基于决策树学习技术的多变量过程监测与故障识别模型

Shuguang He, Chenghang Xiao
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引用次数: 2

摘要

提出了一种基于决策树学习技术的多变量过程监测与故障识别模型。我们使用一个DT分类器进行过程监控,使用其他p个(p是变量的个数)DT分类器进行故障识别。为了减少训练样本的数量,提出了基于马氏距离轮廓的模型训练样本选择方法。基于二元过程的数值实验表明,该模型在不同条件下均具有较好的效果。结果还表明,样本量对模型的性能有明显的影响。相关系数对DT分类器的过程监控性能几乎没有影响,而对DT分类器的故障识别性能有明显影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multivariate process monitoring and fault identification model using decision tree learning techniques
A multivariate process monitoring and fault identification model using decision tree (DT) learning techniques is proposed. We Use one DT classifier for process monitoring and other p (p is the number of the variables) DT classifiers for fault identification. The Mahalanobis distance contours based method for selecting model training samples is proposed to decrease the number of training samples. Numerical experiments based on bivariate process show that the proposed model works well in different conditions considered. The results also show that the sample sizes have obvious effect on the performance of the model. The correlation coefficients have nearly no effects on the performance of the DT classifier for process monitoring, while have obvious effects on the performance of the DT classifiers for fault identification.
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