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Test Model of Automobile Engine Magneto-Rheological Mount Based on RBF Neural Network

Authors :
Hong Ying Song
Chun Lan Liang
Jin Gang Ma
Peng Cheng Sheng
Source :
Applied Mechanics and Materials. :450-453
Publication Year :
2013
Publisher :
Trans Tech Publications, Ltd., 2013.

Abstract

The nonlinear and hysteresis characteristics showed by magneto-rheological (MR) mount make it seem very difficult to establish a precise mathematical model. Based on the testing of MR mount dynamics, RBF neural network model can train and forecast the collected data. Analysis of comparing the predicting result of the RBF neural network model with the testing result shows that the trained RBF neural network model can exactly predict the dynamics of MR mount, and it provides some new ideas to implement the better intelligent control of the engine MR mount.

Details

ISSN :
16627482
Database :
OpenAIRE
Journal :
Applied Mechanics and Materials
Accession number :
edsair.doi...........6f9709bc1210a5d43d529e1f32778561