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首页> 外文期刊>Composite Structures >Hybrid Computational Strategy Based On Ann And Gaps: Application For Identification Of A Non-linear Model Of Composite Material
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Hybrid Computational Strategy Based On Ann And Gaps: Application For Identification Of A Non-linear Model Of Composite Material

机译:基于Ann和Gaps的混合计算策略:在复合材料非线性模型辨识中的应用

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摘要

The main objective of a typical identification process is to determine the best input parameter set of a given problem for which the cost function is not explicitly known in terms of its associated inputs. In the worst case, the cost function is largely multimodal and needs an efficient identification technique to reach an acceptable solution within a reasonable duration. In this work, we propose a new identification hybrid strategy based on genetic algorithm with parallel selection (GAPS) and artificial neural network (ANN). This strategy is used as an identification scheme in the modelling of non-linear mechanical behaviour of laminate composites. ANN is designed in a way to relate the mechanical parameters of the studied material to the cost function representing the difference between the true and simulated mechanical responses. The identification problem assumes different mechanical behaviours related to non-linear model of composite laminate shell including elasticity, plasticity, viscoelasticity, vis-coelasticity and damage. The strategy is built based on the following idea: because GAPS is a time consuming technique with regard to gradient based methods, ANN is used as a meta model to speed up the identification process while GAPS provides the required database from early generations for ANN training. The hybrid strategy is then able to solve the identification problem as demonstrated by the well agreement between experimental and simulated mechanical tests (i.e., traction and internal pressure tests) thanks to the robust character of GAPS and the rapid convergence of ANN.
机译:典型识别过程的主要目标是确定给定问题的最佳输入参数集,对于该问题,成本函数在其关联输入方面并未明确地知道。在最坏的情况下,成本函数在很大程度上是多模式的,需要有效的识别技术才能在合理的时间内达到可接受的解决方案。在这项工作中,我们提出了一种基于遗传算法的并行选择(GAPS)和人工神经网络(ANN)的识别混合策略。该策略在层合复合材料的非线性力学行为建模中用作识别方案。人工神经网络的设计方式是将研究材料的机械参数与成本函数联系起来,成本函数代表真实和模拟的机械响应之间的差异。识别问题假设与复合材料叠层壳非线性模型有关的不同机械行为包括弹性,可塑性,粘弹性,粘弹性和损伤。该策略基于以下思想构建:由于GAPS是基于梯度方法的一项耗时技术,因此将ANN用作元模型以加快识别过程,同时GAPS为ANN训练提供了从早期生成的所需数据库。然后,由于GAPS的鲁棒性和ANN的快速收敛性,混合策略能够解决识别问题,如实验和模拟力学测试(即牵引力和内压测试)之间的良好一致性所证明的那样。

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