Artificial neural networks for the prediction of mechanical behavior of metal matrix composites

A. Mukherjee , S. Schmauder, M. Ru¨hle
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引用次数: 38

Abstract

In this paper we demonstrate the power of artificial neural networks in predicting strengthening in the transverse direction of metal matrix composites by regularly arranged strong fibers. A neural network is trained in different ways based on a numerical study in which the fiber volume fraction and the matrix hardening ability was studied systematically for fibers in a hexagonal arrangement loaded at 0 and 30° transverse direction and for a square arrangement of fibers loaded at 0 and 45° transverse directions. Strengthening predictions are then made for hardening cases of both fiber arrangements which were not covered by the finite element calculations as well as for arbitrary loading directions not achievable by simple finite element unit cell calculations in the case of square fiber arrangements.

基于人工神经网络的金属基复合材料力学行为预测
在本文中,我们证明了人工神经网络在预测金属基复合材料由规则排列的强纤维在横向方向上的强化方面的能力。在数值研究的基础上,系统地研究了横向0°和30°加载的六角形纤维和横向0°和45°加载的方形纤维的体积分数和基体硬化能力,并以不同的方式训练了神经网络。然后对两种纤维排列的硬化情况进行了强化预测,这些情况没有被有限元计算所涵盖,以及在方形纤维排列的情况下,通过简单的有限元单元计算无法实现的任意加载方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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