基于 PAC 学习的组合式概率障碍证书生成

Translated title of the contribution: Compositional Probabilistic Barrier Certificate Generation Based on PAC Learning

Zi Xuan Yang, Xia Zeng, Meng Xin Ren, Jian Lin Wang, Zhen Bing Zeng, Zheng Feng Yang

Research output: Contribution to journalArticlepeer-review

Abstract

Continuous dynamical systems safety verification is an important research issue, and over the years, various verification methods have been very limited in the scale of the problems they can handle. For a given continuous dynamical system, this study proposes an algorithm to generate a set of compositional probably approximately correct (PAC) barrier certificates through a counterexample-guided approach. A formal description of the infinite-time domain safety verification problem is given in terms of probability and statistics. By establishing and solving a mixed-integer programming method based on the big-M method, the barrier certificate problem is transformed into a constrained optimization problem. Nonlinear inequalities are linearized in intervals using the mean value theorem of differentiation. Finally, this study implements the compositional PAC barrier certificate generator CPBC and evaluates its performance on 11 benchmark systems. The experimental results show that CPBC can successfully verify the safety of each dynamical system under specified different safety requirement thresholds. Compared with existing methods, the proposed method can more efficiently generate reliable probabilistic barrier certificates for complex or high-dimensional systems, with the verified example scale reaching up to hundreds of dimensions.

Translated title of the contributionCompositional Probabilistic Barrier Certificate Generation Based on PAC Learning
Original languageChinese (Traditional)
Pages (from-to)1907-1923
Number of pages17
JournalRuan Jian Xue Bao/Journal of Software
Volume36
Issue number5
DOIs
StatePublished - 2025

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