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Condition Information Extraction Model Based on Dynamic Principal Component Analysis for On-Condition Maintenance

机译:基于动态主成分分析的状态维修状态信息提取模型

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To the vast condition information variables of high dimension obtained from condition monitoring, the condition information extraction model is studied. Only cross correlation is considered in current condition information extraction (such as principal component analysis), which is excessively broaden the hypothesis condition of the model. It doesn't agree with the fact. So the dynamic principal component analysis is applied to extract condition information for on-condition maintenance. The detailed application process of dynamic principal component analysis is studied, and auto-regression model is adopted to determine delay time. And condition information extraction model is established considering time series which is not smooth.
机译:针对状态监测中获得的大量高维状态信息变量,研究了状态信息提取模型。当前条件信息提取(例如主成分分析)中仅考虑互相关,这极大地拓宽了模型的假设条件。这与事实不符。因此,采用动态主成分分析来提取状态信息以进行状态维护。研究了动态主成分分析的详细应用过程,并采用自回归模型确定延迟时间。并考虑不平稳的时间序列,建立状态信息提取模型。

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