Mining Environment Assumptions for Cyber-Physical System Models

Sara Mohammadinejad, Jyotirmoy V. Deshmukh, Aniruddh Gopinath Puranic
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引用次数: 6

Abstract

Many complex cyber-physical systems can be modeled as heterogeneous components interacting with each other in real-time. We assume that the correctness of each component can be specified as a requirement satisfied by the output signals produced by the component, and that such an output guarantee is expressed in a real-time temporal logic such as Signal Temporal Logic (STL). In this paper, we hypothesize that a large subset of input signals for which the corresponding output signals satisfy the output requirement can also be compactly described using an STL formula that we call the environment assumption. We propose an algorithm to mine such an environment assumption using a supervised learning technique. Essentially, our algorithm treats the environment assumption as a classifier that labels input signals as good if the corresponding output signal satisfies the output requirement, and as bad otherwise. Our learning method simultaneously learns the structure of the STL formula as well as the values of the numeric constants appearing in the formula.1 To achieve this, we combine a procedure to systematically enumerate candidate Parametric STL (PSTL) formulas, with a decision-tree based approach to learn parameter values. We demonstrate experimental results on real world data from several domains including transportation and health care.
网络-物理系统模型的挖掘环境假设
许多复杂的网络物理系统可以被建模为实时相互作用的异构组件。我们假设每个组件的正确性可以被指定为组件所产生的输出信号所满足的要求,并且这种输出保证是用信号时序逻辑(Signal temporal logic, STL)等实时时序逻辑来表示的。在本文中,我们假设输入信号的一个大子集,其相应的输出信号满足输出要求,也可以用STL公式紧凑地描述,我们称之为环境假设。我们提出了一种使用监督学习技术来挖掘这种环境假设的算法。本质上,我们的算法将环境假设视为分类器,如果相应的输出信号满足输出要求,则将输入信号标记为好信号,否则标记为坏信号。我们的学习方法同时学习了STL公式的结构以及公式中出现的数值常数的值为了实现这一目标,我们将系统地枚举候选参数STL (PSTL)公式的过程与基于决策树的方法相结合来学习参数值。我们在包括交通和医疗保健在内的几个领域的真实世界数据上展示了实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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