A Machine Learning Boosted Data Reduction Methodology for Translaminar Fracture of Structural Composites

IF 2.3 4区 材料科学 Q3 MATERIALS SCIENCE, COMPOSITES Applied Composite Materials Pub Date : 2024-07-01 DOI:10.1007/s10443-024-10236-x
Davide Mocerino, Moisés Zarzoso, Federico Sket, Jon Molina, Carlos González
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Abstract

This work explored a machine learning (ML) algorithm as a fast data reduction method for translaminar fracture energy in composite laminates. The method was validated with translaminar fracture tests on compact tension (CT) specimens on AS4/8552 and IM7/8552 cross-ply lay-ups. Experimental fracture energy and R-curves for both materials were determined using the most common data reduction methods, such as the compliance calibration (CC), the area (AM) and the Irwin relationship (IM). Our new data reduction method uses a surrogate model based on an artificial neural network (ANN) trained with synthetic data generated with the cohesive crack finite element model. Such a surrogate model maps the cohesive properties with the corresponding load–displacement, crack-displacement and energy-displacement curves with interrogation times in the order of 20 ms and relative errors in the load–displacement and crack growth less than 2%. Such performance enabled its encapsulation to approximate the inverse problem to infer the cohesive parameters with the maximum likelihood estimator (MLE) directly from the experimental load–displacement and crack-displacement curves. The results demonstrated the ability of the model to deliver cohesive parameter inference directly from the macroscopic tests carried out at the laboratory level.

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针对结构复合材料横向断裂的机器学习增强数据缩减方法
这项研究探索了一种机器学习(ML)算法,作为复合材料层压板层间断裂能的快速数据缩减方法。该方法通过对 AS4/8552 和 IM7/8552 交叉层压材料的紧凑拉伸 (CT) 试样进行层间断裂测试进行了验证。这两种材料的实验断裂能和 R 曲线都是使用最常见的数据还原方法确定的,如顺应性校准 (CC)、面积 (AM) 和欧文关系 (IM)。我们的新数据还原方法使用的是基于人工神经网络(ANN)的代用模型,该人工神经网络由内聚裂纹有限元模型生成的合成数据训练而成。这种代用模型将内聚特性与相应的载荷-位移、裂纹-位移和能量-位移曲线进行映射,询问时间约为 20 毫秒,载荷-位移和裂纹增长的相对误差小于 2%。这样的性能使其能够封装成近似逆问题,直接从实验载荷-位移和裂缝-位移曲线用最大似然估计法(MLE)推断内聚参数。结果表明,该模型能够直接从实验室进行的宏观测试中推断内聚参数。
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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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