Author_Institution :
Coll. of Metall. & Mater. Eng., ChongQing Univ. of Sci. & Technol., Chongqing, China
Abstract :
Based on analysis of artificial neural network model theory and modeling methods, combining with parameters of a certain factory strip research unit and mechanical performance inspection data, Through choosing Traingdm to train network, then, the determination of the input and output parameters, the hidden layers of the network, cell numbers of hidden layers, learning rate lr, momentum factor α and training accuracy called goal, this paper established the three layers of BP artificial neural network performance forecast model. The analysis of experimental results showed that it had the high coincidence between prediction results of yield strength, tensile strength, elongation through the training and measured data. Therefore, the BP artificial neural network performance forecast model had higher forecast precision and practicability. Therefore, it can be used in forecast calculation in the production process of strip steel.
Keywords :
backpropagation; forecasting theory; hot rolling; mechanical engineering computing; neural nets; production engineering computing; steel industry; strips; BP artificial neural network performance forecast model; Traingdm; elongation; factory strip research unit and; hot rolled strips; learning rate; mechanical performance inspection data; mechanical properties; momentum factor; network training; strip steel production process; tensile strength; training accuracy; yield strength; Accuracy; Artificial neural networks; Biological neural networks; Predictive models; Strips; Training; BP artificial neural network; mechanical properties; prediction;
Conference_Titel :
Information Technology, Computer Engineering and Management Sciences (ICM), 2011 International Conference on