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Nonlinear quality-relevant process monitoring based on maximizing correlation neural network
by
Yan, Xuefeng
, Yan, Shifu
in
Artificial Intelligence
/ Back propagation
/ Back propagation networks
/ Computational Biology/Bioinformatics
/ Computational Science and Engineering
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Fault detection
/ Image Processing and Computer Vision
/ Maximization
/ Multilayers
/ Neural networks
/ Nonlinearity
/ Optimization
/ Original Article
/ Predictions
/ Probability and Statistics in Computer Science
/ Process variables
/ Representations
/ Subspaces
2021
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Nonlinear quality-relevant process monitoring based on maximizing correlation neural network
by
Yan, Xuefeng
, Yan, Shifu
in
Artificial Intelligence
/ Back propagation
/ Back propagation networks
/ Computational Biology/Bioinformatics
/ Computational Science and Engineering
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Fault detection
/ Image Processing and Computer Vision
/ Maximization
/ Multilayers
/ Neural networks
/ Nonlinearity
/ Optimization
/ Original Article
/ Predictions
/ Probability and Statistics in Computer Science
/ Process variables
/ Representations
/ Subspaces
2021
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Nonlinear quality-relevant process monitoring based on maximizing correlation neural network
by
Yan, Xuefeng
, Yan, Shifu
in
Artificial Intelligence
/ Back propagation
/ Back propagation networks
/ Computational Biology/Bioinformatics
/ Computational Science and Engineering
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Fault detection
/ Image Processing and Computer Vision
/ Maximization
/ Multilayers
/ Neural networks
/ Nonlinearity
/ Optimization
/ Original Article
/ Predictions
/ Probability and Statistics in Computer Science
/ Process variables
/ Representations
/ Subspaces
2021
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Nonlinear quality-relevant process monitoring based on maximizing correlation neural network
Journal Article
Nonlinear quality-relevant process monitoring based on maximizing correlation neural network
2021
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Overview
Quality-relevant fault detection aims to reveal whether quality variables are affected when a fault is detected. For current industrial processes, kernel-based methods focus on the nonlinearity within process variables, which is insufficient for obtaining nonlinearities of quality variables. Alternatively, neural network is an option for nonlinear prediction. However, these models are driven by predictive errors on samples. For quality-relevant tasks, the key is to capture the trends of quality variables. Therefore, this study proposes a new model, namely, maximizing correlation neural network (MCNN), to predict the quality-relevant information intuitively. The MCNN is trained to maximize the linear correlation between quality variables and the combinations of nonlinear representations mapped by a multilayer feedforward network. As such, fault detection can be implemented in the quality-relevant and irrelevant subspaces on the basis of the deep most correlated representations of process variables. Considering that different variables have different sensitivities to quality at various locations due to their nonlinear relationship, fault backpropagation is designed in the MCNN to isolate the faulty variables on the basis of real-time faulty information. Finally, numerical example and Tennessee Eastman process are used to evaluate the proposed method, which exhibits a competitive performance.
Publisher
Springer London,Springer Nature B.V
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