Requirement falsification for cyber-physical systems using generative models

IF 3.1 2区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING Automated Software Engineering Pub Date : 2025-03-23 DOI:10.1007/s10515-025-00503-x
Jarkko Peltomäki, Ivan Porres
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引用次数: 0

Abstract

We present the OGAN algorithm for automatic requirement falsification of cyber-physical systems. System inputs and outputs are represented as piecewise constant signals over time while requirements are expressed in signal temporal logic. OGAN can find inputs that are counterexamples for the correctness of a system revealing design, software, or hardware defects before the system is taken into operation. The OGAN algorithm works by training a generative machine learning model to produce such counterexamples. It executes tests offline and does not require any previous model of the system under test. We evaluate OGAN using the ARCH-COMP benchmark problems, and the experimental results show that generative models are a viable method for requirement falsification. OGAN can be applied to new systems with little effort, has few requirements for the system under test, and exhibits state-of-the-art CPS falsification efficiency and effectiveness.

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使用生成模型对网络物理系统进行需求伪造
我们提出了用于网络物理系统自动需求伪造的 OGAN 算法。系统的输入和输出用随时间变化的片断恒定信号表示,而需求则用信号时间逻辑表示。OGAN 可以在系统投入运行之前,找到作为系统正确性反例的输入,揭示设计、软件或硬件缺陷。OGAN 算法通过训练生成式机器学习模型来生成反例。该算法可离线执行测试,不需要被测系统的任何先前模型。我们使用 ARCH-COMP 基准问题对 OGAN 进行了评估,实验结果表明生成模型是一种可行的需求证伪方法。OGAN 不费吹灰之力就能应用于新系统,对被测系统的要求也不高,而且具有最先进的 CPS 验证效率和效果。
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来源期刊
Automated Software Engineering
Automated Software Engineering 工程技术-计算机:软件工程
CiteScore
4.80
自引率
11.80%
发文量
51
审稿时长
>12 weeks
期刊介绍: This journal details research, tutorial papers, survey and accounts of significant industrial experience in the foundations, techniques, tools and applications of automated software engineering technology. This includes the study of techniques for constructing, understanding, adapting, and modeling software artifacts and processes. Coverage in Automated Software Engineering examines both automatic systems and collaborative systems as well as computational models of human software engineering activities. In addition, it presents knowledge representations and artificial intelligence techniques applicable to automated software engineering, and formal techniques that support or provide theoretical foundations. The journal also includes reviews of books, software, conferences and workshops.
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