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A micromechanics and machine learning coupled approach for failure prediction of unidirectional CFRP composites under triaxial loading: A preliminary study

机译:三轴加载下单向CFRP复合材料故障预测的微机械和机器学习耦合方法:初步研究

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摘要

This study presents a hybrid method based on artificial neural network (ANN) and micro-mechanics for the failure prediction of IM7/8552 unidirectional (UD) composite lamina under triaxial loading. The ANN is trained offline by numerical data from a high-fidelity micromechanics-based representative volume element (RVE) model using the finite element method (FEM). The RVE adopts identified constituent parameters from inverse analysis and calibrated interface strengths form uniaxial and biaxial tests. A hybrid loading strategy is proposed for the RVE under triaxial loading to obtain the failure points on sliced surfaces whilst maintaining the constant stress at different surfaces. It has been found that the ANN algorithm is robust in the failure prediction of the UD lamina when subjected to different triaxial loading conditions, with over 97.5% accuracy being achieved by the shallow ANN model, where only two hidden layers and 560 samples are used. The predicted 3D failure surface based on trained ANN model has an elliptical paraboloid shape and shows an extremely high strength in biaxial compression. The approach could be used to inform the modification of existing failure criteria and to propose ANN-based failure criteria.
机译:本研究提出了一种基于人工神经网络(ANN)的混合方法,微型机械方法,用于三轴载荷下IM7 / 8552单向(UD)复合薄膜的故障预测。使用有限元方法(FEM),通过来自基于高保真微机械的代表性体积元素(RVE)模型的数值数据来训练。该RVE采用识别的成分参数从逆分析和校准的界面强度形成单轴和双轴测试。在三轴加载下的rve提出了一种混合加载策略,以获得切片表面上的故障点,同时保持不同表面的恒定应力。已经发现,当经受不同的三轴加载条件时,ANN算法在UD薄片的故障预测中是稳健的,通过浅ANN模型实现超过97.5%的精度,其中仅使用两个隐藏层和560个样品。基于培训的ANN模型的预测3D失效表面具有椭圆形抛物面形状,并且在双轴压缩中显示出极高的强度。该方法可用于通知现有故障标准的修改,并提出基于安的故障标准。

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