Title :
Neural-Fuzzy Approach to Optimize Process Parameters for Injection Molding Machine
Author :
Hernandez, Pablo Ayala
Abstract :
Injection molding technology should assure a high level of quality control of the molded parts in an automated way. Inherent complexities of the process make mathematical modeling difficult, hindering the control quality demands of conventional methods. Neural Network adaptive data based technology has been successfully applied in industrial applications since these rely on highly nonlinear modeling systems and are able to provide enough rich data for high control models the required process relationships. The focus of this paper is a Neural-Fuzzy approach for optimizing injection molding parameters settings. The approach consists of design of experiments (DOE) and Neural-Fuzzy systems.
Keywords :
adaptive control; design of experiments; fuzzy neural nets; injection moulding; nonlinear systems; quality control; DOE; Injection molding technology; automated way; control quality demands; conventional methods; design of experiments; high control models; industrial applications; inherent complexity; injection molding machine; mathematical modeling; molded parts; neural network adaptive data based technology; neural-fuzzy approach; neural-fuzzy systems; nonlinear modeling systems; optimizing injection molding parameters settings; process parameters; process relationships; quality control; Injection molding; Mathematical model; Neural networks; Plastics; Process control; Training; ANFIS; Injection Molding;
Conference_Titel :
Intelligent Environments (IE), 2012 8th International Conference on
Conference_Location :
Guanajuato
Print_ISBN :
978-1-4673-2093-1