从输入/输出轨迹中挖掘混合自动机的框架

R. Medhat, S. Ramesh, Borzoo Bonakdarpour, S. Fischmeister
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引用次数: 34

摘要

基于自动机的嵌入式系统模型是有用和有吸引力的,原因有很多:它们直观、精确、抽象程度高、独立于工具、可以模拟和分析。在大型系统的情况下,它们还具有促进可读性和系统理解的优点。本文提出了一种从嵌入式控制系统的输入/输出执行轨迹中挖掘基于自动机的模型的方法。通过我们的方法挖掘的模型是混合自动机模型,它捕获离散和连续系统行为。具体来说,本文提出了一个框架,通过识别分割、聚类、生成事件轨迹和自动推理等步骤来分析多个输入/输出轨迹。该框架足够通用,可以采用多种技术或将来对这些步骤进行增强。我们通过在两个案例研究中使用一些特定的现有方法和工具来展示该框架的强大功能。我们的初步结果是令人鼓舞的,应该会刺激该领域的进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A framework for mining hybrid automata from input/output traces
Automata-based models of embedded systems are useful and attractive for many reasons: they are intuitive, precise, at a high level of abstraction, tool independent and can be simulated and analyzed. They also have the advantage of facilitating readability and system comprehension in the case of large systems. This paper proposes an approach for mining automata-based models from input/output execution traces of embedded control systems. The models mined by our approach are hybrid automata models, which capture discrete as well as continuous system behavior. Specifically this paper proposes a framework for analyzing multiple input/output traces by identifying steps like segmentation, clustering, generation of event traces, and automata inference. The framework is general enough to admit multiple techniques or future enhancements of these steps. We demonstrate the power of the framework by using some specific existing methods and tools in two case studies. Our initial results are encouraging and should spur further research in the domain.
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