A comparison between robust design and digital twin approaches for Non-Crimp fabric (NCF) forming

IF 8.1 2区 材料科学 Q1 ENGINEERING, MANUFACTURING Composites Part A: Applied Science and Manufacturing Pub Date : 2025-03-21 DOI:10.1016/j.compositesa.2025.108864
Siyuan Chen , Adam Thompson , Tim Dodwell , Stephen Hallett , Jonathan Belnoue
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Abstract

There is growing interest in adopting digital twin systems within the field of composites manufacturing. However, given the current limitations in measuring variability and accurately simulating complex defects, it remains questionable as to whether the high costs of building a digital twin are justified. In this paper, a case study is conducted on simulation-driven optimisation of the forming of non-crimp fabric (NCF). A robust design strategy (a one-time optimisation that is robust to variabilities of the material and process) is compared with a digital twin approach (active control is conducted based on real-time optimisation, accounting for in-situ measurements of variabilities). An optimisation method based on a Gaussian process (GP) surrogate model, active learning, dimension reduction and gradient boosting is developed. This method enables the optimisation of complex forming processes with a very small dataset, built from large simulation models. Both strategies significantly reduce the wrinkling level and improve process robustness.
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无卷曲织物(NCF)成型的鲁棒设计和数字孪生方法的比较
在复合材料制造领域,采用数字孪生系统的兴趣越来越大。然而,考虑到目前在测量可变性和精确模拟复杂缺陷方面的限制,构建数字孪生体的高成本是否合理仍然值得怀疑。本文对无卷曲织物(NCF)成形过程的仿真驱动优化进行了实例研究。将稳健的设计策略(对材料和工艺的可变性具有鲁棒性的一次性优化)与数字孪生方法(基于实时优化进行主动控制,考虑到可变性的现场测量)进行比较。提出了一种基于高斯过程(GP)代理模型、主动学习、降维和梯度增强的优化方法。这种方法可以用非常小的数据集来优化复杂的成形过程,这些数据集是由大型模拟模型构建的。这两种策略都能显著降低起皱水平,提高工艺稳健性。
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来源期刊
Composites Part A: Applied Science and Manufacturing
Composites Part A: Applied Science and Manufacturing 工程技术-材料科学:复合
CiteScore
15.20
自引率
5.70%
发文量
492
审稿时长
30 days
期刊介绍: Composites Part A: Applied Science and Manufacturing is a comprehensive journal that publishes original research papers, review articles, case studies, short communications, and letters covering various aspects of composite materials science and technology. This includes fibrous and particulate reinforcements in polymeric, metallic, and ceramic matrices, as well as 'natural' composites like wood and biological materials. The journal addresses topics such as properties, design, and manufacture of reinforcing fibers and particles, novel architectures and concepts, multifunctional composites, advancements in fabrication and processing, manufacturing science, process modeling, experimental mechanics, microstructural characterization, interfaces, prediction and measurement of mechanical, physical, and chemical behavior, and performance in service. Additionally, articles on economic and commercial aspects, design, and case studies are welcomed. All submissions undergo rigorous peer review to ensure they contribute significantly and innovatively, maintaining high standards for content and presentation. The editorial team aims to expedite the review process for prompt publication.
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