基于机器学习的不连续和连续纤维复合工艺数据驱动优化研究综述。

IF 4.9 3区 工程技术 Q1 POLYMER SCIENCE
Polymers Pub Date : 2025-09-22 DOI:10.3390/polym17182557
Ivan Malashin, Dmitry Martysyuk, Vadim Tynchenko, Andrei Gantimurov, Vladimir Nelyub, Aleksei Borodulin
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引用次数: 0

摘要

本文综述了机器学习在纤维复合材料制造中的应用,重点介绍了机器学习在自适应过程控制、缺陷检测和实时质量保证方面的作用。首先,强调了复合材料加工中对机器学习的需求,然后回顾了数据驱动的方法,包括预测建模、传感器融合和自适应控制,这些方法解决了材料的异质性和工艺的可变性。深入分析了六个案例研究,其中包括基于xpbd的rl驱动机器人悬垂代理,基于U-Net分割的高光谱成像(HSI)用于粘附预测,以及基于cnn驱动的可变几何形状成形代理优化。在这些见解的基础上,提出了一种用于天然纤维复合材料的混合AI模型架构,集成了物理信息GNN代理,用于缺陷分割的3D spectrum - unet和用于闭环参数调整的交叉注意控制器。对合成数据的验证——包括HSI分割、图形拓扑和控制器动作权重的可视化——展示了端到端的可操作性。讨论了可解释性、领域随机化和模拟到真实的转移,并强调了诸如物理信息神经网络和数字孪生等新兴趋势。本文最后概述了未来在小数据体系和工业可扩展性方面的挑战,从而为基于ml的复合材料制造提供了一个全面的路线图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Optimization of Discontinuous and Continuous Fiber Composite Processes Using Machine Learning: A Review.

This paper surveys the application of machine learning in fiber composite manufacturing, highlighting its role in adaptive process control, defect detection, and real-time quality assurance. First, the need for ML in composite processing is highlighted, followed by a review of data-driven approaches-including predictive modeling, sensor fusion, and adaptive control-that address material heterogeneity and process variability. An in-depth analysis examines six case studies, among which are XPBD-based surrogates for RL-driven robotic draping, hyperspectral imaging (HSI) with U-Net segmentation for adhesion prediction, and CNN-driven surrogate optimization for variable-geometry forming. Building on these insights, a hybrid AI model architecture is proposed for natural-fiber composites, integrating a physics-informed GNN surrogate, a 3D Spectral-UNet for defect segmentation, and a cross-attention controller for closed-loop parameter adjustment. Validation on synthetic data-including visualizations of HSI segmentation, graph topologies, and controller action weights-demonstrates end-to-end operability. The discussion addresses interpretability, domain randomization, and sim-to-real transfer and highlights emerging trends such as physics-informed neural networks and digital twins. This paper concludes by outlining future challenges in small-data regimes and industrial scalability, thereby providing a comprehensive roadmap for ML-enabled composite manufacturing.

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来源期刊
Polymers
Polymers POLYMER SCIENCE-
CiteScore
8.00
自引率
16.00%
发文量
4697
审稿时长
1.3 months
期刊介绍: Polymers (ISSN 2073-4360) is an international, open access journal of polymer science. It publishes research papers, short communications and review papers. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. Therefore, there is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Polymers provides an interdisciplinary forum for publishing papers which advance the fields of (i) polymerization methods, (ii) theory, simulation, and modeling, (iii) understanding of new physical phenomena, (iv) advances in characterization techniques, and (v) harnessing of self-assembly and biological strategies for producing complex multifunctional structures.
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