K-means clustering pre-analysis for fault diagnosis in an aluminium smelting process

NA Abd Majid, B. Young, M. Taylor, John J. J. Chen
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引用次数: 6

Abstract

Developing a fault detection and diagnosis system of complex processes usually involve large volumes of highly correlated data. In the complex aluminium smelting process, there are difficulties in isolating historical data into different classes of faults for developing a fault diagnostic model. This paper presents a new application of using a data mining tool, k-means clustering in order to determine precisely how data corresponds to different classes of faults in the aluminium smelting process. The results of applying the clustering technique on real data sets show that the boundary of each class of faults can be identified. This means the faulty data can be isolated accurately to enable for the development of a fault diagnostic model that can diagnose faults effectively.
基于k -均值聚类预分析的铝冶炼过程故障诊断
开发复杂过程的故障检测和诊断系统通常涉及大量高度相关的数据。在复杂的铝冶炼过程中,将历史数据分离成不同类型的故障以建立故障诊断模型存在困难。本文介绍了利用数据挖掘工具k-means聚类的一种新应用,以精确确定数据如何对应于铝冶炼过程中不同类别的故障。将聚类技术应用于实际数据集的结果表明,该类故障的边界可以被识别出来。这意味着可以准确地隔离故障数据,以便开发故障诊断模型,从而有效地诊断故障。
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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