Targeted Algorithmic Purpose-Driven Cyber Attacks in Distributed Multi-Agent Optimization
Mahan FakouriFard, Mingxi Liu
- 发表年份
- 2025
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- 开放获取
摘要
Distributed multi-agent optimization (DMAO) enables the scalable control and coordination of a large population of edge resources in complex multi-agent environments. Despite its great scalability, DMAO is prone to cyber attacks as it relies on frequent peer-to-peer communications that are vulnerable to malicious data injection and alteration. Existing cybersecurity research mainly focuses on \emph{broad-spectrum} attacks that aim to jeopardize the overall environment but fail to sustainably achieve specific or targeted objectives. This paper develops a class of novel strategic purpose-driven algorithmic attacks that are launched by participating agents and interface with DMAO to achieve self-interested attacking purposes. Theoretical foundations, in both primal and dual senses, are established for these attack vectors with and without stealthy features. Simulations on electric vehicle charging control validate the efficacy of the proposed algorithmic attacks and show the impacts of such attacks on the power distribution network.
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