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Developing and Multi-Objective Optimization of a Combined Energy Absorber Structure Using Polynomial Neural Networks and Evolutionary Algorithms

机译:基于多项式神经网络和进化算法的组合式能量吸收器结构的开发和多目标优化

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In this study a newly developed thin-walled structure with the combination of circular and square sections is investigated in term of crashworthiness. The results of the experimental tests are utilized to validate the Abaqus/Explicit TM finite element simulations and analysis of the crush phenomenon. Three polynomial meta-models based on the evolved group method of data handling (GMDH) neural networks are employed to simply represent the specific energy absorption (SEA), the initial peak crushing load (P1) and the secondary peak crushing load (P2) with respect to the geometrical variables. The training and testing data are extracted from the finite element analysis. The modified genetic algorithm NSGA-II, is used in multi-objective optimisation of the specific energy absorption, primary and secondary peak crushing load according to the geometrical variables. Finally, in each optimisation process, the optimal section energy absorptions are compared with the results of the finite element analysis. The nearest to ideal point and TOPSIS optimisation methods are applied to choose the optimal points.
机译:在这项研究中,研究了一种新开发的具有圆形和正方形截面的薄壁结构,具有耐撞性。实验测试的结果用于验证Abaqus / Explicit TM有限元模拟和压溃现象的分析。使用基于数据处理的进化组方法(GMDH)神经网络的三个多项式元模型来简单地表示比能量吸收(SEA),初始峰值破碎负荷(P1)和次级峰值破碎负荷(P2)关于几何变量。训练和测试数据是从有限元分析中提取的。改进的遗传算法NSGA-II用于根据几何变量对比能量吸收,一次和二次峰值破碎负荷进行多目标优化。最后,在每个优化过程中,将最佳截面能量吸收与有限元分析的结果进行比较。使用最接近理想点和TOPSIS优化方法来选择最佳点。

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