基于聚类的故障诊断。假设检验用什么统计检验?

Nagdev Amruthnath, Tarun Gupta
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引用次数: 9

摘要

近年来,预测性维护和基于状态的监测系统在最大限度地减少机器停机对生产和成本的影响方面取得了重大进展。预测性维护包括使用数据挖掘、统计和机器学习的概念来构建能够执行早期故障检测、诊断故障和预测故障发生时间的模型。故障诊断一直是识别机器实际故障模式的核心领域之一。在波动的环境中,如制造业,聚类技术已被证明比监督学习方法更可靠。聚类的一个基本挑战是建立一个检验假设,并为假设检验选择一个合适的统计检验。大多数统计分析使用数据的一些基本假设,而大多数现实世界的数据无法满足这些假设。本文利用聚类技术提出了故障诊断应用的检验假设,并对假设检验进行了PERMANOVA检验,以克服以下挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Diagnosis Using Clustering. What Statistical Test to use for Hypothesis Testing?
Predictive maintenance and condition-based monitoring systems have seen significant prominence in recent years to minimize the impact of machine downtime on production and its costs. Predictive maintenance involves using concepts of data mining, statistics, and machine learning to build models that are capable of performing early fault detection, diagnosing the faults and predicting the time to failure. Fault diagnosis has been one of the core areas where the actual failure mode of the machine is identified. In fluctuating environments such as manufacturing, clustering techniques have proved to be more reliable compared to supervised learning methods. One of the fundamental challenges of clustering is developing a test hypothesis and choosing an appropriate statistical test for hypothesis testing. Most statistical analyses use some underlying assumptions of the data which most real-world data is incapable of satisfying those assumptions. This paper is dedicated to overcoming the following challenge by developing a test hypothesis for fault diagnosis application using clustering technique and performing PERMANOVA test for hypothesis testing.
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