de Nível
                                   Superior (CAPES), and Fundação de Amparo à Pesquisa do Estado de Minas Gerais (FAPEMIG), for
                                   funding the project and granting scholarships.
                                   Conflicts of Interest: The authors declare no conflicts of interest. The funders had no role in the design
                                   of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or
                                   in the decision to publish the results.
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