Isac Huawei
Isac Huawei
                                                       Virtual-X
                                                       Tactile
                                                       Inferencing
                                                       Sensing
                                                       Learning
Abstract
      6G will serve as a distributed neural network for the future Intelligence of Everything. Network Sensing and Native AI will
      become two new usage scenarios in the era of connected intelligence. 6G will integrate sensing with communication in a
      single system. Radio waves can be exploited to "see" the physical world and make a digital twin in the cyber world. This
      article introduces the concept of integrated sensing and communication (ISAC) and typical use cases, and provides two case
      studies of how to use 6G ISAC to improve localization accuracy and perform millimeter level imaging using future portable
      devices. The research challenges to implementing ISAC in practice are discussed.
Keywords
integrated sensing and communication (ISAC), localization, THz imaging, sensing accuracy, sensing resolution, prototype
In 6G mobile communication systems, the use of higher performance — for example, more accurate beamforming,
frequency bands (from mmWave up to THz), wider faster beam failure recovery, and less overhead when
bandwidth, and massive antenna arrays will enable high- tracking the channel state information (CSI) [2–3]. This is
accuracy and high-resolution sensing, which can help called "sensing-assisted communication". Moreover, sensing
implement the integration of wireless signal sensing and is a "new channel" that observes, samples, and links the
communication (ISAC) in a single system for their mutual physical and biological world to the cyber world. Real-time
benefit. On the one hand, the entire communications sensing is therefore essential to make the concept of the
network can serve as a sensor. The radio signals transmitted digital twin — a true and real-time replica of the physical
and received by network elements and the radio wave world — a reality in the future.
                                                                                                   • Crack detections in
                             • Drone as robotic waiter
     Public Service                                                                                  buildings, bridges and        • Gesture-based
                             • Hydrological monitoring        • Wireless SLAM
                                                                                                     man-made structures             appliances for enhanced
                               {e.g., precipitation, water • Drone base stations swarm
        Smart city                                                                                 • Fine particulate matter         accessibility for seniors
                               flow/level}                      SAR imaging
   Smart environment                                                                                 detection (PM10, PM2.5)         and differently abled people
                             • Crowd management and • In-car sensing for driver and
   Smart security and                                                                              • Explosive detection and gas   • Panic and terrifying emotion
                              emergency evacuation              passenger monitoring
      public safety                                                                                  sensing                         recognition
                              for major events
                                                                                                   • Security scans on packages
Next, we will discuss typical ISAC use cases and then and positioning, more details of which can be found in
      Technology progress makes augmented human sensing a           Spectrogram recognition is another interesting application
      reality. Augmented human sensing aims to provide a safe,      that could be supported by a 6G ISAC system. It can
      high-precision, low-power, sensing and imaging capability     identify targets through spectrogram sensing of their
      that exceeds human abilities, by means of a portable          electromagnetic or photonic characteristics. This includes
      terminal (e.g., 6G-enabled mobile phones, wearables, or       the analysis of absorption, reflectivity, and permittivity
      medical equipment implanted beneath human skin), to           parameters, which helps distinguish the type and quality
      sense the surrounding environments. With the help of          of materials. Pollution and product quality management
      scientific and technological advancement, augmented            are some of the prospective applications of this technology.
      human sensing can be achieved to facilitate information       Spectrogram recognition can also be used in food sensing
      collect ion and integrate the maximum number of               applications to detect the food type and ingredients
      environmental messages into the 6G network.                   through the transmission and reflection of THz signals. This
                                                                    technology will help identify different types of food, calorie
      In the 6G network, high-resolution imaging and detection
                                                                    content, presence of contaminated ingredients, etc.
      sensing techniques will open the door for numerous
      applications, such as remote surgery, cancer diagnostics,
      detection of slits on products, and sink water-leakage        2.5 Posture and Gesture Recognition
      detection. A surgeon may be able to conduct surgery at
      a different location through the help of an ultra-high-       Device-free gesture and posture recognition using machine
      resolution imaging monitor system and remote operation        learning is the key to promoting human–computer
      platform system. In addition, intelligent factories will      interfaces that allow users to convey commands and
      leverage these superior sensing solutions to implement        conveniently interact with devices through body postures,
      contactless ultra-high-precision detection, tracking,         hand gestures, etc. In 6G system, the higher-frequency band
      and qualit y control, where millimeter-level radial-          will enable higher resolution and accuracy to capture finer
      range resolution and ultra-high cross-range resolution        postures and gestures, and the detection of motion activities
      based on higher bandwidth and increased antenna array         (resulting in Doppler shifts) will be more sensitive in the
      aperture, respectively, are required. 6G communication        higher-frequency band. Furthermore, the massive antenna
      technologies, with high THz frequency and corresponding       arrays allow for recognition with significantly improved
      short wavelength that is less than 1 mm can increase          spatial resolution and accuracy. Another important benefit
      the bandwidth and decrease the array size, so that these      of gesture and posture sensing by 6G is the fact that there is
      augmented human sensing functions can be integrated or        no risk of personal privacy information being compromised,
      installed in portable devices.                                as is the case with cameras now, which makes it ideal for
                                                                    many scenarios, especially smart home scenarios. In a future
      While ultra-high-resolution scenarios require higher
                                                                    gesture and posture recognition system that utilizes the
      bandwidth and increased antenna aperture, another
                                                                    densely distributed 6G network, devices will be collectively
      application of "seeing beyond the eye" that can sense the
               Availability                          Percentage of time for which a system is able to provide the sensing
                                                                      service according to requirements.
