Latency-Sensitive Service Function Chains Intelligent Migration in Satellite Communication Driven by Deep Reinforcement Learning

IF 2.5 4区 计算机科学 Q3 TELECOMMUNICATIONS Transactions on Emerging Telecommunications Technologies Pub Date : 2024-10-24 DOI:10.1002/ett.70006
Peiying Zhang, Yilin Li, Lizhuang Tan, Kai Liu, Miao Wen, Hao Hao
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Abstract

Satellite communication technology solves the problem that the traditional wired network infrastructure is difficult to achieve global communication coverage. However, factors such as satellite orbits introduce frequent changes to the network topology, and challenges like satellite failures and communication link interruptions are prevalent. In the face of these issues, service function chain (SFC) migration becomes a crucial method for swiftly adjusting SFCs during faults, maintaining service continuity and availability. This article proposes a latency-sensitive SFC migration algorithm tailored to satellite networks. The algorithm first models the satellite network as a multi-domain virtual network, capturing the constraints faced during SFC migration. Subsequently, a deep reinforcement learning algorithm integrated attention mechanism is designed to more accurately capture and understand the complex network environment and dynamic satellite network topology and derive optimal SFC migration strategies for superior performance. Finally, through experimentation and evaluation of the deep reinforcement learning-driven latency-sensitive service function chain intelligent migration algorithm (LS-SFCM) in satellite communication, this study validates the effectiveness and superior performance of the algorithm in latency-sensitive scenarios. It provides a new avenue for enhancing the service quality and efficiency of satellite communication networks.

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深度强化学习驱动卫星通信中对延迟敏感的服务功能链智能迁移
卫星通信技术解决了传统有线网络基础设施难以实现全球通信覆盖的问题。然而,卫星轨道等因素导致网络拓扑结构频繁变化,卫星故障和通信链路中断等挑战普遍存在。面对这些问题,服务功能链(SFC)迁移成为在故障期间迅速调整 SFC、保持服务连续性和可用性的重要方法。本文针对卫星网络提出了一种对延迟敏感的 SFC 迁移算法。该算法首先将卫星网络建模为多域虚拟网络,捕捉 SFC 迁移过程中面临的约束。随后,设计了一种集成注意力机制的深度强化学习算法,以更准确地捕捉和理解复杂的网络环境和动态的卫星网络拓扑结构,并推导出最优的 SFC 迁移策略,从而获得卓越的性能。最后,本研究通过对深度强化学习驱动的时延敏感服务功能链智能迁移算法(LS-SFCM)在卫星通信中的实验和评估,验证了该算法在时延敏感场景下的有效性和优越性能。它为提高卫星通信网络的服务质量和效率提供了一条新途径。
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来源期刊
CiteScore
8.90
自引率
13.90%
发文量
249
期刊介绍: ransactions on Emerging Telecommunications Technologies (ETT), formerly known as European Transactions on Telecommunications (ETT), has the following aims: - to attract cutting-edge publications from leading researchers and research groups around the world - to become a highly cited source of timely research findings in emerging fields of telecommunications - to limit revision and publication cycles to a few months and thus significantly increase attractiveness to publish - to become the leading journal for publishing the latest developments in telecommunications
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