DAR-DRL: A dynamic adaptive routing method based on deep reinforcement learning

IF 4.5 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Zheheng Rao , Yanyan Xu , Ye Yao , Weizhi Meng
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引用次数: 0

Abstract

Mobile-centric wireless networks offer users a diverse range of services and experiences. However, existing intelligent routing methods often struggle to make suitable routing decisions during dynamic network changes, significantly limiting transmission performance. This paper proposes a dynamic adaptive routing method based on Deep Reinforcement Learning (DAR-DRL) to effectively address these challenges. First, to accurately model network state information in complex and dynamically changing routing tasks, we introduce a link-aware graph learning model (LA-GNN) that efficiently senses network information of varying structures through a hierarchical aggregated message-passing neural network. Second, to ensure routing reliability in dynamic environments, we design a hop-by-hop routing strategy featuring a large acceptance domain and a reliability guarantee reward function. This mechanism adaptively avoids routing holes and loops across various network scenarios while enhancing the robustness of routing under dynamic conditions. Experimental results demonstrate that the proposed DAR-DRL method achieves the network routing task with shorter end-to-end delays, lower packet loss rates, and higher throughput compared to existing mainstream methods across common dynamic network scenarios, including cases with dynamic traffic variations, random link failures (small topology changes), and significant topology alterations.
DAR-DRL:基于深度强化学习的动态自适应路由方法
以移动为中心的无线网络为用户提供了多种多样的服务和体验。然而,现有的智能路由方法往往难以在网络动态变化时做出合适的路由决策,从而大大限制了传输性能。本文提出了一种基于深度强化学习(DAR-DRL)的动态自适应路由方法,以有效应对这些挑战。首先,为准确模拟复杂动态变化路由任务中的网络状态信息,我们引入了链路感知图学习模型(LA-GNN),通过分层聚合消息传递神经网络高效感知不同结构的网络信息。其次,为了确保动态环境中的路由可靠性,我们设计了一种逐跳路由策略,具有较大的接受域和可靠性保证奖励函数。这种机制能在各种网络场景中自适应地避免路由漏洞和环路,同时增强路由在动态条件下的鲁棒性。实验结果表明,与现有的主流方法相比,所提出的 DAR-DRL 方法能在常见的动态网络场景中以更短的端到端延迟、更低的丢包率和更高的吞吐量完成网络路由任务,这些场景包括动态流量变化、随机链路故障(小的拓扑变化)和显著的拓扑变化。
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来源期刊
Computer Communications
Computer Communications 工程技术-电信学
CiteScore
14.10
自引率
5.00%
发文量
397
审稿时长
66 days
期刊介绍: Computer and Communications networks are key infrastructures of the information society with high socio-economic value as they contribute to the correct operations of many critical services (from healthcare to finance and transportation). Internet is the core of today''s computer-communication infrastructures. This has transformed the Internet, from a robust network for data transfer between computers, to a global, content-rich, communication and information system where contents are increasingly generated by the users, and distributed according to human social relations. Next-generation network technologies, architectures and protocols are therefore required to overcome the limitations of the legacy Internet and add new capabilities and services. The future Internet should be ubiquitous, secure, resilient, and closer to human communication paradigms. Computer Communications is a peer-reviewed international journal that publishes high-quality scientific articles (both theory and practice) and survey papers covering all aspects of future computer communication networks (on all layers, except the physical layer), with a special attention to the evolution of the Internet architecture, protocols, services, and applications.
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