状态估计、异常检测和预测的多变量替代方法

F. Szidarovszky, D. Goodman, Richard Thompson, H. Manhaeve
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引用次数: 0

摘要

为了确保部件、设备、子系统和系统的运行就绪,并确保工作顺利完成,需要适当的监测、检查和预防性维护、修理和更换战略。这需要合适的传感器和测量方法,用于持续监测关键操作参数,旨在发现异常情况并评估任何关键部件的退化程度、健康状况和剩余使用寿命。为此,多变量方法是分析多个数据序列的重要工具,提供了将实际测量数据与代表健康系统的数据进行比较的手段,并做出合格的评估,通常基于测量实际系统与健康系统之间的距离。多变量状态估计技术(MSET)采用最小二乘方法,自关联核回归(AAKR)方法采用非参数核估计方法,而马氏距离的使用是基于不同测量参数的协方差矩阵。这些方法都是基于特殊选择的距离定义。本文介绍了这些方法的几种扩展和变体,并对其优缺点进行了重点分析和检验。还概述了可能的应用领域。
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Alternative Multivariate Methods for State Estimation, Anomaly Detection, and Prognostics
To secure operational readiness of components, equipment, subsystems and systems and to assure successful job completion, appropriate monitoring, inspection and preventive maintenance, repair and replacement strategies are needed. Such requires suitable sensors and measurement approaches serving continuous monitoring of key operational parameters, aiming at discovering anomalies and assessing degradation levels, State of Health (SoH) and Remaining Useful Life (RUL) of any critical component involved. Serving this purpose, multivariate methods are important tools to analyzing multiple data sequences, providing means to compare actual measurement data against data representing a healthy system and making qualified assessments, typically based on measuring the distance between the actual system and the healthy system. The Multivariate State Estimation Technique (MSET) uses the least squares approach, the Auto-Associative Kernel Regression (AAKR) method uses the nonparametric Kernel estimation procedure, while the usage of the Mahalanobis distance is based on the covariance matrix of the different measured parameters. These methods are all based on specially selected distance definitions. In this paper, several extensions and variants of these procedures, yielding alternative measures, are introduced, analyzed and examined with focus on their advantages and disadvantages. Possible application areas are also outlined.
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