Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10418139 | Journal of Materials Processing Technology | 2005 | 5 Pages |
Abstract
Intelligent deep drawing for axisymmetric workpieces is an important research field of intelligent sheet metal forming, and real-time identification of parameters is a key technology for intelligent deep drawing. This paper presents a feed-forward neural network model based on the LM algorithm (put forward by Levenberg and Marquardt), which is established to realize real-time identification of material properties and friction coefficient for deep drawing of an axisymmetric workpiece. Compared with the previous BP model (neural network based on back propagation algorithm) and GA-ENN (evolutionary neural network based on genetic algorithm) model, the error goal of parameter identification by the LM model is stepped downward to a new level. Therefore, accurate parameter identification, which provides preconditions as well as assurance for accurate prediction and control, lays the basis for intelligent deep drawing of sheet metal.
Related Topics
Physical Sciences and Engineering
Engineering
Industrial and Manufacturing Engineering
Authors
Jun Zhao, Fengquin Wang,