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A material description based on recurrent neural networks for fuzzy data and its application within the finite element method

机译:基于递归神经网络的模糊数据材料描述及其在有限元方法中的应用

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摘要

A new soft computing approach is presented for structural analysis. Instead of material models, an artificial neural network concept is applied to describe time-dependent material behaviour within the finite element method. In order to consider imprecise data for the identification of dependencies between strain and stress processes from uncertain results of experimental investigations, recurrent neural networks for fuzzy data are used. An algorithm for the signal computation of recurrent neural networks is developed utilizing an α-level optimization. The approach is verified by a model based solution. Application capabilities are demonstrated by means of numerical examples.
机译:提出了一种新的软计算方法用于结构分析。代替材料模型,应用了人工神经网络概念来描述有限元方法中与时间相关的材料行为。为了从实验研究的不确定结果中考虑不精确的数据来识别应变和应力过程之间的依赖关系,使用了模糊数据的递归神经网络。利用α级优化技术开发了递归神经网络的信号计算算法。该方法已通过基于模型的解决方案进行了验证。通过数字示例来演示应用功能。

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