English

Heuristic Learning for Co-Design Scheme of Optimal Sequential Attack

Optimization and Control 2023-11-20 v2

Abstract

This paper considers a novel co-design problem of the optimal \textit{sequential} attack, whose attack strategy changes with the time series, and in which the \textit{sequential} attack selection strategy and \textit{sequential} attack signal are simultaneously designed. Different from the existing attack design works that separately focus on attack subsets or attack signals, the joint design of the attack strategy poses a huge challenge due to the deep coupling relation between the \textit{sequential} attack selection strategy and \textit{sequential} attack signal. In this manuscript, we decompose the sequential co-design problem into two equivalent sub-problems. Specifically, we first derive an analytical closed-form expression between the optimal attack signal and the sequential attack selection strategy. Furthermore, we prove the finite-time inverse convergence of the critical parameters in the injected optimal attack signal by discrete-time Lyapunov analysis, which enables the efficient off-line design of the attack signal and saves computing resources. Finally, we exploit its relationship to design a heuristic two-stage learning-based joint attack algorithm (HTL-JA), which can accelerate realization of the attack target compared to the one-stage proximal-policy-optimization-based (PPO) algorithm. Extensive simulations are conducted to show the effectiveness of the injected optimal sequential attack.

Keywords

Cite

@article{arxiv.2311.09933,
  title  = {Heuristic Learning for Co-Design Scheme of Optimal Sequential Attack},
  author = {Xiaoyu Luo and Haoxuan Pan and Chongrong Fang and Chengcheng Zhao and Peng Cheng and Jianping He},
  journal= {arXiv preprint arXiv:2311.09933},
  year   = {2023}
}
R2 v1 2026-06-28T13:23:27.663Z