Spectral Analysis for Identifying Faults in Induction
Motors by Means of Sound
                                    Fernando Salazar-Villanueva, Oscar G. Ibarra-Manzano
                                                      Universidad de Guanajuato.
                                              Comunidad de Palo Blanco s/n, C.P. 36885
                                                   Salamanca, Guanajuato, Mexico
                                           f.salazarvillanueva@ugto.mx, ibarrao@ugto.mx
Abstract—Induction motors are critical components for most                  insulation breakdown. Typically, accelerometers are used to
industries. Induction motors failures may yield an unexpected               measure mechanical vibrations for the detection of mechanical
interruption at the industry plant. Several conventional vibration          faults, and current probes are used to monitor electrically
and current analysis techniques exist by which certain faults in            related problems before catastrophic failures in a component
rotating machinery can be identified. Ever since the first motor            occur. Almost 40%-50% of all failures are bearing related,
was built, plant personnel have listened to the noises emanating            around 5%-10% are rotor faults, and unbalance faults are
from machines; with enough experience, a listener may make a                within the 12% of others faults. Vibration and current analysis
fairly accurate estimate of the condition of a machine. Although            have long been used for the detection and identification of
there are several works that deal with vibration and current
                                                                            machine fault conditions. The specific characteristics of the
analysis for monitoring and detection of faults in induction
                                                                            vibration and current spectra that are associated with common
motors, the analysis of sound signals has not been sufficiently
explored as an alternative non-invasive monitoring technique.               fault conditions are well known.
The contribution of this investigation is the development of a                   Many different techniques have been proposed for the
condition monitoring strategy that can make reliable assessment             surveillance and diagnosis of the rotating machinery in
of the presence of a specific fault condition in an induction motor         literature, some of them are focused in vibration analysis; for
with a single fault present through the analysis of sound signal.           example, Babu and Sekhar [3] make the detection of two
The proposed methodology is based on the combination of                     cracks in a rotor-bearing system using amplitude deviation
Intrinsic Mode Functions (IMFs) and the Fast Fourier
                                                                            curve technique. Jun and Gadala [4] present the analysis of
Transform (FFT) methods. Results show that the proposed
methodology can be applied to sound signal analysis; there this
                                                                            dynamic behavior of a cracked rotor. Patel and Darpe [5]
detection technique is suited for detection of fault frequencies in         present a vibration signature analysis of a rotor with a rotor-
induction motors.                                                           stator rub, transverse fatigue crack and unbalance. Yan and
                                                                            Gao [6] present a filter construction technique for enhanced
   Keywords—induction motor; fault detection; sound; intrinsic              defect identification in rotary machine systems. Liu et al. [7]
mode function; spectral analysis.                                           present a diagnostic scheme for bearing fault diagnostics using
                                                                            neurofuzzy classifier.
                       I.    INTRODUCTION                                        Ever since the first motor was built, plant personnel have
    Induction motors are widely used, and they are considered               listened to the noises emanating from machines; with enough
critical components for electric utilities and process industries.          experience, a listener may make a fairly accurate estimate of
An induction motor failure may yield an unexpected                          the condition of a machine. At best, this is merely a qualitative
interruption at the industry plant, with consequences in costs,             analysis; at worst it may give an entirely wrong assessment.
