The paper proposes a novel three-stage channel estimation approach for an IRS-assisted integrated sensing and communication (ISAC) multiple-input single-output (MISO) system.
In the first stage, the direct sensing and communication channels are estimated when the IRS is turned off. In the second and third stages, the reflected communication and sensing channels are successively estimated by controlling the on/off state of the IRS and ISAC base station transmission.
A deep learning framework is developed, comprising two different convolutional neural network (CNN) architectures to handle the direct and reflected channel estimation tasks. Two types of input-output pairs are designed for the CNNs, leveraging the received signals and least-squares channel estimates. The proposed approach effectively decouples the overall estimation problem and solves the challenge caused by the inherent interference between sensing and communication signals.
Simulation results validate the superior performance of the proposed approach compared to the least-squares baseline scheme under various signal-to-noise ratio conditions and system parameters. The computational complexity analysis shows the proposed approach has acceptable complexity.
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by Yu Liu,Ibrah... at arxiv.org 04-09-2024
https://arxiv.org/pdf/2402.09441.pdfDeeper Inquiries