基于机器学习和神经网络的欧拉-伯努利梁方程挠度预测方法

Zaur Rasulov, U. Yesil
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引用次数: 0

摘要

梁状结构是一种广泛而重要的系统,已经被广泛研究了几个世纪。虽然提出的一些解决方案是有效的,但时间消耗和重建问题的难度是这些方法的主要缺点。本文提出了一种基于机器学习和神经网络的求解梁问题的新方法,并采用不同的优化算法。比较了数值模拟欧拉-伯努利梁模型的各种回归模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning and neural networks based approach for deflection prediction of Euler-Bernoulli beam equations
Beam-like structures are widespread but essential systems that have been extensively studied for centuries. Although several proposed solutions are effective, the time consumption and the difficulty of reconstructing the problem are the major disadvantages of these methods. This paper offers a new methodology for finding solutions to beam problems based on Machine Learning and Neural Networks with different optimization algorithms. Various regression models are compared on numerically stimulated Euler-Bernoulli beam modelling.
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