利用强化学习中的学习算法优化5G网络能耗

Daffa Dean Naufal, Harry Ramza, Emilia Roza
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引用次数: 0

摘要

5G网络是在智能手机或小工具中广泛采用的4G LTE(长期演进)快速互联网网络的演进。5G网络为各种目的提供更快的无线互联网。本研究是对几篇与机器学习相关的文章的文献综述,特别是关于5G网络和强化学习算法的能耗优化。结果表明,许多研究人员已经完成了各种技术的发展,以克服大能量摄入的复杂性,包括与5G网络的集成和算法。在电力消耗方面,研究发现,在5G用例中,在站点访问者负载较低的场景中,虽然减少电力摄入优先于QoS,但在50毫秒延迟时可以节省80%的电力,在20毫秒和10毫秒延迟时可以节省75%的电力,在1毫秒延迟时可以节省20%的电力。如果对QoS进行了优先级排序,那么在延迟方面的影响最小的情况下,省电最多可达5%。此外,在动力性能方面,已经观察到dqn辅助运动可以提供改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Energy Consumption in 5G Networks Using Learning Algorithms in Reinforcement Learning
The 5G network is an evolution of the 4G LTE (Long Term Evolution) fast internet network that is widely adopted in smart phones or gadgets. 5G networks offer faster wireless internet for various purposes. This research is a literature review of several articles related to machine learning, specifically regarding energy consumption optimization with 5G networks and reinforcement learning algorithms.The results show that various techniques have evolved to overcome the complexity of large energy intake including integration with 5G networks and algorithms have been completed by many researchers. Related to electricity consumption, it was found that during 5G use cases, in a low site visitor load scenario and while reducing power intake takes precedence over QoS, power savings can be made by 80% with 50 ms latency, 75% with 20 ms and 10 ms latency, and 20% with 1 ms latency. If QoS is prioritized, then power savings reach a maximum of five percent with minimum impact in terms of latency. Moreover, with regards to power performance, it has been observed that DQN-assisted motion can offer improvements.
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