Litcius/Paper detail

Reinforcement learning based dynamic distributed routing scheme for mega LEO satellite networks

Yixin Huang, Shufan Wu, Zeyu Kang, Zhongcheng MU, Hai HUANG, Xiaofeng Wu, Andrew Jack Tang, Xuebin Cheng

2022Chinese Journal of Aeronautics64 citationsDOIOpen Access PDF

Abstract

Recently, mega Low Earth Orbit (LEO) Satellite Network (LSN) systems have gained more and more attention due to low latency, broadband communications and global coverage for ground users. One of the primary challenges for LSN systems with inter-satellite links is the routing strategy calculation and maintenance, due to LSN constellation scale and dynamic network topology feature. In order to seek an efficient routing strategy, a Q-learning-based dynamic distributed Routing scheme for LSNs (QRLSN) is proposed in this paper. To achieve low end-to-end delay and low network traffic overhead load in LSNs, QRLSN adopts a multi-objective optimization method to find the optimal next hop for forwarding data packets. Experimental results demonstrate that the proposed scheme can effectively discover the initial routing strategy and provide long-term Quality of Service (QoS) optimization during the routing maintenance process. In addition, comparison results demonstrate that QRLSN is superior to the virtual-topology-based shortest path routing algorithm.

Topics & Concepts

Computer scienceComputer networkStatic routingEqual-cost multi-path routingDistributed computingDynamic Source RoutingMultipath routingNetwork packetSatellite constellationLink-state routing protocolPolicy-based routingRouting protocolSatelliteEngineeringAerospace engineeringSatellite Communication SystemsSoftware-Defined Networks and 5GAdvanced Optical Network Technologies