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Material parameters identification: Gradient-based, genetic and hybrid optimization algorithms

机译:材料参数识别:基于梯度的遗传和混合优化算法

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This paper presents two procedures for the identification of material parameters, a genetic algorithm and a gradient-based algorithm. These algorithms enable both the yield criterion and the work hardening parameters to be identified. A hybrid algorithm is also used, which is a combination of the former two, in such a way that the result of the genetic algorithm is considered as the initial values for the gradient-based algorithm. The objective of this approach is to improve the performance of the gradient-based algorithm, which is strongly dependent on the initial set of results. The constitutive model used to compare the three different optimization schemes uses the Barlat'91 yield criterion, an isotropic Voce type law and a kinematic Lemaitre and Chaboche law, which is suitable for the case of aluminium alloys. In order to analyse the effectiveness of this optimization procedure, numerical and experimental results for an EN AW-5754 aluminium alloy are compared. (C) 2008 Elsevier B.V. All rights reserved.
机译:本文提出了两种识别材料参数的程序,一种是遗传算法,另一种是基于梯度的算法。这些算法可以确定屈服准则和加工硬化参数。还使用一种混合算法,该方法是前两种方法的组合,因此将遗传算法的结果视为基于梯度算法的初始值。这种方法的目的是提高基于梯度的算法的性能,该算法很大程度上取决于初始结果集。用于比较三种不同优化方案的本构模型使用Barlat'91屈服准则,各向同性Voce型定律和运动Lemaitre和Chaboche定律,这适用于铝合金。为了分析此优化程序的有效性,比较了EN AW-5754铝合金的数值和实验结果。 (C)2008 Elsevier B.V.保留所有权利。

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