              Refresh rate                                    Rate at which positioning/localization data is refreshed.
          (a) the real reflectors map     (b) the extracted geometrical representation     system is fraught with various challenges and the goal of
                                                     to the visible reflectors             this section is to provide solutions for these challenges and
               Figure 1 Mapping the objects/reflectors of the environment to               pave the way for utilizing sensing-assisted positioning in
                virtual anchors, i.e., mapping multipath components to vTPs
                                                                                           future 6G networks.
Table 3 ISAC use cases along with key performance indicators and requirements
       Use Case Category                Coverage           Resolution            Accuracy            Probability              Availability   Refresh Rate
                                                             High-accuracy localization and tracking
        Module installation
                                          10 m                    -                1 mm                    -                      99.99%      < 100 ms
         and placement
        Docking drone on a
                                          50 m                    -                1 cm                    -                      99.99%       < 10 ms
         moving platform
          Robot/Drone as
                                          50 m                    -                1 cm                    -                       99.9%      < 100 ms
              waiter
                                                     Simultaneous imaging, mapping, and localization
                SLAM                      50 m                 5 cm                1 cm                    -                       99.9%       < 10 ms
           Indoor NLOS
                                         100 m                 5 cm                1 cm                    -                       99.9%       < 10 ms
            localization
       Urban environment
         reconstruction                 100-200 m              0.5 m               0.1 m                   -                        99%         < 1s
          (virtual city)
                                                                       Augmented human sensing
        Security scans on
       packages via mobile                0.5 m              1-2 mm               0.5 mm                   -                        99%       < 100 ms
             devices
           Spectrogram
          recognition for                 0.5 m               1 mm                0.5 mm                   -                        99%       < 100 ms
              calories
                                                                   Posture and gesture recognition
              Medical
       rehabilitation activity            10 m                 1 cm               0.5 cm                   -                       99.9%        < 1s
           recognition
           Virtual piano
            anywhere,                     10 m               0.5 mm               0.1 cm                   -                        99%        < 1 ms
              anytime
· Association of the multipath measurements to vTPs:                                The proposed SAPE scheme is in contrast to most SLAM
   Another major challenge in implementing the multipath                            techniques where all the localization burden/processing is at
   assisted positioning techniques is that a UE has no idea                         the UE side.
   how to match each measurement parameter vector
   (consisting of angles, delay and Doppler) to a vTP and
                                                                                    3.2 Detailed Proposed SAPE Scheme
   this can potentially produce a large positioning error. In
   general, the matching between the observations and the
                                                                                    3.2.1 First and Second Step Sensing
   visible vTPs is a combinatorial problem with exponential
   complexity.
                                                                                    In the initial environment sensing stage (first step), the
                                                                                    TP senses the entire communication space by using a
To solve the above issues, we introduce our proposed
sensing-assisted position estimation (SAPE) scheme. The                             relatively wide beam or small bandwidth in order to
basic concept of SAPE is to utilize the high resolution generate a coarse RF map to the main reflectors/objects of
technologies in space, angular, and time domains in order to                        identify the potential reflectors and map them to vTPs. A
increase the resolvability of the multipath components and                          static RF map is then available at the TP through this first
exploit the environment RF map to identify the potential                            stage sensing, based on which the location and orientation
reflectors of such multipath components, thereby sensing                            of the static objects or reflectors can be pre-calculated.
the environment while localizing UEs with high resolution
and accuracy. This allows for exploiting the multipath                              In the second step of sensing, which is the stage of
components (including NLOS) to enhance the accuracy                                 environment sensing update or dedicated sensing, the TP
of the position, velocity, and orientation information by                           starts targeted sensing based on the obtained RF map
providing the association between the observations reported                         and coarse UE location. Particularly, the TP senses certain
from the UEs and the prior information corresponding to                             subspaces, based on the coarse UE location and location
the main environment reflectors. Efficient association and
                                                                                    of the main reflectors, and processes the reflected signals
accurate mapping need careful design of specific sensing
                                                                                    to obtain finer sensing information of those reflectors.
signals, novel transmission and reception signal processing
                                                                                    Simultaneously, the UE also performs measurements on the
techniques, and their corresponding measurement and
                                                                                    sensing signal to obtain information including multipath
signaling mechanisms.
