User Power Measurement Based IRS Channel Estimation via Single-Layer Neural Network

He Sun,Weidong Mei, Lipeng Zhu,Rui Zhang

IEEE CONFERENCE ON GLOBAL COMMUNICATIONS, GLOBECOM(2023)

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摘要
One main challenge for implementing intelligent reflecting surface (IRS) aided communications lies in the difficulty to obtain the channel knowledge for the base station (BS)-IRS-user cascaded links, which is needed to design high-performance IRS reflection in practice. Traditional methods for estimating IRS cascaded channels are usually based on the additional pilot signals received at the BS/users, which increase the system training overhead and also may not be compatible with the current communication protocols. To tackle this challenge, we propose in this paper a new single-layer neural network (NN)-enabled IRS channel estimation method based on only the knowledge of users' individual received signal power measurements corresponding to different IRS random training reflections, which are easily accessible in current wireless systems. To evaluate the effectiveness of the proposed channel estimation method, we design the IRS reflection for data transmission based on the estimated cascaded channels in an IRS-aided multiuser communication system. Numerical results show that the proposed IRS channel estimation and reflection design can significantly improve the minimum received signal-to-noise ratio (SNR) among all users, as compared to existing power measurement based designs.
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关键词
Neural Network,Power Measurements,Channel Estimation,Single-layer Neural Network,Communication Systems,Base Station,Wireless Systems,Signal Reception,Knowledge Users,Received Signal Power,Pilot Signals,Channel Estimation Methods,Training Data,Validation Set,Weight Matrix,Phase Shift,Additive Noise,Neural Network Training,User Location,Semidefinite Programming,Neural Network Output,Perfect Channel State Information,Successive Refinement,Multi-user Scenario,Benchmark Schemes,Circularly Symmetric Complex Gaussian,User Power,Passive Design,Stochastic Gradient Descent Method,Multipath Components
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