Podrobná bibliografia
| Názov: |
Joint Power Allocation Algorithm Based on Multi-Agent DQN in Cognitive Satellite–Terrestrial Mixed 6G Networks. |
| Autori: |
Zhai, Yifan, Ma, Zhongjun, He, Bo, Xu, Wenhui, Li, Zhenxing, Wang, Jie, Miao, Hongyi, Gao, Aobo, Cao, Yewen |
| Zdroj: |
Mathematics (2227-7390); Oct2025, Vol. 13 Issue 19, p3133, 17p |
| Predmety: |
6G networks, REINFORCEMENT learning, COMPARATIVE studies, INTELLIGENT agents, POWER resources management, NETWORK performance, TELECOMMUNICATION systems, INTERFERENCE suppression |
| Abstrakt: |
The Cognitive Satellite–Terrestrial Network (CSTN) is an important infrastructure for the future development of 6G communication networks. This paper focuses on a potential communication scenario, where satellite users (SUs) dominate and are selected as the primary users, and terrestrial base station users (TUs) are the secondary users. Additionally, each terrestrial base station owns multiple antennae, and the interference of TUs to SUs in the CSTN is limited to a low level or below. In this paper, based on the observation of diversity and the time-varying characteristics of a variety of user requirements, a multi-agent deep Q-network algorithm under interference limitation (MADQN-IL) was proposed, where the power of each antenna in the base station is allocated to maximize the total system throughput while meeting the interference constraints in the CSTN. In our proposed MADQN-IL, the base stations play the role of intelligent agents, and each agent selects the antenna power allocation and cooperates with other agents through sharing system states and the total rewards. Through a simulation comparison, it was discovered that the MADQN-IL algorithm can achieve a higher system throughput than the adaptive resource adjustment (ARA) algorithm and the fixed power allocation methods. [ABSTRACT FROM AUTHOR] |
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