Biased Backpressure Routing Using Link Features and Graph Neural Networks

Zhongyuan Zhao;Bojan Radojičić;Gunjan Verma;Ananthram Swami;Santiago Segarra
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Abstract

To reduce the latency of Backpressure (BP) routing in wireless multi-hop networks, we propose to enhance the existing shortest path-biased BP (SP-BP) and sojourn time-based backlog metrics, since they introduce no additional time step-wise signaling overhead to the basic BP. Rather than relying on hop-distance, we introduce a new edge-weighted shortest path bias built on the scheduling duty cycle of wireless links, which can be predicted by a graph convolutional neural network based on the topology and traffic of wireless networks. Additionally, we tackle three long-standing challenges associated with SP-BP: optimal bias scaling, efficient bias maintenance, and integration of delay awareness. Our proposed solutions inherit the throughput optimality of the basic BP, as well as its practical advantages of low complexity and fully distributed implementation. Our approaches rely on common link features and introduces only a one-time constant overhead to previous SP-BP schemes, or a one-time overhead linear in the network size to the basic BP. Numerical experiments show that our solutions can effectively address the major drawbacks of slow startup, random walk, and the last packet problem in basic BP, improving the end-to-end delay of existing low-overhead BP algorithms under various settings of network traffic, interference, and mobility.
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利用链路特征和图神经网络进行有偏向的反压路由选择
为了减少无线多跳网络中的Backpressure(BP)路由延迟,我们建议改进现有的基于最短路径的BP(SP-BP)和基于停留时间的积压指标,因为它们不会给基本BP带来额外的时间步进信号开销。我们不依赖于跳距,而是根据无线链路的调度占空比引入了一种新的边缘加权最短路径偏置,这种偏置可通过基于无线网络拓扑和流量的图卷积神经网络进行预测。此外,我们还解决了与 SP-BP 相关的三个长期难题:最优偏置缩放、高效偏置维护和延迟感知集成。我们提出的解决方案继承了基本 BP 的吞吐量最优性,以及低复杂性和完全分布式实施的实际优势。我们的方法依赖于常见的链路特征,与以前的 SP-BP 方案相比,只引入了一次性常量开销,与基本 BP 相比,只引入了与网络规模成线性关系的一次性开销。数值实验表明,我们的方案能有效解决基本 BP 的启动慢、随机漫步和最后一个数据包问题等主要缺点,在各种网络流量、干扰和移动性设置下改善现有低开销 BP 算法的端到端延迟。
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