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ChieF: A Change Pattern based Interpretable Failure Analyzer

机译:首席:基于改变模式的可解释失败分析仪

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Discovering the underlying dynamics leading up to an industrial asset failure is an important problem to be solved for successful development of Predictive Maintenance techniques. Existing work has largely focused on building complex ML/AI models for developing Predictive Maintenance solution patterns, but has largely avoided developing methods to explain the underlying failure dynamics. In this paper, we use an old but significantly improved change-pattern based technique to analyze IoT sensor data and failure information to generate useful and interpretable failure-centric insight. We discuss a solution pattern that we call ChieF, which when applied on multi-variate time series datasets, discover the leading failure indicators, generate associative patterns among multiple features, and output temporal dynamics of changes. Experimental analysis of ChieF on four datasets uncovers insights that may be valuable for predictive maintenance.
机译:发现导致工业资产失败的潜在动态是为了成功开发预测性维护技术的重要问题。现有工作主要集中在建立复杂的ML / AI模型上,用于开发预测性维护解决方案模式,但在很大程度上避免了开发方法来解释潜在的失败动态。在本文中,我们使用旧但显着改进的基于变化模式的技术来分析IoT传感器数据和故障信息,以产生有用和可解释的无故障中心的洞察力。我们讨论了一个解决方案模式,我们呼叫主任,当应用于多变量时间序列数据集时,发现前面的失败指示灯,在多个功能之间生成关联模式,并输出变化的时间动态。四个数据集的院长实验分析揭示了可能对预测性维护有价值的见解。

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