Sparse Kernel Principal Component Analysis via Sequential Approach for Nonlinear Process Monitoring
Kernel principal component analysis (KPCA) has been widely used for nonlinear process monitoring. However, since the principal components are linear combinations of all kernel functions, traditional KPCA suffers from poor interpretation and high-computation cost. To address this problem, obtaining s...
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doaj-deddee62896541168dcf44ba56081ff52021-03-29T22:28:21ZengIEEEIEEE Access2169-35362019-01-017475504756310.1109/ACCESS.2019.29099868684841Sparse Kernel Principal Component Analysis via Sequential Approach for Nonlinear Process MonitoringLingling Guo0https://orcid.org/0000-0002-3444-9733Ping Wu1https://orcid.org/0000-0002-2729-9669Jinfeng Gao2Siwei Lou3Faculty of Mechanical Engineering and Automation, Zhejiang Sci-Tech University, Hangzhou, ChinaFaculty of Mechanical Engineering and Automation, Zhejiang Sci-Tech University, Hangzhou, ChinaFaculty of Mechanical Engineering and Automation, Zhejiang Sci-Tech University, Hangzhou, ChinaFaculty of Mechanical Engineering and Automation, Zhejiang Sci-Tech University, Hangzhou, ChinaKernel principal component analysis (KPCA) has been widely used for nonlinear process monitoring. However, since the principal components are linear combinations of all kernel functions, traditional KPCA suffers from poor interpretation and high-computation cost. To address this problem, obtaining sparse coefficients in KPCA is of paramount importance, particularly for real-time process monitoring and large-scale processes. In this paper, a new sparse kernel principal component analysis via sequential approach, named SSKPCA is proposed for nonlinear process monitoring. We first incorporate elastic net regularization into the framework of KPCA to establish a modified optimization problem. Then, a sequential approach is employed to derive the solution. Different from the existing sparse KPCA method based on elastic net regularization, the extra computations associated with the kernel matrix, such as matrix inversion and matrix square root are avoided in the optimizing procedure for solving the modified optimization problem. Therefore, the proposed SSKPCA method is more efficient in numerical implementation. The SSKPCA-based T<sup>2</sup> and squared prediction error (Q) statistics are constructed for fault detection. Furthermore, the sensitivity analysis principle is adopted for fault identification. A comparative study of Tennessee Eastman Process (TEP) is carried out to illustrate the ability and efficiency of the proposed SSKPCA-based nonlinear process monitoring method.https://ieeexplore.ieee.org/document/8684841/Process monitoringkernel-based methodsprincipal component analysissparsitysequential approach |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lingling Guo Ping Wu Jinfeng Gao Siwei Lou |
spellingShingle |
Lingling Guo Ping Wu Jinfeng Gao Siwei Lou Sparse Kernel Principal Component Analysis via Sequential Approach for Nonlinear Process Monitoring IEEE Access Process monitoring kernel-based methods principal component analysis sparsity sequential approach |
author_facet |
Lingling Guo Ping Wu Jinfeng Gao Siwei Lou |
author_sort |
Lingling Guo |
title |
Sparse Kernel Principal Component Analysis via Sequential Approach for Nonlinear Process Monitoring |
title_short |
Sparse Kernel Principal Component Analysis via Sequential Approach for Nonlinear Process Monitoring |
title_full |
Sparse Kernel Principal Component Analysis via Sequential Approach for Nonlinear Process Monitoring |
title_fullStr |
Sparse Kernel Principal Component Analysis via Sequential Approach for Nonlinear Process Monitoring |
title_full_unstemmed |
Sparse Kernel Principal Component Analysis via Sequential Approach for Nonlinear Process Monitoring |
title_sort |
sparse kernel principal component analysis via sequential approach for nonlinear process monitoring |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2019-01-01 |
description |
Kernel principal component analysis (KPCA) has been widely used for nonlinear process monitoring. However, since the principal components are linear combinations of all kernel functions, traditional KPCA suffers from poor interpretation and high-computation cost. To address this problem, obtaining sparse coefficients in KPCA is of paramount importance, particularly for real-time process monitoring and large-scale processes. In this paper, a new sparse kernel principal component analysis via sequential approach, named SSKPCA is proposed for nonlinear process monitoring. We first incorporate elastic net regularization into the framework of KPCA to establish a modified optimization problem. Then, a sequential approach is employed to derive the solution. Different from the existing sparse KPCA method based on elastic net regularization, the extra computations associated with the kernel matrix, such as matrix inversion and matrix square root are avoided in the optimizing procedure for solving the modified optimization problem. Therefore, the proposed SSKPCA method is more efficient in numerical implementation. The SSKPCA-based T<sup>2</sup> and squared prediction error (Q) statistics are constructed for fault detection. Furthermore, the sensitivity analysis principle is adopted for fault identification. A comparative study of Tennessee Eastman Process (TEP) is carried out to illustrate the ability and efficiency of the proposed SSKPCA-based nonlinear process monitoring method. |
topic |
Process monitoring kernel-based methods principal component analysis sparsity sequential approach |
url |
https://ieeexplore.ieee.org/document/8684841/ |
work_keys_str_mv |
AT linglingguo sparsekernelprincipalcomponentanalysisviasequentialapproachfornonlinearprocessmonitoring AT pingwu sparsekernelprincipalcomponentanalysisviasequentialapproachfornonlinearprocessmonitoring AT jinfenggao sparsekernelprincipalcomponentanalysisviasequentialapproachfornonlinearprocessmonitoring AT siweilou sparsekernelprincipalcomponentanalysisviasequentialapproachfornonlinearprocessmonitoring |
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1724191564493750272 |