拉丁超立方体抽样
层压
人工神经网络
屈曲
复合材料层合板
遗传算法
有限元法
维数之咒
堆积
算法
计算机科学
结构工程
工程类
数学优化
数学
材料科学
人工智能
复合材料
蒙特卡罗方法
统计
物理
图层(电子)
核磁共振
作者
Xiaoyang Liu,Jian G. Qin,Kai Zhao,Carol Featherston,David Kennedy,Yucai Jing,Guotao Yang
标识
DOI:10.1016/j.compstruct.2022.116500
摘要
In this paper, an efficient method for performing minimum weight optimization of composite laminates using artificial neural network (ANN) based surrogate models is proposed. By predicting the buckling loads of the laminates using ANN the use of time-consuming buckling evaluations during the iterative optimization process are avoided. Using for the first time lamination parameters, laminate thickness and other dimensional parameters as inputs for these ANN models significantly reduces the number of models required and therefore computational cost of considering laminates with many different numbers of layers and total thickness. Besides, as the stacking sequences are represented by lamination parameters, the number of inputs of the ANN models is also significantly reduced, avoiding the curse of dimensionality. Finite element analysis (FEA) is employed together with the Latin hypercube sampling (LHS) method to generate the database for the training and testing of the ANN models. The trained ANN models are then employed within a genetic algorithm (GA) to optimize the stacking sequences and structural dimensions to minimize the weight of the composite laminates. The advantages of using ANN in predicting buckling load is proved by comparison with other machine learning methods, and the effectiveness and efficiency of the proposed optimization method is demonstrated through the optimization of flat, blade-stiffened and hat-stiffened laminates.
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