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Multiple Signal Classification Based Joint Communication and Sensing System

Xu Chen, Zhiyong Feng, Zhiqing Wei, Xin Yuan, Ping Zhang, J. Andrew Zhang, Heng Yang

2023IEEE Transactions on Wireless Communications63 citationsDOI

Abstract

Joint communication and sensing (JCS) has become a promising technology for mobile networks because of its higher spectrum and energy efficiency. Up to now, the prevalent fast Fourier transform (FFT)-based sensing method for mobile JCS networks is on-grid based, and the grid interval determines the resolution. Because the mobile network usually has limited consecutive OFDM symbols in a downlink (DL) time slot, the sensing accuracy is restricted by the limited resolution, especially for velocity estimation. In this paper, we propose a multiple signal classification (MUSIC)-based JCS system that can achieve higher sensing accuracy for the angle of arrival, range, and velocity estimation, compared with the traditional FFT-based JCS method. We further propose a JCS channel state information (CSI) enhancement method by leveraging the JCS sensing results. Finally, we derive a theoretical lower bound for sensing mean square error (MSE) by using perturbation analysis. Simulation results show that in terms of the sensing MSE performance, the proposed MUSIC-based JCS outperforms the FFT-based one by more than 20 dB. Moreover, the bit error rate (BER) of communication demodulation using the proposed JCS CSI enhancement method is significantly reduced compared with communication using the originally estimated CSI.

Topics & Concepts

Computer scienceFast Fourier transformOrthogonal frequency-division multiplexingTelecommunications linkDemodulationChannel state informationMean squared errorCramér–Rao boundAlgorithmChannel (broadcasting)WirelessTelecommunicationsEstimation theoryStatisticsMathematicsIndoor and Outdoor Localization TechnologiesRadar Systems and Signal ProcessingDirection-of-Arrival Estimation Techniques