摘要
In recent times,various power control and clustering approaches have been proposed to enhance overall performance for cell-free massive multipleinput multiple-output(CF-mMIMO)networks.With the emergence of deep reinforcement learning(DRL),significant progress has been made in the field of network optimization as DRL holds great promise for improving network performance and efficiency.In this work,our focus delves into the intricate challenge of joint cooperation clustering and downlink power control within CF-mMIMO networks.Leveraging the potent deep deterministic policy gradient(DDPG)algorithm,our objective is to maximize the proportional fairness(PF)for user rates,thereby aiming to achieve optimal network performance and resource utilization.Moreover,we harness the concept of“divide and conquer”strategy,introducing two innovative methods termed alternating DDPG(A-DDPG)and hierarchical DDPG(H-DDPG).These approaches aim to decompose the intricate joint optimization problem into more manageable sub-problems,thereby facilitating a more efficient resolution process.Our findings unequivo-cally showcase the superior efficacy of our proposed DDPG approach over the baseline schemes in both clustering and downlink power control.Furthermore,the A-DDPG and H-DDPG obtain higher performance gain than DDPG with lower computational complexity.
基金
supported by Guangdong Basic and Applied Basic Research Foundation under Grant 2024A1515012015
supported in part by the National Natural Science Foundation of China under Grant 62201336
in part by Guangdong Basic and Applied Basic Research Foundation under Grant 2024A1515011541
supported in part by the National Natural Science Foundation of China under Grant 62371344
in part by the Fundamental Research Funds for the Central Universities
supported in part by Knowledge Innovation Program of Wuhan-Shuguang Project under Grant 2023010201020316
in part by Guangdong Basic and Applied Basic Research Foundation under Grant 2024A1515010247。