A Review of Machine Learning for Progressive Damage Modelling of Fiber-Reinforced Composites

IF 2.3 4区 材料科学 Q3 MATERIALS SCIENCE, COMPOSITES
J. Y. Y. Loh, K. M. Yeoh, K. Raju, V. N. H. Pham, V. B. C. Tan, T. E. Tay
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Abstract

The accurate prediction of failure of load-bearing fiber-reinforced structures remains a challenge due to the complex interacting failure modes at multiple length scales. In recent years however, there has been considerable progress, in part due to the increasing sophistication of advanced numerical modelling technology and computational power. Advanced discrete crack and cohesive zone models enable interrogation of failure modes and patterns at high resolution but also come with high computational cost, thus limiting their application to coupons or small-sized components. Adaptively combining high-fidelity with lower fidelity techniques such as smeared crack modelling has been shown to reduce computational costs without sacrificing accuracy. On the other hand, machine learning (ML) technology has also seen an increasing contribution towards failure prediction in composites. Leveraging on large sets of experimental and simulation training data, appropriate application of ML techniques could speed up the failure prediction in composites. While ML has seen many uses in composites, its use in progressive damage is still nascent. Existing use of ML for the progressive damage of composites can be classified into three categories: (i) generation of directly verifiable results, (ii) generation of material input parameters for accurate FE simulations and (iii) uncertainty quantification. Current limitations, challenges and further developments related to ML for progressive damage of composites are expounded on in the discussion section.

Abstract Image

纤维增强复合材料渐进损伤建模的机器学习综述
由于在多个长度尺度上存在复杂的相互作用失效模式,因此准确预测承重纤维增强结构的失效仍然是一项挑战。不过,近年来已经取得了相当大的进展,部分原因是先进的数值建模技术和计算能力越来越先进。先进的离散裂纹和内聚区模型能够以高分辨率分析失效模式和形态,但计算成本也很高,因此限制了其在试样或小尺寸部件上的应用。事实证明,将高保真与低保真技术(如模糊裂纹建模)进行自适应结合,可在不牺牲精度的情况下降低计算成本。另一方面,机器学习(ML)技术对复合材料失效预测的贡献也越来越大。利用大量实验和模拟训练数据集,适当应用 ML 技术可加快复合材料失效预测的速度。虽然 ML 在复合材料中的应用很多,但其在渐进损伤中的应用仍处于起步阶段。目前在复合材料渐进损伤中使用的 ML 可分为三类:(i) 生成可直接验证的结果;(ii) 生成用于精确 FE 模拟的材料输入参数;(iii) 不确定性量化。讨论部分阐述了当前在复合材料渐进损伤中使用 ML 的局限性、挑战和进一步发展。
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来源期刊
Applied Composite Materials
Applied Composite Materials 工程技术-材料科学:复合
CiteScore
4.20
自引率
4.30%
发文量
81
审稿时长
1.6 months
期刊介绍: Applied Composite Materials is an international journal dedicated to the publication of original full-length papers, review articles and short communications of the highest quality that advance the development and application of engineering composite materials. Its articles identify problems that limit the performance and reliability of the composite material and composite part; and propose solutions that lead to innovation in design and the successful exploitation and commercialization of composite materials across the widest spectrum of engineering uses. The main focus is on the quantitative descriptions of material systems and processing routes. Coverage includes management of time-dependent changes in microscopic and macroscopic structure and its exploitation from the material''s conception through to its eventual obsolescence.
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