Title :
Modelling of the flow stress using BP network
Author :
Yang, Y.Y. ; Linkens, D.A.
Author_Institution :
Dept. of Autom. Control & Syst. Eng., Sheffield Univ., UK
Abstract :
This paper addresses the development of a back-propagation neural network model for flow stress prediction based on plane strain compression (PSC) test data. Basic concepts of the neural network modelling are given, followed by discussions on training data requirements and other critical issues in neural network modelling. Original training data have been obtained via many PSC tests for a low carbon steel (C430). Data preprocessing is very important in neural network modelling, especially when the data are from industrial processes where various disturbances are very likely. A two-stage data preprocessing procedure was proposed to deal with the PSC data: data rationalising and data filtering. The quality of the training data is significantly improved after the data preprocessing. The developed BP neural network model had been implemented on a Pentium-based personal computer. Simulation results show that the average output prediction error by BP network is less than 4% of the prediction range. The training error gradually decreases with increasing hidden neurons. However, increasing hidden neurons do impose a danger of over-training, with the validation error increasing instead of decreasing. Compromising between the training error and validation error, we suggest that a BP neural network with a single hidden layer and 10-20 hidden neurons should be sufficient for flow stress modelling
Keywords :
backpropagation; carbon steel; digital simulation; finite element analysis; mechanical engineering computing; microcomputer applications; multilayer perceptrons; physics computing; plastic flow; work hardening; BP network; C430; PSC tests; Pentium-based personal computer; back-propagation neural network model; backpropagation neural network; data filtering; data rationalisation; flow stress modelling; flow stress prediction; industrial processes; low carbon steel; plane strain compression test data; two-stage data preprocessing procedure; Capacitive sensors; Computer errors; Data preprocessing; Neural networks; Neurons; Predictive models; Steel; Stress; Testing; Training data;
Conference_Titel :
Intelligent Processing and Manufacturing of Materials, 1999. IPMM '99. Proceedings of the Second International Conference on
Conference_Location :
Honolulu, HI
Print_ISBN :
0-7803-5489-3
DOI :
10.1109/IPMM.1999.791482