基于人工神经网络的薄壁功能梯度梁非均匀六边形截面分析

Dieu T. T. Do, T. Nguyen, Quoc-Hung Nguyen, T. Bui
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引用次数: 1

摘要

本文采用一种基于人工神经网络的非传统计算方法研究了薄壁功能梯度梁非均匀六边形截面的静力行为。该方法的主要目标之一是节省优化过程的计算成本,而传统方法如有限元法(FEM)通常耗时。在本研究中,使用有限元法通过迭代随机生成的1000个数据集进行训练过程,以获得最优权值。基于这些获得的最优权重,可以预测材料分布随厚度变化时的梁的行为。在该模型中,人工神经网络的输入是幂律分布和厚度的梯度指数,输出是柔度和梁位移。计算结果与有限元计算结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of non-uniform hexagonal cross-sections for thin-walled functionally graded beams using artificial neural networks
We study static mechanical behavior of non-uniform hexagonal cross-sections for thin-walled functionally graded beams using a non-traditional computational approach based on artificial neural network. One of the main objectives of our approach is to save the computational cost for the optimization process, which is usually time-consuming by using traditional methods such as finite element method (FEM). In this study, 1000 data sets randomly generated by the FEM through iterations are used for the training process to get optimal weights. Based on these obtained optimal weights, beam behaviors under the changes in material distribution through thickness could then be predicted. In this model, the ANN's inputs are the gradation index of the power-law distribution and thickness, while the outputs are compliance and beam displacements. The computed results are verified against those derived from the FEM.
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