                                                                                    identification, range, Doppler, angular and orientation
In particular, the proposed SAPE scheme comprises two measurements in order to obtain the UE position. Therefore,
main steps:                                                                         the second step sensing refines the pre- calculated
                                                                                    information obtained in the first phase and thus supports
1. First step sensing or environment sensing, in which                              quasi-static environment. In addition, this step can correct
   the network (TP) tries to find/update the location of                            the potentially large location errors of the vTP locations
   the main reflectors of the environment and obtains the                           obtained from the first step sensing. The impact of vTP
   subspace for the next step sensing;                                              location errors will be studied in Section 4.
      3.2.2 Multipath Parameter Estimation                                        be classified into four categories, namely, spectra-based [5–
                                                                                  6], subspace-based [7–8], compressive sensing-based (sparse
      The problem involves estimating the parameters of the                       signal recovery/reconstruction) and maximum likelihood-
      dominant J multipath components of the received signal                      based (ML) approaches [9–11]. A high-level comparison
      at the UE per transmitted beam. The parameters to                           between the four categories is provided in Table 4.
      be estimated are the delay τ j , Doppler νj , channel path
      coefficients βj and angle of arrivals ϑjr , φjr , i.e., elevation and       Among these algorithms, space alternating generalized
      azimuth angles of the j - th path. All these parameters are                 expectation (SAGE) maximization is known to be a
      collected into one vector denoted by θj , for all j . Given the             reasonable approach for reducing the computational
      transmitted signal s m (t ) over the m th beam, the received                complexit y, and the slow convergence rate of the
      signal is given by:                                                         maximization step in the EM algorithm is improved by
                                                                                  employing the alternating optimization concept over the
                                                                          (1)
                                                                                  estimated parameters for each path. Similar to EM, the
      where X j (t ; θj ) is the received signal of the j - th path.              SAGE consists of two consecutive and iterative steps, i.e.,
      We note here that X j (t ; θj ) subsumes the effect of the                  expectation and maximization. In the expectation step,
      beamformer at the transmitter and the additive white                        the unobservable data (in our case they are the multipath
      Gaussian noise at the receiver. We note also that the                       components θj ) is estimated based on the observation
                                                                                                                                           Λ
      TX beamforming, during the second step sensing stage,                       of the incomplete data and a previous estimate θ(i) of
      makes Y (m )(t ) sparse, i.e., J (m ) is small. The joint estimation        the parameters vector θ. In the maximization step, the
      of these space-time-frequency parameters results in                         parameters vector of j- th path θj is re-estimated iteratively
      complex noncovex optimization problems. Moreover, the                       by alternatingly optimizing the components of θj , i.e., delay,
      entanglement of the paths' parameters limits the accuracy                   Doppler, channel coefficients and angle of arrivals. In this
      and reduces the resolution of the estimated parameters,                     way, the multi-parameter optimization problem is reduced
      thereby impeding their resolvability. In addition, the high                 to multiple single-parameter optimization problems.
      dimensionality in space, time, and frequency, and real-
      time processing requirements necessitate taking the
                                                                                  3.2.3 Multipath Parameter Association
      computational complexity of the parameter estimation
      algorithm into consideration. Thus, we are looking for a low-
                                                                                  The multipath parameter association problem requires
      complexity super-resolution channel parameters estimator.
