Data analysis and exploration for a fault detection, diagnosis, and prognosis system

P. Kulczycki
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引用次数: 1

Abstract

The subject of this paper is a statistical fault detection system with the scope of detection, diagnosis and prognosis. It was designed using the fundamental procedures of data analysis and exploration: recognizing atypical elements (outliers), clustering, and classification, based on the nonparametric methodology of kernel estimators. Employing a homogenous mathematical apparatus for all three of the above tasks significantly facilitates practical implementation. The formula for the proposed concept is universal in character, and the investigated system can be applied in a wide range of tasks, particularly in engineering and management. Experimental tests showed its effectiveness in identifying abrupt as well as slowly progressing anomalies. For the latter case in particular, the still rarely-used function for prediction of faults prevailed.
故障检测、诊断和预测系统的数据分析和探索
本文的课题是一个集检测、诊断和预测为一体的统计故障检测系统。它的设计使用数据分析和探索的基本程序:识别非典型元素(异常值),聚类和分类,基于核估计的非参数方法。在上述三个任务中使用同质的数学装置大大促进了实际的实现。所提出的概念的公式具有普遍性,所研究的系统可以应用于广泛的任务,特别是在工程和管理中。实验验证了该方法在识别突发性异常和缓慢进展异常方面的有效性。特别是在后一种情况下,仍然很少使用的预测故障的函数占了上风。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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