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A hybrid spatial-temporal deep learning prediction model of industrial methanol-to-olefins process
by
Liu, Duiping
, Zhou, Jibin
, Ye, Mao
, Liu, Zhongmin
, Li, Xue
, Wang, Feng
, Zhang, Tao
in
Alkenes
/ Artificial neural networks
/ Chemistry
/ Chemistry and Materials Science
/ Deep learning
/ graph convolutional network
/ Industrial Chemistry/Chemical Engineering
/ Machine learning
/ Methanol
/ methanol-to-olefins
/ Nanotechnology
/ Neural networks
/ Outstanding young chemical engineers and the future chemical engineers
/ Prediction models
/ Process control
/ Process controls
/ Process variables
/ process variables prediction
/ Research Article
/ self-attention mechanism
/ spatial-temporal
2024
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A hybrid spatial-temporal deep learning prediction model of industrial methanol-to-olefins process
by
Liu, Duiping
, Zhou, Jibin
, Ye, Mao
, Liu, Zhongmin
, Li, Xue
, Wang, Feng
, Zhang, Tao
in
Alkenes
/ Artificial neural networks
/ Chemistry
/ Chemistry and Materials Science
/ Deep learning
/ graph convolutional network
/ Industrial Chemistry/Chemical Engineering
/ Machine learning
/ Methanol
/ methanol-to-olefins
/ Nanotechnology
/ Neural networks
/ Outstanding young chemical engineers and the future chemical engineers
/ Prediction models
/ Process control
/ Process controls
/ Process variables
/ process variables prediction
/ Research Article
/ self-attention mechanism
/ spatial-temporal
2024
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Do you wish to request the book?
A hybrid spatial-temporal deep learning prediction model of industrial methanol-to-olefins process
by
Liu, Duiping
, Zhou, Jibin
, Ye, Mao
, Liu, Zhongmin
, Li, Xue
, Wang, Feng
, Zhang, Tao
in
Alkenes
/ Artificial neural networks
/ Chemistry
/ Chemistry and Materials Science
/ Deep learning
/ graph convolutional network
/ Industrial Chemistry/Chemical Engineering
/ Machine learning
/ Methanol
/ methanol-to-olefins
/ Nanotechnology
/ Neural networks
/ Outstanding young chemical engineers and the future chemical engineers
/ Prediction models
/ Process control
/ Process controls
/ Process variables
/ process variables prediction
/ Research Article
/ self-attention mechanism
/ spatial-temporal
2024
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A hybrid spatial-temporal deep learning prediction model of industrial methanol-to-olefins process
Journal Article
A hybrid spatial-temporal deep learning prediction model of industrial methanol-to-olefins process
2024
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Overview
Methanol-to-olefins, as a promising non-oil pathway for the synthesis of light olefins, has been successfully industrialized. The accurate prediction of process variables can yield significant benefits for advanced process control and optimization. The challenge of this task is underscored by the failure of traditional methods in capturing the complex characteristics of industrial processes, such as high nonlinearities, dynamics, and data distribution shift caused by diverse operating conditions. In this paper, we propose a novel hybrid spatial-temporal deep learning prediction model to address these issues. Firstly, a unique data normalization technique called reversible instance normalization is employed to solve the problem of different data distributions. Subsequently, convolutional neural network integrated with the self-attention mechanism are utilized to extract the temporal patterns. Meanwhile, a multi-graph convolutional network is leveraged to model the spatial interactions. Afterward, the extracted temporal and spatial features are fused as input into a fully connected neural network to complete the prediction. Finally, the outputs are denormalized to obtain the ultimate results. The monitoring results of the dynamic trends of process variables in an actual industrial methanol-to-olefins process demonstrate that our model not only achieves superior prediction performance but also can reveal complex spatial-temporal relationships using the learned attention matrices and adjacency matrices, making the model more interpretable. Lastly, this model is deployed onto an end-to-end Industrial Internet Platform, which achieves effective practical results.
Publisher
Higher Education Press,Springer Nature B.V
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