product quality, and safety. These faults may be inherent to the            Meanwhile very few works deal with sound signals for the
machine itself or to operating conditions. The origins of                   diagnosis and identification of faults on induction motor
inherent faults are due to the mechanical or electrical forces              systems. Wu and Liao [9] present a neural network system for
acting on the machine. The greatest challenge in the area of                automotive air-conditioner blower fault diagnosis using noise
condition monitoring is the diagnosis of a fault before it                  emission signal. Tinta et al. [10] present a technique that
becomes critical, and an early detection of this allows the repair          provides a reliable estimate of fault diagnosis of vacuum
of the fault. In general, condition-monitoring schemes have                 cleaner motors. Wang et al. [11] present a numerical simulation
been widely used to sense specific failure modes in one of three            for predicting the sound power from an inverter-driven
main induction motor components: the stator, the rotor, and the             induction motor. The analysis of machine noise begins with an
bearings [1]. Traditionally, condition monitoring of induction              understanding of the possible causes of the noise. In an
machines has been divided into two areas: mechanical                        induction motor, these include: slot harmonics, supply
problems and electrical problems [2]. Mechanical problems                   harmonics, rotor unbalance, winding asymmetry and the
include bearing wear, rotor unbalance, and airgap distortion.               bearings. Some of these are inherent in the design of the
Electrical problems include broken rotor bars and winding                   machine and hence should remain constant over its lifetime
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(slot harmonics, winding asymmetry). Some develop over time,                     Where θ is the contact angle between the bearing surface,
and may lead ultimately to machine failure (bearing, unbalance,              Dc is the cage diameter of the bearing and is measured from a
broken rotor bars). Others are due to external circumstances                 ball center to the opposite ball center, Db is the ball diameter
(supply harmonics). All of these add to the sound emitted by a
machine, resulting in a very complex audio signal. This work                 and N B is the number of balls in the bearing.
investigates a method that may be used to measure and analyze
the sound of an induction machine, where the feasibility of                                  III.   THEORETICAL BACKGROUND
distinguishing between broken rotor bars, bearing and
unbalance defects are the objectives of this investigation.                  A. Low-Pass Filter
    The contribution of this investigation is the study for                     The sound signal is passed through a FIR filter with a
developing a condition monitoring strategy than can make a                   Kaiser window, as shown in Fig. 3. The filter has an order of
reliable assessment of the presence of a specific fault condition            128.
in an induction motor with a single fault present through the
analysis of sound signal. The sound signal analysis has shown                B. Intrinsic Mode Function
good results in the identification of bearing and unbalance                      Intrinsic mode function (IMF) is a kind of signal that meets
faults in an induction motor. The proposed method uses a                     the physical interpretation of a single component signal. Huang
spectral analysis based on the IMFs and FFT algorithm, which                 et al. [14] have defined Intrinsic Mode Functions (IMFs) as a
are applied to the sound signal produced by an induction motor               class of functions that satisfy two conditions:
for identification of the frequency-related fault. In this research,
two different faults in an induction motor such as bearing and                   •    In the whole data set, the number of extrema and the
unbalance are investigated in an experimental way. Results                            number of zero-crossings must be either equal or differ
show the potentiality of the methodology as a deterministic                           at most by one.
detection technique that is suited for the detection of bearing
and unbalance faults in induction motors.                                        •    At any point, the mean value of the envelope defined
                                                                                      by the local maxima, and the envelope defined by the
                                                                                      local minima is zero.
              II.    FAULT-RELATED COMPONENTS
                                                                               The next section explains the process to obtain IMFs called
   Two different induction motor faults are considered in the                Empirical Mode Decomposition.
paper: unbalance and bearing.
                                                                             C. Empirical Mode Decomposition
A. Unbalance
                                                                                To extract IMFs from the signal x ( t ) , a sifting process
    The number of poles determines the speed of an induction
motor, and the speed of the motor can be identified by a peak in             comprises the following steps:
the spectrum and then monitored at changes in amplitude. A                       Find the position and amplitudes of local maxima, and local
properly balanced and aligned motor has a frequency peak                     minima of x ( t ) . Then create an upper envelope by cubic spline
related to its speed that is barely visible. If a motor is out of
balance or misaligned, the signature of unbalance in a vibration             interpolation of the local maxima, and a lower envelope by
signal, normally has the form of an increased amplitude along                cubic spline interpolation of the local minima. Calculate the
the rotating frequency and its harmonics [12]. Vibration                     mean m1 ( t ) of the upper and lower envelopes. Subtracting the
analysis can provide a quick and relatively easy way to extract              envelope mean signal from the original input signal, we have
information that may relate the unbalance fault in an induction
motor.                                                                                                h1 ( t ) = x ( t ) − m1 ( t )               (2)
B. Bearings                                                                      Check whether h1 ( t ) meets the requirements to be an IMF.