                                                                                  finding a way to associate the estimated parameters,
      The literature on the multipath parameters estimation can
                                                                                  i.e., delays and angles of arrival, of the different channel
                                                                                                                         High complexity
            ML-based                    Expectation maximization                         Superior performance
                                                                                                                        Slow convergence
                                                                                                                       Medium complexity
            ML-based                                SAGE                                     Super resolution
                                                                                                                        Fast convergence
           Sparse signal                                                                       Competitive
                                           OMP and its variant                                                         Medium complexity
          reconstruction                                                                       performance
Subspace-based MUSIC, ESPRIT, and their variants Medium resolution Medium complexity
      the i th subset. For each ri , we define the differential/mutual         to mention that the average association error is different
                                                 ~
      distances between its members as d imn = ri m - r i n ,∀m ,n ,m ≠n .     from the average position error. However, the former
      The set of the mutual/differential between the members of                affects the later. In other words, wrongly associating one
                          ~i
      ri is denoted by D . We measure the distance between the                 out of 10 vTPs might not produce significant position error
                   ~i
      sets D and D by:                                                         if the measurements for this vTP have a lower weight in
                                                                                   Association Error
                                                                                                             -2
                                                                        (3)                              10
                                                                 P (PEB < x)
The rationale behind sensing PHY abstraction is to map                         0.5
                                                                               0.4
the system parameters in terms of SINR, bandwidth,
                                                                               0.3
time duration, and antenna configuration to a sensing
                                                                               0.2
performance (i.e., range, Doppler or angle mean square
                                                                               0.1
errors). The proposed SAPE scheme is evaluated and
                                                                                0 -4                -2                 0                2
compared with baseline NR in terms of PEB, based on the                          10               10                 10              10                104
                                                                                                                   PEB (m)
proposed PHY abstraction methodology in two scenarios:
                                                                                                                InH
Idealistic scenario : where the sensing is assumed to be
perfect. In this case, the evaluation is based on applying                      1
evaluating the candidate schemes in two scenarios: indoor                      0.8                       Sensing-assisted positioning
                                                                                                         Baseline NR positioning with 1 ns synch. error
hotspot (InH) and outdoor urban micro (UMI). Both 0.7 Baseline NR positioning with perfect TRP synch.
                                                                               0.6
                                                                 P (PEB < x)
0.4
                                                                               0.3
                Table 5 Parameters for SLS evaluation
                                                                               0.2
         Parameter                               Value
                                                                               0.1
         Bandwidth                             80 MHz
        Sensing time                         14 symbols                         0
                                                                                  -5         -4               -3             -2
                                                                                10        10               10             10            10-1               100
    Sub-carrier spacing                         60 kHz                                                             PEB (m)
  Number of subcarriers                          1024                   Figure 6 SLS results of the proposed SAPE vs. baseline NR in idealistic scenario
                                  Indoor hotspot, 256 × 32       Based on the results, we can observe that under ideal
        Deployment               UMI 32 × 16 (outdoor only),
                                                                 conditions (no RF impairments, no sensing error, no
                                    20 RRUs and 200 UEs
                                                                 diffraction), SAPE can achieve an order of magnitude
      Channel model                      SCM (stochastic)        better accuracy compared to NR. In addition, the NR
     Carrier frequency                         60 GHz
                                                                 baseline cannot achieve good performance in any scenario,
                                     Based on SLS using the
                                                                 even under ideal conditions, due to NLOS bias and
 Simulation methodology              proposed sensing PHY
                                          abstraction            synchronization error between the TPs.
  Non-idealities modeled                   Sensing error
                                                                 Realistic scenario : assuming sensing error, the candidate
Synch. error between TRPs           0 (perfect synch.) or 1 ns
                                                                 schemes are evaluated in outdoor UMI. The simulation
                                                                 parameters are the ones given in Table 5. For modeling the
Based on these parameters, the simulation results are given      sensing error, we assume the vTPs corresponding to each
in Figure 6.                                                     path/cluster are Gaussian-distributed with some variances
                                                                 which are also modeled as random variables. In addition,
                                                                 the vTP location variance for the LOS link is set to 0 as it
                                                                 corresponds to the actual TP. Based on these parameters, the
                                                                 simulation results are given in Figure 7.
(4)
(5)
                                                                                             λ
                                                                                                        λ
                                                                                                        -
                                                                                                        2
 Localization and             Access                       Pollution
     tracking              communication                   detection
RX = 16
                                                                                                                                     RX = 64
                                                                                                                                       RX = 64
                                                                           RX = 16
  Simultaneous               High speed
                                                           Quality                               Element spacing = λ
                                                                                                                                 λ
imaging, mapping,             backhaul                                                           Displaced phase centerspacing = -
                                                          assurance                                                              2
 and localization          communication
                             High speed
    Augmented                                          Basic scientific
                             chip/board
   human sense                                            research
                           communication                                                                    Figure 9 MIMO virtual aperture
From the THz imaging aspect, thousands of antenna                         The schematic of the prototype architecture is shown in
elements are required to create a large aperture for high                 Figure 10. The transmitter antenna array has 4 RF ports and
cross-range resolution. However, it is clear that physically              the receiver antenna array has 16 RF ports, forming a 4T16R
packing thousands of antenna elements into the portable                   MIMO antenna array structure [3]. The per unit antenna
device is infeasible due to the size and power constraint                 radiation pattern is a wide beam design with a 3 dB beam
requirements of the device [18–19]. To solve this problem,                width of 50° and gain of 7 dBi.
virtual aperture techniques are applied in the prototype
system [3]. In particular, the virtual MIMO antenna array
design in the hardware transceiver architecture using the
sparse sampling design in the scanning process is proposed
[3, 20–21].
