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Prediction of composite fatigue life under variable amplitude loading using artificial neural network trained by genetic algorithm

机译:遗传算法训练可变幅度载荷下综合疲劳寿命的预测

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Neural networks (NN) have been widely used in application of fatigue life prediction. In the use of fatigue life prediction for polymeric-base composite, development of NN model is necessary with respect to the limited fatigue data and applicable to be used to predict the fatigue life under varying stress amplitudes in the different stress ratios. In the present paper, Multilayer-Perceptrons (MLP) model of neural network is developed, and Genetic Algorithm was employed to optimize the respective weights of NN for prediction of polymeric-base composite materials under variable amplitude loading. From the simulation result obtained with two different composite systems, named E-glass fabrics/epoxy (layups [(±45)/(0)_2]_S), and E-glass/polyester (layups [90/0/±45/0]_S), NN model were trained with fatigue data from two different stress ratios, which represent limited fatigue data, can be used to predict another four and seven stress ratios respectively, with high accuracy of fatigue life prediction. The accuracy of NN prediction were quantified with the small value of mean square error (MSE). When using 33% from the total fatigue data for training, the NN model able to produce high accuracy for all stress ratios. When using less fatigue data during training (22% from the total fatigue data), the NN model still able to produce high coefficient of determination between the prediction result compared with obtained by experiment.
机译:神经网络(NN)已被广泛应用于应用疲劳寿命预测。在使用疲劳寿命预测的聚合物基础复合材料中,对于有限的疲劳数据,NN模型的发展是必要的,并且适用于预测不同应力比中不同应力幅度下的疲劳寿命。在本文中,开发了神经网络的多层 - 感知(MLP)模型,采用遗传算法来优化NN的各自在可变幅度负载下预测聚合物基层复合材料的各自重量。从两种不同的复合系统获得的仿真结果,名为E-Glabrics织物/环氧树脂(叠层[(±45)/(0)_2℃)和E-玻璃/聚酯(上篮[90/0 /±45 / 0] _S),NN模型训练,具有来自两个不同应力比的疲劳数据,其代表有限的疲劳数据,可用于预测另外的四个和七个应力比,具有高精度的疲劳寿命预测。用均方误差(MSE)的少量值量化NN预测的准确性。当使用33%从训练的总疲劳数据中,NN模型能够为所有应力比产生高精度。在训练期间使用较少的疲劳数据(从总疲劳数据的22%)时,NN模型仍然能够在通过实验获得的预测结果之间产生高度测定系数。

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