     Mc Fadden and Smith [13] give a review of the causes and                If not, treat h1 ( t ) as new data and repeat the previous process.
expected frequencies of vibration due to rolling element                     Then set
bearings. From the geometry of the bearing, various theoretical
frequencies can be calculated such as the inner and outer race                                       h11 ( t ) = h1 ( t ) − m11 ( t )             (3)
element pass frequencies, cage rotational frequency and rolling
element spin frequency. A defect on the outer race will cause                    Repeat this sifting procedure k times until h1k ( t ) is an IMF,
an impulse each time a rolling elements contact the defect. The              this is designated as the first IMF.
rotor speed ( f r ) is the frequency at which the inner raceway
                                                                                                           c1 ( t ) = h1k ( t )                   (4)
rotates, that must be the frequency of the shaft. The theoretical
vibration frequency of the ball pass outer raceway frequency
                                                                                 Subtract c1 ( t ) from the input signal and define the
( f BPOF ) is easily determined as:
                                                                             remainder, r1 ( t ) , as the first residue. Since the residue, r1 ( t ) ,
                               N B ⎛ Db          ⎞                           still contains information related to longer period components,
                    f BPOF =      f r ⎜1 − cos θ ⎟              (1)          it is taken as a new data stream. Repeat the above described
                                2     ⎝ Dc       ⎠                           sifting process to find more IMFs until the stopping criteria are
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met. The sifting process is stopped when either of criteria are               between different surfaces of the motor components cause
met: 1) the component cn ( t ) , or the residue rn ( t ) , becomes so         mechanical noise. The vibration signal arises from unbalanced
small in magnitude as to be considered inconsequential, or 2)                 rotating parts, where these vibrations increase at higher
                                                                              rotational speeds or when a fault occurs in the induction motor.
the residue, rn ( t ) , becomes a monotonic function from which
                                                                              The vibrational waves propagate all over the housing, thus
an IMF cannot be extracted. Finally, the signal can be                        creating reverberant vibrational fields that radiate sound. A
represented as the sum of IMFs and a residue.                                 fault-free motor is significantly less noisy than a faulty motor,
                                 n                                            which increase substantially the intensity of mechanical noise
                      x ( t ) = ∑ c j ( t ) + rn ( t )           (5)          in the lower range of rotational speeds and reach much higher
                                j =1                                          values. It is expected to find frequencies and harmonics in the
                                                                              spectral analysis of sound signals related to the different
   Fig. 1 shows five IMFs obtained from the sound signal.                     vibration faults in an induction motor.
                                                                                                IV.    EXPERIMENTAL SETUP
                                                                                  Sound signal is captured in order to identify the dynamic
                                                                              characteristics of the induction motor; and, simultaneously,
                                                                              vibration signals are also acquired in order to verify the
                                                                              obtained results. Forty tests were made for sound on each
                                                                              condition in order to validate the propose methodology. Fig. 2
                                                                              shows the experimental setup where different three-phase
                                                                              induction motors (model WEG 00136APE48T, 740 Watts) are
                                                                              used to test the performance of the proposed methodology
                                                                              identifying the fault conditions treated in this work. The tested
                                                                              motors have 2 poles, 28 bars and receive a power supply of 220
                                                                              VAC at 60 Hz, and the applied mechanical load is that of an
                                                                              ordinary alternator. The audio signal is acquired using a
                                                                              condenser microphone JST model CX-509, which has a
                  Figure 1. IMFs of the sound signal.
                                                                              cardioids polarization pattern. The microphone was placed in a
                                                                              convenient position where the motor vibration did not have any
                                                                              influence in the microphone. However, for different
D. Fast Fourier Transform                                                     microphone positions; the obtained results show some degree
   Fourier analysis is very useful for many applications. To                  of variation. The audio signal is amplified utilizing a power
diagnose the fault, the frequency spectrum is obtained using the              amp Marshall model MG15CDR. A 12-bit 4-channel serial-
Fast Fourier Transform (FFT) that is performed on the signal                  output analog to digital converter (ADC) (ADS7841) is used
under analysis.                                                               for data acquisition of audio. The instrumentation system uses a
                                                                              sampling frequency of 4 kHz for obtaining samples of audio
    The FFT is an algorithm that can efficiently calculate the                during the induction motor steady state. Fig. 3 shows the
Discrete Fourier Transform (DFT). Let x0 ,..., xN −1 be the time              proposed multiple fault diagnosis system for induction motor
series. The DFT is defined by the formula.                                    monitoring utilizing audio signals.
