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多几何要素影响下液压阀件特性的混合神经网络预测模型

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Indexed by:期刊论文

Date of Publication:2022-06-29

Journal:机械工程学报

Affiliation of Author(s):机械工程学院

Issue:2

Page Number:126-131

ISSN No.:0577-6686

Abstract:Hydraulic valve system is a complex system with multiple characteristics affected by multiple geometric elements. It will be essentially important to the manufacture process to establish the prediction model of the system characteristics by using the geometric elements and achieve the goal of prediction. On the basis of synthesizing the features of the back propagation (BP) neural network and RBF neural network, a prediction model which is a new hybrid neural network based on the BP neural network and radial basis function (RBF) neural network is presented. And the hybrid neural network is trained by using data measured from actual production. The calculation results show that the hybrid neural network prediction model can improve the prediction accuracy of a single neural network model, and reach an average relative error of 0.046 1. Therefore the proposed hybrid neural network can well satisfy the requirement of predicting the hydraulic valve characteristics.

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