Maintaining model efficiency, avoiding bias and reducing input parameter volume in compressor fault classification

Ann Smith, F. Gu, A. Ball
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引用次数: 2

Abstract

With the exponential growth in data collection and storage and the necessity for timely prognostic health monitoring of industrial processes traditional methods of data analysis are becoming redundant. Big data sets and huge volumes of inputs give rise to equally massive computational requirements. In this paper the differences in input parameter selection using a subset of the original variables and using data reduction techniques are compared. Each selection procedure being illustrated by both statistical methods and machine learning techniques. It is shown that the subsequent classification models are highly comparable. Finally the merits of a combined multivariate statistical and wavelet decomposition approach is considered. Techniques are applied to output signals from an experimental compressor rig.
在压缩机故障分类中,保持模型效率,避免偏差,减少输入参数量
随着数据收集和存储的指数级增长以及对工业过程进行及时预测健康监测的必要性,传统的数据分析方法变得多余。大数据集和海量输入产生了同样庞大的计算需求。本文比较了使用原始变量子集和使用数据约简技术在输入参数选择方面的差异。每个选择过程都用统计方法和机器学习技术来说明。结果表明,后续的分类模型具有很强的可比性。最后讨论了多元统计与小波分解相结合的方法的优点。将技术应用于压缩试验台的输出信号。
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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