基于强化学习的两层卫星网络流量分配策略

Congying Dun, Shihan Tan, Fenglin Jin, Kun Xu
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引用次数: 0

摘要

在MEO- leo卫星网络中,一个MEO可以同时与多个leo卫星建立连接。为了最大限度地利用卫星网络资源,中低空卫星之间的流量分配非常重要。本文首先描述了两层卫星网络系统模型,指出了多LEO到MEO之间业务分配的重要性。然后,通过量化MEO可接收的流量资源和多个leo对MEO的流量需求,并考虑leo对leo的剩余可见性,提出了一种基于q -学习的两层卫星网络流量分配策略,以最大化leo在给定时间内对MEO的效用。然后对低轨道交通需求进行分级,降低系统的计算和存储复杂度。最后,通过仿真验证了所提策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic Allocation Strategy Based on Reinforcement Learning in Two-layer Satellite Network
In MEO-LEO satellite network, a MEO can establish connections with multiple LEOs at the same time. In order to maximize the use of satellite network resources, traffic allocation between MEO and LEOs is very important. This paper first describes the two-layer satellite network system model and point out the importance of traffic allocation among multiple LEO to MEO. Then, by quantifying the traffic resources that can be received by MEO and traffic requirements from multiple LEOs to MEO, and taking into account the remaining visible of MEO to LEOs, a traffic allocation strategy based on Q-learning in two-layer satellite networks was proposed, which aims to maximize the utility of LEOs to MEO in a given time. Then the paper grades the LEO traffic requirements to reduce the computational and storage complexity of the system. Finally, the effectiveness of the proposed strategy is verified by simulation.
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