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Neural Network-Based Expert System to Predict the Results of Finite Element Analysis

机译:基于神经网络的专家系统预测有限元分析结果

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摘要

Realizing the fact that the performance of a finite element (FE) analysis depends on the type of elements, mesh topology, mesh density, node numbering and others, an attempt is made in the present work, to develop a neural network-based expert system to predict stress analysis results of an FEM package, within a reasonable accuracy. A rubber cylinder is compressed diametrically between two plates, whose induced stresses and deformed shape are to be determined using an FE analysis. By varying two parameters, namely element size and shape ratio, results (obtained through FE analysis) in terms of induced stress and deformed shape of the cylinder are recorded, which are utilized to train a neural network (NN)-based expert system, by using a back-propagation algorithm and a genetic algorithm, separately. Results of two NN-based expert systems are compared, in terms of accuracy in prediction of the results. It is interesting to note that the expert system can predict the results within a fraction of a second, whereas an actual FE analysis may take several seconds depending on the complexity of the problem.
机译:认识到有限元(FE)分析的性能取决于元素的类型,网格拓扑,网格密度,节点编号等事实,因此在本工作中尝试开发基于神经网络的专家系统以合理的精度预测FEM封装的应力分析结果。在两个板之间沿直径方向压缩橡胶筒,其感应应力和变形形状将通过有限元分析确定。通过改变两个参数,即元件尺寸和形状比,记录了通过感应应力和圆柱体变形形状得出的结果(通过有限元分析获得),这些结果被用于训练基于神经网络(NN)的专家系统,分别使用反向传播算法和遗传算法。就预测结果的准确性而言,比较了两个基于NN的专家系统的结果。有趣的是,专家系统可以在一秒钟内预测结果,而实际的有限元分析可能要花费几秒钟,具体取决于问题的复杂性。

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