偏最小二乘回归
潜变量
数据挖掘
故障检测与隔离
计算机科学
机器学习
异常检测
回归分析
人工智能
水准点(测量)
回归
数据建模
数据质量
工程类
数学
统计
公制(单位)
地理
执行机构
数据库
运营管理
大地测量学
作者
Qiang Liu,Chao Yang,S. Joe Qin
标识
DOI:10.1109/tcst.2024.3350364
摘要
Supervised latent variable regression methods such as partial least squares (PLS) and dynamic PLS have found wide applications in data analytics, quality prediction, and fault monitoring in various industries. In this article, we tackle the unbalanced data problem of sparse quality measurement and abundant process data in process control systems to make use of all data samples for modeling. A novel semi-supervised dynamic latent variable regression (SemiDLVR) method is proposed for quality prediction and quality-relevant fault monitoring. The proposed SemiDLVR method integrates Laplacian manifold regularization with dynamic regularized latent variable regression (DrLVR) to form a semi-supervised framework to efficiently model unlabeled data. A unified objective that combines DrLVR and the Laplacian matrix is proposed and the solution is provided. Statistical monitoring indices are, thereafter, defined for quality-relevant fault monitoring in the semi-supervised framework. Results from experimental studies on a numerical simulation, an industrial sulfur recovery unit (SRU), and the Tennessee Eastman (TE) process benchmark are presented to demonstrate the effectiveness of the proposed method.
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