The Open Mechanical Engineering Journal

2011, 5 : 26-31
Published online 2011 April 29. DOI: 10.2174/1874155X01105010026
Publisher ID: TOMEJ-5-26

Intelligent Prediction of Process Parameters for Bending Forming

Shengle Ren , Yinan Lai , Guangfei Wu , Juntao Gu and Ye Dai
School of Mechanical and Power Engineering, Harbin University of Science and Technology, Harbin 150080, China.

ABSTRACT

The choice of the process parameters in the conventional tube bending forming is often based on experience and adjusted by repeated bending tests. The method of constantly testing to adjust has seriously affected the production efficiency and increased production costs. In this paper, neural network is used to establish the intelligent prediction model of the pipe forming process parameters. The obtained datum from analytical calculations, numerical simulations and experiments then serve as the training samples and test samples of neural network training. By the trained neural network, the intelligent prediction for the main process parameters including the bending moment and the boost power can be executed. The test results show that the average relative error between the simulation output and target output of bending moment and boost power is less than 2%, and the predicted process parameters, i.e. bending moment and boost power, can be directly used for actual production.