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Analysis of Effects of Sizes of Orifice and Pockets on the Rigidity of Hydrostatic Bearing Using Neural Network Predictor System

机译:用神经网络预测系统分析孔口和凹穴尺寸对静压轴承刚度的影响

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摘要

This paper presents a neural network predictor for analysing rigidity variations of hydrostatic bearing system. The designed neural network has feedforward structure with three layers. The layers are input layer, hidden layer and output layer. Two main parameter could be considered for hydrostatic bearing system. These parameters are the size of bearing pocket and the orifice dimension. Due to importancy of these parameters, it is necessary to analyse with a suitable optimisation method such as neural network. As depicted from the results, the proposed neural predictor exactly follows experimental desired results.
机译:本文提出了一种神经网络预测器,用于分析静液压轴承系统的刚度变化。设计的神经网络具有三层前馈结构。这些层是输入层,隐藏层和输出层。静压轴承系统可以考虑两个主要参数。这些参数是轴承套的尺寸和孔口的尺寸。由于这些参数的重要性,有必要使用适当的优化方法(例如神经网络)进行分析。从结果中可以看出,提出的神经预测器正好遵循实验所需的结果。

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