Litcius/Paper detail

Network Topology Optimization via Deep Reinforcement Learning

Zhuoran Li, Xing Wang, Ling Pan, Lin Zhu, Zhendong Wang, Junlan Feng, Chao Deng, Longbo Huang

2023IEEE Transactions on Communications51 citationsDOI

Abstract

Topology impacts important network performance metrics, including link utilization, throughput and latency, and is of central importance to network operators. However, due to the combinatorial nature of network topology, it is extremely difficult to obtain an optimal solution, especially since topology planning in networks also often comes with management-specific constraints. As a result, local optimization with hand-tuned heuristic methods from human experts is often adopted in practice. Yet, heuristic methods cannot cover the global topology design space while taking into account constraints, and cannot guarantee to find good solutions. In this paper, we propose a novel deep reinforcement learning (DRL) algorithm for graph searching, called DRL-GS, for network topology optimization. DRL-GS consists of three novel components, including a verifier to validate the correctness of a generated network topology, a graph neural network (GNN) to efficiently approximate topology rating, and a DRL agent to conduct a topology search. DRL-GS can efficiently search over relatively large topology space and output topology with satisfactory performance. We conduct a case study based on a real-world network scenario, and our experimental results demonstrate the superior performance of DRL-GS in terms of both efficiency and performance.

Topics & Concepts

Network topologyTopology optimizationTopology (electrical circuits)Computer scienceLogical topologyHeuristicExtension topologyReinforcement learningCorrectnessGraphArtificial intelligenceGeneral topologyTheoretical computer scienceMathematicsComputer networkAlgorithmEngineeringTopological spaceFinite element methodCombinatoricsDiscrete mathematicsStructural engineeringSoftware-Defined Networks and 5GAdvanced Optical Network TechnologiesNetwork Traffic and Congestion Control