DAC
DAC
DAC
                                                                                          DAC
                 Baseband                                                                         several sets of linear scanning tracks along the horizontal
                                           PLL
                                                                               TX                 direction, where the sparseness of the sampling signals in
                                                                                                  the vertical domain is then equivalent to the sparseness
                                                                                                  between horizontal tracks, as illustrated in Figure 11. In
                                                                     Transmitter antenna array    this case, the reflected/echo information from the object
                              ADC
               MEMS                                                                               can be retrieved from these vertically sparse samplings via
                              ADC
                                            RX
                              ADC
                                                                                                  compressed sensing techniques [3].
                              ADC
                                                                                                  As depicted in Figure 12a, the robotic arm scans at a speed
                              ADC
                                                                                                  trajectories of the user's hand-held scanning behavior. The
                                            RX
                              ADC                                                                 target object to be imaged, as shown in Figure 12b, is put in
                              ADC                                                                 a box with a cap on top of it. As we can see from Figure
                                                                                                  12b, the smallest distance in the hallowed pattern is 3.5
                     Figure 10 Illustration of the architecture of ISAC prototype
                                                                                                  mm, so the highest resolution of the imaging results can be
                                                                                                  3.5 mm.
      4 . 2 C o m p re s s e d S e n s i n g - b a s e d
      Tomography Imaging                                                                           Robot arm for scanning
                                                                         = tomographic sections
          Aperture plane                                                     2D image slides                                                     9m
                                                                                                                                          24 m
                                                        Horizontal                                                                                 m
                                                                                                                                           m
                                                                                                                                                      3. m
                                                                                                                                                        5
                                                                                                                                                        m
                                                                                                                82 mm
Range
7 mm
The non-sparse full aperture scanning in Figure 13a is an               (c) Sparse scanning with 25% sparsity (most sparsity) and using the traditional
                                                                                                  tomography approach [22]
ideal case, in which the vertical sampling is half wavelength
adjacent. This achieves the best PSLR and ISLR performance,
which is set as an upper bound performance reference.
Then, in order to simulate the sparsity in real free hand
scanning, we assume different sparsity configurations
in tests, from 50% (medium sparsity) to 25% (most
sparsity), where X % sparsity means that there are X %
of the full samplings remaining in the vertical direction.
                                                                      (d) Sparse scanning with 25% sparsity (most sparsity) and using the compressed
With the collection of fewer samplings, stronger side-                                      sensing based tomography approach
                                                                 TX
        Displaced phase
          center 1-16                                           RX 1-16
Another major challenge is the evaluation performance                           imaging and recognition applications, there is a need to
m e t r i c s b a s e d o n t h e n e w s e n s i n g re q u i re m e n t s .   consider EM algorithm when the size of the scatterers is
Conventionally, throughput, latency, and reliability are the                    close to the signal wavelength and therefore the interaction
main evaluation performance metrics for communication                           of the signal to the scatterers are strongly correlated with
systems. However, due to the different sensing applications,                    the EM characteristics.
there are new dimensions of evaluation metrics that need
to be considered, such as sensing resolution, accuracy,
detection probability, and update rate. So far, no KPIs have
                                                                                5.2 Joint Waveform and Signal Processing
been proposed for the joint performance characterization
                                                                                Design
and evaluation of both the communication and sensing
                                                                                Most of the works on the joint design of sensing and
services. This implies that a new scenario-dependent
                                                                                communications mainly focus on the joint waveform
evaluation methodology may need to be investigated.
                                                                                design. The main challenge for the joint waveform design
                                                                                is the contradicting KPIs for communications and sensing.
To address the challenges mentioned above, the following
                                                                                In particular, the main target for communications is
research directions are proposed:
                                                                                maximizing the spectral efficiency, whereas the optimum
                                                                          Multipath
                                                                          channel
       WF mod             DAC                      PA                                                 LIN                       ADC       WF demod
                                       PLL                                 Non-
                                                                        linearities                              PLL                  Resolution/Clipping
                                                                         IIP2/IIP3                                                            SFO
                         CFO                                                                                                            Sampling jitter
                      Phase noise                                                                                         CFO
                                                  Flicker noise                                                        Phase noise
                                                                                                Flicker noise
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