Digital twin-driven intelligent spinning technique for curved surface parts

Pengfei Gao, Xinshun Li, Xinggang Yan, Hongwei Li, Mei Zhan

科研成果: 期刊稿件文章同行评审

摘要

Spinning is an advanced forming technology widely used in manufacturing of curved surface parts in petrochemical, aviation and aerospace industries. Since the spinning is a local loading and incremental forming process, the workpiece forming status and forming rules are both complex and time-varying, which pose great challenges to the precisely control of spinning process. To address this, a novel digital twin-driven (DT-driven) intelligent spinning technique was proposed. It develops a non-contact measuring device to monitor the workpiece forming status. Utilizing both real-time and historical monitoring data, a twin model of forming status evolution is constructed using deep neural networks. In addition, an efficient multi-objective optimization method is established to achieve online dynamic optimization of spinning process. By integrating the above technologies, the developed DT-driven intelligent spinning technique can well capture the real-time workpiece forming status and time-varying forming rules, moreover, intelligently and gradually design the optimal process aligned with the time-varying forming rules throughout the spinning process. This changes the traditional trail-and-error spinning method, which predetermines the entire process by characterizing it as a linear time-invariant process, thus effectively enhancing forming quality, forming efficiency, and environmental sustainability.

源语言英语
文章编号100848
期刊Journal of Industrial Information Integration
45
DOI
出版状态已出版 - 5月 2025

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