Article ID: | iaor2004239 |
Country: | United Kingdom |
Volume: | 41 |
Issue: | 6 |
Start Page Number: | 1217 |
End Page Number: | 1237 |
Publication Date: | Jan 2003 |
Journal: | International Journal of Production Research |
Authors: | Tay M.L., Sim S.K., Chua S.K., Yun Gao |
Keywords: | neural networks, production |
Programmable parts feeders that can orientate most of the parts of one or more part families, with short changeover times from one part to the next, are highly sought after in batch production. This study investigates a suitable neural-network-based pattern recognition algorithm for the recognition of parts in a programmable vibratory bowl feeder. Three fibre-optic sensors were mounted on a vibratory bowl feeder to scan the surface of each feeding part. The scanned signatures were used as the input for the different neural network models. The performances of ARTMAP, ART2 and backpropagation neural network models were compared. The results showed that, among the three models, ARTMAP is deemed to be superior, based on the criteria of learning speed, high generalization and flexibility. The better performance obtained with the ARTMAP neural network is mainly the result of its online training and supervised learning capabilities.