4.7 Article

Online cement clinker quality monitoring: A soft sensor model based on multivariate time series analysis and CNN

Journal

ISA TRANSACTIONS
Volume 117, Issue -, Pages 180-195

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.isatra.2021.01.058

Keywords

Online quality monitoring; Free calcium oxide content; Soft sensor; Multivariate time series; Neural network

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A soft sensor model based on multivariate time series analysis and convolutional neural network (MVTS-CNN) is proposed for online monitoring of free calcium oxide content in cement clinker production. By analyzing coupling relationship, time-varying delay, and extracting multivariate time series features, the MVTS-CNN model shows higher accuracy, better generalization ability, and superior robustness compared to traditional CNN, support vector machines (SVM), and long-short term memory networks (LSTM).
The content of free calcium oxide (f-CaO) in cement clinker is an important index for cement quality. Aiming at the characteristics of strong coupling, time-varying delay and highly non-linearity in cement clinker production, a soft sensor model based on multivariate time series analysis and convolutional neural network (MVTS-CNN) is proposed for the online f-CaO content monitoring. Based on the process industry characteristics, the MVTS-CNN modeling involves the detailed analysis of coupling relationship and time-varying delay in cement production and the application of neural network in multivariate time-series feature extraction. The main researches and contributions are fourfold: First, the strong coupling in the production system is further analyzed, and the proposed model is focused on the data coupling between specific processes, not the control coupling. Second, a multivariate time series analysis method is designed to select the time series that may have direct impacts on the f-CaO content in different production conditions, which is founded on the information on time delay range and longest active duration. Third, a multivariate time series feature extraction method is designed and adopted in the MVTS-CNN model to extract the multivariate time series features, such as active duration difference features, coupling features, nonlinear features and key time series features. Fourth, a new timing matching method, which is combined the rough timing matching of multivariate time series and the detailed timing matching of key features, is proposed to deal with the time-varying delay in various production conditions. Compared with traditional CNN, support vector machines (SVM) and long-short term memory networks (LSTM), the results demonstrate that the MVTS-CNN model has higher accuracy, better generalization ability and superior robustness. (C) 2021 ISA. Published by Elsevier Ltd. All rights reserved.

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