Visible to the public Sequential Topology Attack of Supply Chain Networks Based on Reinforcement Learning

TitleSequential Topology Attack of Supply Chain Networks Based on Reinforcement Learning
Publication TypeConference Paper
Year of Publication2022
AuthorsZhang, Lei, Zhou, Jian, Ma, Yizhong, Shen, Lijuan
Conference Name2022 International Conference on Cyber-Physical Social Intelligence (ICCSI)
KeywordsChained Attacks, Network topology, Power system protection, pubcrawl, reinforcement learning, resilience, Resiliency, Robustness, Scalability, search problems, sequential attacks, simulation, supply chain networks, Supply chains
AbstractThe robustness of supply chain networks (SCNs) against sequential topology attacks is significant for maintaining firm relationships and activities. Although SCNs have experienced many emergencies demonstrating that mixed failures exacerbate the impact of cascading failures, existing studies of sequential attacks rarely consider the influence of mixed failure modes on cascading failures. In this paper, a reinforcement learning (RL)-based sequential attack strategy is applied to SCNs with cascading failures that consider mixed failure modes. To solve the large state space search problem in SCNs, a deep Q-network (DQN) optimization framework combining deep neural networks (DNNs) and RL is proposed to extract features of state space. Then, it is compared with the traditional random-based, degree-based, and load-based sequential attack strategies. Simulation results on Barabasi-Albert (BA), Erdos-Renyi (ER), and Watts-Strogatz (WS) networks show that the proposed RL-based sequential attack strategy outperforms three existing sequential attack strategies. It can trigger cascading failures with greater influence. This work provides insights for effectively reducing failure propagation and improving the robustness of SCNs.
DOI10.1109/ICCSI55536.2022.9970706
Citation Keyzhang_sequential_2022