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Non-stationary discrete convolution kernel for multimodal process monitoring

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Title: Non-stationary discrete convolution kernel for multimodal process monitoring
Authors: Tan, R
Ottewill, JR
Thornhill, NF
Item Type: Journal Article
Abstract: Data-driven process monitoring has benefited from the development and application of kernel transformations, especially when various types of nonlinearity exist in the data. However, when dealing with the multimodality behavior which is frequently observed in process operations, the most widely used Radial Basis Function kernel has limitations in describing process data collected from multiple normal operating modes. In this paper, we highlight this limitation via a synthesized example. In order to account for the multimodality behavior and improve fault detection performance accordingly, we propose a novel Non-stationary Discrete Convolution kernel, which derives from the convolution kernel structure, as an alternative to the RBF kernel. By assuming the training samples to be the support of the discrete convolution, this new kernel can properly address these training samples from different operating modes with diverse properties, and therefore can improve the data description and fault detection performance. Its performance is compared with RBF kernels under a standard kernel PCA framework and with other methods proposed for multimode process monitoring via numerical examples. Moreover, a benchmark data set collected from a pilot-scale multiphase flow facility is used to demonstrate the advantages of the new kernel when applied to an experimental data set.
Issue Date: 1-Sep-2020
Date of Acceptance: 25-Sep-2019
URI: http://hdl.handle.net/10044/1/74259
DOI: 10.1109/TNNLS.2019.2945847
ISSN: 1045-9227
Publisher: Institute of Electrical and Electronics Engineers
Start Page: 3670
End Page: 3681
Journal / Book Title: IEEE Transactions on Neural Networks and Learning Systems
Volume: 31
Issue: 9
Copyright Statement: © 2020 The Author(s). This article is available under a Creative Commons Attribution Licence 4.0 (https://creativecommons.org/licenses/by/4.0/)
Sponsor/Funder: Commission of the European Communities
ABB Switzerland Ltd.
ABB Switzerland Ltd.
Funder's Grant Number: 675215
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Keywords: Process monitoring, fault detection, kernel-based learning methods, non-stationary kernels, multivariate statistics
Artificial Intelligence & Image Processing
Publication Status: Published
Article Number: TNNLS-2018-P-9640
Online Publication Date: 2019-11-11
Appears in Collections:Chemical Engineering
Faculty of Engineering



This item is licensed under a Creative Commons License Creative Commons