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Interpretable logic tree analysis: A data-driven fault tree methodology for causality analysis

机译:可解释的逻辑树分析:因果关系分析的数据驱动故障树方法

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This paper proposes an effective hybrid-based methodology, called interpretable logic tree analysis (ILTA), which characterizes and quantifies event causality occurring in engineering systems with the minimum involvement of human experts. It integrates two concepts: knowledge discovery in database (KDD) and fault tree analysis (FTA). The KDD extracts the root-causes in the form of a set of interpretable (meaningful) patterns and then is exploited to automatically construct a logic tree. Only the feasible solutions consisting of non-redundant patterns that cover the maximum number of observations in the dataset are selected using a burn-and-build algorithm. These solutions are employed first to visualize the discovered knowledge under the interpretable logic tree and second, to estimate the probability of an event given the occurrence of its root-causes. An actuator system dataset is used to illustrate and validate the proposed methodology. Moreover, the ILTA methodology allows the tuning of the system states based on Bayesian control rules that characterize the nature of the discovered root-causes. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文提出了一种有效的基于混合的方法,称为可解释逻辑树分析(ILTA),该方法可对工程系统中发生的事件因果关系进行特征化和量化,而无需人工干预。它集成了两个概念:数据库中的知识发现(KDD)和故障树分析(FTA)。 KDD以一组可解释的(有意义的)模式的形式提取根本原因,然后被利用来自动构建逻辑树。使用刻录和构建算法仅选择由覆盖数据集中最大观察数的非冗余模式组成的可行解决方案。这些解决方案首先用于在可解释的逻辑树下可视化发现的知识,其次用于在给定事件根源的情况下估计事件的概率。执行器系统数据集用于说明和验证所提出的方法。此外,ILTA方法允许基于表征发现的根本原因的贝叶斯控制规则来调整系统状态。 (C)2019 Elsevier Ltd.保留所有权利。

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