Relational Deep Reinforcement Learning for Routing in Wireless Networks
Victoria Manfredi, Alicia Wolfe, Bing Wang, Xiaolan Zhang

TL;DR
This paper introduces a relational deep reinforcement learning approach for wireless network routing that generalizes across various network conditions and outperforms traditional methods in delivery and delay metrics.
Contribution
The paper presents a novel distributed routing strategy using relational features and packet-centric decisions, enabling better generalization and faster convergence in diverse wireless network scenarios.
Findings
The learned policy generalizes to larger, more congested networks.
Outperforms shortest path and backpressure routing in delivery and delay.
Reduces training data needs through extended-time actions.
Abstract
While routing in wireless networks has been studied extensively, existing protocols are typically designed for a specific set of network conditions and so cannot accommodate any drastic changes in those conditions. For instance, protocols designed for connected networks cannot be easily applied to disconnected networks. In this paper, we develop a distributed routing strategy based on deep reinforcement learning that generalizes to diverse traffic patterns, congestion levels, network connectivity, and link dynamics. We make the following key innovations in our design: (i) the use of relational features as inputs to the deep neural network approximating the decision space, which enables our algorithm to generalize to diverse network conditions, (ii) the use of packet-centric decisions to transform the routing problem into an episodic task by viewing packets, rather than wireless devices,…
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Taxonomy
TopicsMobile Ad Hoc Networks · Wireless Networks and Protocols · Energy Harvesting in Wireless Networks
