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Main Authors: Yin, Yanlei, Wang, Lihua, Hoang, Dinh Thai, Wang, Wenbo, Niyato, Dusit
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.11895
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author Yin, Yanlei
Wang, Lihua
Hoang, Dinh Thai
Wang, Wenbo
Niyato, Dusit
author_facet Yin, Yanlei
Wang, Lihua
Hoang, Dinh Thai
Wang, Wenbo
Niyato, Dusit
contents In the process industry, long-term and efficient optimization of production lines requires real-time monitoring and analysis of operational states to fine-tune production line parameters. However, complexity in operational logic and intricate coupling of production process parameters make it difficult to develop an accurate mathematical model for the entire process, thus hindering the deployment of efficient optimization mechanisms. In view of these difficulties, we propose to deploy a digital twin of the production line by encoding its operational logic in a data-driven approach. By iteratively mapping the real-world data reflecting equipment operation status and product quality indicators in the digital twin, we adopt a quality prediction model for production process based on self-attention-enabled temporal convolutional neural networks. This model enables the data-driven state evolution of the digital twin. The digital twin takes a role of aggregating the information of actual operating conditions and the results of quality-sensitive analysis, which facilitates the optimization of process production with virtual-reality evolution. Leveraging the digital twin as an information-flow carrier, we extract temporal features from key process indicators and establish a production process quality prediction model based on the proposed deep neural network. Our operation experiments on a specific tobacco shredding line demonstrate that the proposed digital twin-based production process optimization method fosters seamless integration between virtual and real production lines. This integration achieves an average operating status prediction accuracy of over 98% and a product quality acceptance rate of over 96%.
format Preprint
id arxiv_https___arxiv_org_abs_2405_11895
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Sparse Attention-driven Quality Prediction for Production Process Optimization in Digital Twins
Yin, Yanlei
Wang, Lihua
Hoang, Dinh Thai
Wang, Wenbo
Niyato, Dusit
Machine Learning
Systems and Control
In the process industry, long-term and efficient optimization of production lines requires real-time monitoring and analysis of operational states to fine-tune production line parameters. However, complexity in operational logic and intricate coupling of production process parameters make it difficult to develop an accurate mathematical model for the entire process, thus hindering the deployment of efficient optimization mechanisms. In view of these difficulties, we propose to deploy a digital twin of the production line by encoding its operational logic in a data-driven approach. By iteratively mapping the real-world data reflecting equipment operation status and product quality indicators in the digital twin, we adopt a quality prediction model for production process based on self-attention-enabled temporal convolutional neural networks. This model enables the data-driven state evolution of the digital twin. The digital twin takes a role of aggregating the information of actual operating conditions and the results of quality-sensitive analysis, which facilitates the optimization of process production with virtual-reality evolution. Leveraging the digital twin as an information-flow carrier, we extract temporal features from key process indicators and establish a production process quality prediction model based on the proposed deep neural network. Our operation experiments on a specific tobacco shredding line demonstrate that the proposed digital twin-based production process optimization method fosters seamless integration between virtual and real production lines. This integration achieves an average operating status prediction accuracy of over 98% and a product quality acceptance rate of over 96%.
title Sparse Attention-driven Quality Prediction for Production Process Optimization in Digital Twins
topic Machine Learning
Systems and Control
url https://arxiv.org/abs/2405.11895