Sparse Attention-driven Quality Prediction for Production Process Optimization in Digital Twins
Yanlei Yin, Lihua Wang, Dinh Thai Hoang, Wenbo Wang, Dusit, Niyato

TL;DR
This paper presents a data-driven digital twin approach using sparse attention-based neural networks for real-time quality prediction and process optimization in production lines, demonstrating high accuracy and quality acceptance.
Contribution
It introduces a novel digital twin framework with a self-attention temporal convolutional neural network for accurate, real-time quality prediction in complex production processes.
Findings
Achieved over 98% accuracy in operating status prediction.
Attained over 96% product quality acceptance rate.
Demonstrated effective virtual-physical integration in a tobacco shredding line.
Abstract
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…
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Taxonomy
TopicsDigital Transformation in Industry · Industrial Vision Systems and Defect Detection · Manufacturing Process and Optimization
