Quality-Related Fault Detection Based on Improved Independent Component Regression for Non-Gaussian Processes

Partial least squares (PLS) and linear regression methods have been widely utilized for quality-related fault detection in industrial processes recently. Since these traditional approaches assume that process variables follow Gaussian distribution approximately, their effectiveness will be challenged when facing non-Gaussian processes. To deal with this difficulty, a new quality relevant process monitoring approach based on improved independent component regression (IICR) is presented in this article. Taking high-order statistical information into account, ICA is performed onto process data to produce independent components (ICs). In order to remove irrelevant variation orthogonal to quality variable and keep as much quality-related fault information as possible, a new quality-related independent components selection method is applied to these ICs. Then the regression relationship between filtered ICs and the product quality is built. QR decomposition for regression coefficient matrix is able to give out quality-related and quality-unrelated projectors. After the measured variable matrix is divided into quality relevant and quality irrelevant parts, novel monitoring indices are designed for fault detection. finally, applications to two simulation cases testify the effectiveness of our proposed quality-related fault detection method for non-Gaussian processes.

[1]  Donghua Zhou,et al.  Quality Relevant Data-Driven Modeling and Monitoring of Multivariate Dynamic Processes: The Dynamic T-PLS Approach , 2011, IEEE Transactions on Neural Networks.

[2]  Erkki Oja,et al.  Independent Component Analysis , 2001 .

[3]  Qiang Liu,et al.  Comprehensive monitoring of nonlinear processes based on concurrent kernel projection to latent structures , 2016, IEEE Transactions on Automation Science and Engineering.

[4]  Okyay Kaynak,et al.  Improved PLS Focused on Key-Performance-Indicator-Related Fault Diagnosis , 2015, IEEE Transactions on Industrial Electronics.

[5]  Xiangyu Kong,et al.  Quality-Related and Process-Related Fault Monitoring With Online Monitoring Dynamic Concurrent PLS , 2018, IEEE Access.

[6]  Xuefeng Yan,et al.  Quality-Driven Kernel Projection to Latent Structure Model for Nonlinear Process Monitoring , 2019, IEEE Access.

[7]  Hao Luo,et al.  Quality-related fault detection using linear and nonlinear principal component regression , 2016, J. Frankl. Inst..

[8]  Donghua Zhou,et al.  Geometric properties of partial least squares for process monitoring , 2010, Autom..

[9]  Xuefeng Yan,et al.  Relevant and independent multi-block approach for plant-wide process and quality-related monitoring based on KPCA and SVDD. , 2018, ISA transactions.

[10]  Hongbo Shi,et al.  Distributed Supervised Fault Detection and Diagnosis for a Non-Gaussian Process , 2019 .

[11]  Bo Zhao,et al.  Quality Weakly Related Fault Detection Based on Weighted Dual-Step Feature Extraction , 2019, IEEE Access.

[12]  Zhiqiang Ge,et al.  Review on data-driven modeling and monitoring for plant-wide industrial processes , 2017 .

[13]  Wei Sun,et al.  A Nonlinear Process Monitoring Approach With Locally Weighted Learning of Available Data , 2017, IEEE Transactions on Industrial Electronics.

[14]  Guang Wang,et al.  Quality-Related Fault Detection and Diagnosis Based on Total Principal Component Regression Model , 2018, IEEE Access.

[15]  H. Shi,et al.  Parallel quality-related dynamic principal component regression method for chemical process monitoring , 2019, Journal of Process Control.

[16]  Guang Wang,et al.  Quality-Related Fault Detection Approach Based on Orthogonal Signal Correction and Modified PLS , 2015, IEEE Transactions on Industrial Informatics.

[17]  Yaguo Lei,et al.  A data-driven multiplicative fault diagnosis approach for automation processes. , 2014, ISA transactions.

[18]  Si-Zhao Joe Qin,et al.  Survey on data-driven industrial process monitoring and diagnosis , 2012, Annu. Rev. Control..

[19]  Jing Wang,et al.  Quality-Relevant Fault Monitoring Based on Locally Linear Embedding Orthogonal Projection to Latent Structure , 2019 .

[20]  E. F. Vogel,et al.  A plant-wide industrial process control problem , 1993 .

[21]  Guang Wang,et al.  A Kernel Least Squares Based Approach for Nonlinear Quality-Related Fault Detection , 2017, IEEE Transactions on Industrial Electronics.

[22]  Huijun Gao,et al.  Data-Driven Process Monitoring Based on Modified Orthogonal Projections to Latent Structures , 2016, IEEE Transactions on Control Systems Technology.

[23]  Han Yu,et al.  A Quality-Related Fault Detection Approach Based on Dynamic Least Squares for Process Monitoring , 2016, IEEE Transactions on Industrial Electronics.

[24]  S. Joe Qin,et al.  Quality‐relevant and process‐relevant fault monitoring with concurrent projection to latent structures , 2013 .

[25]  Hongbo Shi,et al.  Fault Detection and Classification Using Quality-Supervised Double-Layer Method , 2018, IEEE Transactions on Industrial Electronics.

[26]  Biao Huang,et al.  Review and Perspectives of Data-Driven Distributed Monitoring for Industrial Plant-Wide Processes , 2019, Industrial & Engineering Chemistry Research.

[27]  Jian Hou,et al.  An Improved Principal Component Regression for Quality-Related Process Monitoring of Industrial Control Systems , 2017, IEEE Access.

[28]  Erkki Oja,et al.  Independent component analysis: algorithms and applications , 2000, Neural Networks.

[29]  Yang Tao,et al.  Performance-Indicator-Oriented Concurrent Subspace Process Monitoring Method , 2019, IEEE Transactions on Industrial Electronics.

[30]  Donghua Zhou,et al.  Total projection to latent structures for process monitoring , 2009 .

[31]  Kaixiang Peng,et al.  A Novel Scheme for Key Performance Indicator Prediction and Diagnosis With Application to an Industrial Hot Strip Mill , 2013, IEEE Transactions on Industrial Informatics.

[32]  Xiangyu Kong,et al.  Quality-Relevant Data-Driven Process Monitoring Based on Orthogonal Signal Correction and Recursive Modified PLS , 2019, IEEE Access.

[33]  Kaixiang Peng,et al.  A comparison and evaluation of key performance indicator-based multivariate statistics process monitoring approaches ☆ , 2015 .