基于图神经网络的挑战网络动态路由

R. Lent
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引用次数: 1

摘要

挑战网络的特点是时变的运行环境,限制了标准路由算法的最优性。这项工作研究了一种深度学习方法,该方法通过图神经网络(GNN)利用可用的网络指标和性能数据来解决捆绑包路由问题。通过定义一个同时接受边缘和节点输入特征的GNN结构,并通过强化学习进行训练,形成了一个认知路由决策单元。GNN允许输入是排列不变的,并且独立于网络大小和连通性。仿真结果表明,所提出的认知路由方法能够学习如何优化流的每个数据包的下一跳,从而实现比标准接触图路由算法更低的端到端传输延迟。GNN通过检测和避免黄油拥塞和长链路中断时下一次接触的失速时间造成的延长等待时间来实现优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Routing in Challenged Networks with Graph Neural Networks
Challenged networks are characterized by a time-varying operational environment that constrains the optimality of standard routing algorithms. This work investigates a deep learning method that tackles the bundle routing problem by taking advantage of the available network metrics and performance data through a graph neural network (GNN). A cognitive routing decision unit is formulated by defining a GNN structure that accepts both edge and node input features, and that is trained with reinforcement learning. The GNN allows the inputs to be permutation invariant and independent of the network size and connectivity. Simulation results demonstrate that the proposed cognitive routing method is able to learn how to optimize the next-hop for each data bundle of a flow to achieve lower end-to-end delivery latency than the standard Contact Graph Routing algorithm. The GNN achieves the optimization by detecting and avoiding the extended wait times caused by both butter congestion and the stall times for the next contact when long link disruptions occur.
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