学习型网络物理系统的因果修复

Pengyuan Lu, I. Ruchkin, Matthew Cleaveland, O. Sokolsky, Insup Lee
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引用次数: 1

摘要

实际因果关系模型利用领域知识对导致结果的事件产生令人信服的诊断。应用这些模型来诊断和修复具有学习功能组件(LEC)的网络物理系统(CPS)中的运行时属性违规是有希望的。然而,考虑到lec的高度多样性和复杂性,将领域知识(例如CPS动力学)编码到可扩展的实际因果关系模型中,从而产生有用的修复建议是具有挑战性的。在本文中,我们将重点放在LECs的输入/输出行为的因果诊断上。具体来说,我们的目标是确定LEC的哪个I/O行为子集是导致属性违反的实际原因。一个重要的副产品是LEC的反事实版本,它通过修复已识别的有问题的行为来修复运行时属性。基于这一见解,我们设计了一个两步诊断流程:(1)构建反映属性结果对组件I/O行为依赖性的Halpern-Pearl因果关系模型;(2)对模型进行实际原因搜索和相应修复。我们证明我们的管道有以下保证:如果发现实际原因,系统保证修复;否则,我们有很高的概率相信所分析的LEC没有造成财产侵犯。我们证明了我们的方法在标准OpenAI Gym基准上成功地修复了学习控制器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Causal Repair of Learning-Enabled Cyber-Physical Systems
Models of actual causality leverage domain knowledge to generate convincing diagnoses of events that caused an outcome. It is promising to apply these models to diagnose and repair run-time property violations in cyber-physical systems (CPS) with learning-enabled components (LEC). However, given the high diversity and complexity of LECs, it is challenging to encode domain knowledge (e.g., the CPS dynamics) in a scalable actual causality model that could generate useful repair suggestions. In this paper, we focus causal diagnosis on the input/output behaviors of LECs. Specifically, we aim to identify which subset of I/O behaviors of the LEC is an actual cause for a property violation. An important by-product is a counterfactual version of the LEC that repairs the run-time property by fixing the identified problematic behaviors. Based on this insights, we design a two-step diagnostic pipeline: (1) construct and Halpern-Pearl causality model that reflects the dependency of property outcome on the component’s I/O behaviors, and (2) perform a search for an actual cause and corresponding repair on the model. We prove that our pipeline has the following guarantee: if an actual cause is found, the system is guaranteed to be repaired; otherwise, we have high probabilistic confidence that the LEC under analysis did not cause the property violation. We demonstrate that our approach successfully repairs learned controllers on a standard OpenAI Gym benchmark.
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