计算机科学
交通工程
分布式计算
网络拓扑
交通生成模型
可扩展性
计算机网络
人工神经网络
布线(电子设计自动化)
自适应路由
静态路由
网络流量控制
分层路由
网络流量模拟
航程(航空)
链路状态路由协议
图形
路由域
多路径路由
路由协议
路由表
网络性能
机场交通模式
基于策略的路由
负载平衡(电力)
动态源路由
地理路由
交通整形
自适应系统
智能交通系统
作者
Minghao Ye,Junjie Zhang,Zehua Guo,H. Jonathan Chao
标识
DOI:10.1109/ton.2025.3607939
摘要
Traffic Engineering (TE) has been widely used by network operators to improve network performance and deliver better service quality. One major challenge for TE is providing routing strategies that can adapt to highly dynamic future traffic scenarios. Unfortunately, existing works either suffer severe performance degradation under unexpected traffic fluctuations, or sacrifice optimality to guarantee worst-case performance when traffic remains relatively stable. In this paper, we propose LARRI, a learning-based TE framework that predicts adaptive routing strategies for unknown future traffic scenarios. By integrating future demand range prediction and optimal range routing imitation into a single step, LARRI learns to generate a routing strategy that accommodates a wide range of possible future traffic matrices, thereby achieving a good trade-off between performance optimality and worst-case guarantees. Moreover, LARRI employs a scalable graph neural network architecture, which greatly facilitates both training and inference. Extensive simulations on six real-world network topologies show that LARRI achieves near-optimal load balancing in future traffic scenarios, improves worst-case performance by up to 43.3% over state-of-the-art baselines, and consistently provides the lowest end-to-end delay under dynamic traffic fluctuations.
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