A Framework for Identification and Validation of Affine Hybrid Automata from Input-Output Traces

Xiaodong Yang, O. Beg, M. Kenigsberg, Taylor T. Johnson
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引用次数: 7

Abstract

Automata-based modeling of hybrid and cyber-physical systems (CPS) is an important formal abstraction amenable to algorithmic analysis of its dynamic behaviors, such as in verification, fault identification, and anomaly detection. However, for realistic systems, especially industrial ones, identifying hybrid automata is challenging, due in part to inferring hybrid interactions, which involves inference of both continuous behaviors, such as through classical system identification, as well as discrete behaviors, such as through automata (e.g., L*) learning. In this paper, we propose and evaluate a framework for inferring and validating models of deterministic hybrid systems with linear ordinary differential equations (ODEs) from input/output execution traces. The framework contains algorithms for the approximation of continuous dynamics in discrete modes, estimation of transition conditions, and the inference of automata mode merging. The algorithms are capable of clustering trace segments and estimating their dynamic parameters, and meanwhile, deriving guard conditions that are represented by multiple linear inequalities. Finally, the inferred model is automatically converted to the format of the original system for the validation. We demonstrate the utility of this framework by evaluating its performance in several case studies as implemented through a publicly available prototype software framework called HAutLearn and compare it with a membership-based algorithm.
基于输入-输出轨迹的仿射混合自动机辨识与验证框架
基于自动机的混合网络物理系统(CPS)建模是一种重要的形式化抽象,适用于对其动态行为进行算法分析,如验证、故障识别和异常检测。然而,对于现实系统,特别是工业系统,识别混合自动机是具有挑战性的,部分原因在于推断混合相互作用,这涉及到对连续行为的推断,例如通过经典系统识别,以及离散行为,例如通过自动机(例如L*)学习。在本文中,我们提出并评估了一个从输入/输出执行轨迹推断和验证具有线性常微分方程(ode)的确定性混合系统模型的框架。该框架包含离散模式下连续动力学的逼近算法、过渡条件的估计算法和自动机模式合并的推理算法。该算法能够对轨迹段进行聚类,估计轨迹段的动态参数,同时导出由多个线性不等式表示的保护条件。最后,将推断的模型自动转换为原始系统的格式以进行验证。我们通过一个名为HAutLearn的公开可用原型软件框架在几个案例研究中评估其性能,并将其与基于成员关系的算法进行比较,从而展示了该框架的实用性。
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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