压力硬化代用模型中的迁移学习方法:从模拟到现实世界

IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Journal of Manufacturing Systems Pub Date : 2024-09-28 DOI:10.1016/j.jmsy.2024.09.012
Albert Abio , Francesc Bonada , Eduard Garcia-Llamas , Marc Grané , Nuria Nievas , Danillo Lange , Jaume Pujante , Oriol Pujol
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引用次数: 0

摘要

引入数据驱动的代用模型是获得制造系统表征的一个强大解决方案,它克服了有限元模拟在复杂性和时间方面的限制。通常,在实际制造工厂中获取数据是一项非常昂贵的任务,因此需要使用有限元模拟来训练基于机器学习的代用模型。然而,有限元模型的近似值可能会导致与实际情况的偏差,而这种偏差会转移到代用模型上。本文提出了一种方法,将基于人工智能的代用模型和迁移学习结合起来,以低保真有限元模型为源,创建真实制造过程的可信且高效的代用模型。特别是,该方法已在一项涉及试验工厂硼钢板压制硬化的研究中得到了验证。利用低保真 ABAQUS 仿真训练了两个深度神经网络,形成了一个可预测工艺关键输出的基准替代模型。利用该过程的少量实验真实数据进行迁移学习,使原始基线代用模型适应真实环境,结果显示效果显著,超越了其他可变保真建模方法。最终的迁移学习代用模型只需少量训练,就能快速、准确地预测真实过程中最相关的输出结果,而且完全消除了校准阶段或对高保真仿真模型的需求。此外,所介绍的方法还可用于创建高效的虚拟制造环境,从而开发数字孪生或强化学习代理来优化流程。
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A transfer learning method in press hardening surrogate modeling: From simulations to real-world
The introduction of data-driven surrogate models is a powerful solution to obtain a representation of a manufacturing system, overcoming the limitations of finite element simulations regarding complexity and time. Usually, data acquisition in real manufacturing plants is a very expensive task, and finite element simulations are employed to train Machine Learning-based surrogate models. However, the approximations of the finite element models may induce a deviation from reality that is transferred to the surrogate models. This paper proposes a methodology to combine AI-based surrogate modeling and transfer learning to create a trustworthy and efficient surrogate model of a real manufacturing process, using a low-fidelity finite element model as a source. In particular, the methodology has been demonstrated in a study involving press hardening of boron steel sheet in a pilot plant. Two deep neural networks have been trained with low-fidelity ABAQUS simulations, forming a baseline surrogate model that predicts the key outputs of the process. The use of few experimental real data of the process to perform transfer learning and adapt the original baseline surrogate model to the real environment shows remarkable results, surpassing other Variable-Fidelity Modeling approaches. The final transfer learning surrogate model provides fast and good predictions of the most relevant outputs of the real process with little training, and it removes completely the calibration stage or the need of a high-fidelity simulation model. Additionally, the presented methodology can be a trigger for creating efficient virtual manufacturing environments that can enable developing digital twins or reinforcement learning agents for process optimization.
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来源期刊
Journal of Manufacturing Systems
Journal of Manufacturing Systems 工程技术-工程:工业
CiteScore
23.30
自引率
13.20%
发文量
216
审稿时长
25 days
期刊介绍: The Journal of Manufacturing Systems is dedicated to showcasing cutting-edge fundamental and applied research in manufacturing at the systems level. Encompassing products, equipment, people, information, control, and support functions, manufacturing systems play a pivotal role in the economical and competitive development, production, delivery, and total lifecycle of products, meeting market and societal needs. With a commitment to publishing archival scholarly literature, the journal strives to advance the state of the art in manufacturing systems and foster innovation in crafting efficient, robust, and sustainable manufacturing systems. The focus extends from equipment-level considerations to the broader scope of the extended enterprise. The Journal welcomes research addressing challenges across various scales, including nano, micro, and macro-scale manufacturing, and spanning diverse sectors such as aerospace, automotive, energy, and medical device manufacturing.
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