Deep Deterministic Policy Gradient for Relay Selection and Power Allocation in Cooperative Communication Network
Deep Deterministic Policy Gradient for Relay Selection and Power Allocation in Cooperative Communication Network
Perfect channel state information (CSI) is usually required when considering relay selection and power allocation in cooperative communication. However, it is difficult to get an accurate CSI in practical situations. In this letter, we study the outage probability minimizing problem based on optimizing relay selection and transmission power. We propose a prioritized experience replay aided deep deterministic policy gradient learning framework, which can find an optimal solution by dealing with continuous action space, without any prior knowledge of CSI. Simulation results reveal that our approach outperforms reinforcement learning based methods in existing literatures, and improves the communication success rate by about 4%.
Zhao Dong、Yiming Liu、Jie Wang、Yuanzhe Geng、Rui Wang、Gang Shen、Erwu Liu
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Zhao Dong,Yiming Liu,Jie Wang,Yuanzhe Geng,Rui Wang,Gang Shen,Erwu Liu.Deep Deterministic Policy Gradient for Relay Selection and Power Allocation in Cooperative Communication Network[EB/OL].(2020-12-11)[2025-05-13].https://arxiv.org/abs/2012.12114.点此复制
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