                                N −1                    n
                                             − i 2π k
                     X (k ) = ∑ x (n) e                 N
                                                                 (6)
                                n =0
E. Sound Analysis
    Sound signals recorded in a noisy industrial environment by
using partial sound protection can still be utilized for feature
extraction. Namely, the anomalies in the spectrum of the sound
signals caused by the motor fault do not overlap with those
caused by environmental noise [15]. Li and Mechefske [16]
present the Wigner-Ville distribution technique applied for
identification of broken rotor bar and a combination of bearing
faults using current, vibration and acoustic methods. Various                            Figure 2. Test bench used during the experiment.
faults can be recognized from the sound signal in harmonics
related to the faults frequencies, for example, damages in                       Two different fault conditions are treated in this work:
bearing, unbalance and broken rotor bars. Tinta et al. [10] have
shown the study of a faulty motor, where the power-spectral-
                                                                              A. Bearing Fault
density (PSD) at certain characteristic frequencies strongly
increase. Vibration of solid structures and mechanical contact                    To carry out the faulty bearing test, the bearing is
                                                                              artificially damaged by drilling two holes with 1.191 mm of
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diameter on its outer race using a tungsten drill bit. Fig. 4a                    defect is found ( f BPOF = 177.7 Hz ) as is described in the section
shows the artificially damaged bearing 6203-2ZNR used in this
                                                                                  IV. The bearing fault is identified in the IMF 3, with the
work. The vibration characteristic defect frequency of the
                                                                                  presence of third-order harmonic of the ball pass outer raceway
rolling element bearing outer race is calculated by using
equation (1). The tested induction motor has a rotor frequency                    frequency ( f BPOF ) at 533 Hz in the spectrum obtained with
 f r = 57.75 Hz and a test bearing having eight balls of diameter                 IMF and FFT, as shown in Fig. 5.
6.5 mm and the cage diameter of the bearing of 28 mm with
contact angle θ = 0 , thus, the ball pass outer raceway
frequency defect ( f BPOF ) is found to be 177.7 Hz.
     Figure 3. Block diagram of the proposed fault diagnosis system
                         for induction motors.
B. Unbalance Fault
    The unbalance condition is present when the induction
motor mechanical load is not uniformly distributed, taking the
center of mass of the motor shaft. Fig 4b shows a pulley with
an added mass used for generating unbalance on the induction
motor. The signature of unbalance in a vibration signal
normally has the form of increased amplitude along the rotor
frequency, being located in this case at 57.75 Hz.
                                                                                     Figure 5. Analysis region of sound signal for (a) a healthy motor and
                                                                                                       (b) a motor with bearing fault.
                                                                                  B. Analysis of unbalance fault
                                                                                      The unbalance defect is verified with the increasing value
                                                                                  of the rotor frequency f r = 57.75 Hz in the vibration spectrum
                                                                                  as described in section IV. This fault is identified in the IMF 2,
  Figure 4. Artificially generated faults (a) Outer race damaged bearing,         with the presence of fourth-order harmonic located at 229 Hz in
                           (b) Unbalance pulley.
                                                                                  the spectrum obtained with IMF and FFT, as shown in Fig. 6.
                                                                                      Table 1 shows the detectability comparison in dB for the
                    V.      EXPERIMENT RESULTS                                    proposed methodology against the traditional FFT. The
   The proposed sound analysis has been applied to several                        detectability is calculated as the amplitude ratio (in dB)
cases in which a single fault (bearing defect and unbalance) is                   between the faulty over the healthy condition.
present in the induction motor. The analysis of sound signal is
implemented in the Matlab Digital Signal Processing Toolbox.
                                                                                    TABLE I.         DETECTABILITY IN DECIBELS FOR THE FAULT ANALYSIS
A. Analysis of bearing fault                                                                      Condition            FFT         IMF & FFT
    The detection of bearing defect is first identified in                                     Bearing defect            0               9
vibrations signal where the ball pass outer raceway frequency                                  Unbalance                 8              19
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