Article ID: | iaor20062997 |
Country: | United States |
Volume: | 7 |
Issue: | 3 |
Publication Date: | Sep 2000 |
Journal: | International Journal of Industrial Engineering |
Authors: | Su Chao-Ton, Chiu Chih-Chou, Chang Hsu-Hwa |
Keywords: | heuristics, neural networks |
Among the many extensive industrial applications which parameter design optimization problems have found include product development, process design and operational condition settings. The parameter design optimization problems are complex owing to that nonlinear relationships and interactions may occur among parameters. To resolve such problems, engineers commonly employ the Taguchi method. However, the Taguchi method has some limitations in practice. Therefore, in this work, we present a novel means of improving the effectiveness of the optimization of parameter design. The proposed approach employs the neural network and genetic algorithm, and consists of two phases. Phase 1 formulates a fitness function for a problem by a neural network to predict the value of the response for a given parameter setting. Phase 2 applies a genetic algorithm to search for the optimal parameter combination. A numerical example demonstrates the effectiveness of the proposed approach.