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PRINCIPAL COMPONENT ANALYSIS BASED FAULT CLASSIFICATION

机译:基于主成分分析的故障分类

摘要

Principle Component Analysis (PCA) is used to model a process, and clustering techniques are used to group excursions representative of events based on sensor residuals of the PCA model. The PCA model is trained on normal data, and then run on historical data that includes both normal data, and data that contains events. Bad actor data for the events is identified by excursions in Q (residual error) and T2 (unusual variance) statistics from the normal model, resulting in a temporal sequence of bad actor vectors. Clusters of bad actor patterns that resemble one another are formed and then associated with events.
机译:主成分分析(PCA)用于对过程进行建模,聚类技术用于根据PCA模型的传感器残差对代表事件的偏移进行分组。在常规数据上训练PCA模型,然后在包含常规数据和包含事件的数据的历史数据上运行。事件的不良演员数据由正常模型中Q(残差)和T2(异常方差)统计数据中的偏移确定,从而导致不良演员向量的时间序列。形成彼此相似的不良演员模式群集,然后与事件关联。

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