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首页> 外文期刊>Journal of Mechanical Engineering >Application of Artificial Neural Networks in the Prediction of Critical Buckling Loads of Helical Compression Springs
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Application of Artificial Neural Networks in the Prediction of Critical Buckling Loads of Helical Compression Springs

机译:人工神经网络在螺旋压缩弹簧关键屈曲负荷预测中的应用

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摘要

This paper proposes the use of artificial neural networks (ANN) to perfectly predict the critical buckling loads of cylindrical isotropic helical spring with fixed ends and with circular sections, and with large pitch angles. The buckling equations of cylindrical isotropic helical springs loaded axially consist of a set of twelve linear differential equations. As finding a solution in an analytical manner is too difficult, numerical solution in an exact manner based on the transfer-matrix method to collect consistent dimensionless numerical data for the training process is used. In this way almost perfect weight values are obtained to predict the non-dimensional buckling loads. A good agreement is observed with the data available in the literature.
机译:本文提出使用人工神经网络(ANN)来完全预测具有固定端的圆柱形各向同性螺旋弹簧的临界屈曲负荷,以及具有圆形部分,并且具有大的俯仰角。 圆柱形各向同性螺旋弹簧的屈曲方程轴向装载一组12个线性微分方程。 正如以分析方式查找解决方案太困难,基于转移 - 矩阵方法以确切的方式以确切的方式为使用用于训练过程的一致无量纲数值数据。 以这种方式,获得几乎完美的重量值以预测非维度屈曲负载。 观察到文献中可用的数据达成了良好的协议。

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