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Deep Learning based Three-stage Solution for ISAC Beamforming Optimization

Signal Processing 2026-01-29 v1

Abstract

In this paper, a general ISAC system where the base station (BS) communicates with multiple users and performs target detection is considered. Then, a sum communication rate maximization problem is formulated, subjected to the constraints of transmit power and the minimum sensing rates of users. To solve this problem, we develop a framework that leverages deep learning algorithms to provide a three-stage solution for ISAC beamforming. The three-stage beamforming optimization solution includes three modules: 1) an unsupervised learning based feature extraction algorithm is proposed to extract fixed-size latent features while keeping its essential information from the variable channel state information (CSI); 2) a reinforcement learning (RL) based beampattern optimization algorithm is proposed to search the desired beampattern according to the extracted features; 3) a supervised learning based beamforming reconstruction algorithm is proposed to reconstruct the beamforming vector from beampattern given by the RL agent. Simulation results demonstrate that the proposed three-stage solution outperforms the baseline RL algorithm by optimizing the intuitional beampattern rather than beamforming.

Keywords

Cite

@article{arxiv.2601.20667,
  title  = {Deep Learning based Three-stage Solution for ISAC Beamforming Optimization},
  author = {Qian Gao and Ruikang Zhong and Yuanwei Liu},
  journal= {arXiv preprint arXiv:2601.20667},
  year   = {2026}
}
R2 v1 2026-07-01T09:24:02.887Z