MACHINE COMPONENT CELL-FORMATION IN GROUP TECHNOLOGY - A NEURAL NETWORK APPROACH

被引:71
作者
KAPARTHI, S
SURESH, NC
机构
[1] School of Management, State University of New York, Buffalo, NY
关键词
D O I
10.1080/00207549208942961
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
This paper presents a neural network clustering method for the part-machine grouping problem in group technology. Among the several neural networks, a Carpenter-Grossberg network is selected due to the fact that this clustering method utilizes binary-valued inputs and it can be trained without supervision. It is shown that this adaptive leader algorithm offers the capability of handling large, industry-size data sets due to the computational efficiency. The algorithm was tested on three data sets from prior literature, and solutions obtained were found to result in block diagonal forms. Some solutions were also found to be identical to solutions presented by others. Experiments on larger data sets, involving 10 000 parts by 100 machine types, revealed that the method results in the identification of clusters with fast execution times. If a block diagonal structure existed in the input data, it was identified to a good degree of perfection. It was also found to be efficient with some imperfections in the data.
引用
收藏
页码:1353 / 1367
页数:15
相关论文
共 25 条
[1]  
Burbidge J.L., Production flow analysis, Production Engineer, 42, (1963)
[2]  
Burbidge J., The Introduction of Croup Technology, (1975)
[3]  
Carrie A.S., Numerical taxonomy applied to group technology and plant layout, International Journal of Production Research, 11, (1973)
[4]  
Carpenter G., Grossberg A.S., Neural dynamics of category learning and recognition: Attention, memory consolidation and amnesia, Brain Structure, Learning and Memory, a A AS Symposium Series, (1986)
[5]  
Carpenter G., Grossberg A.S., The ART of adaptive pattern recognition by a selforganizing neural network, Computer, 21, 3, pp. 77-88, (1988)
[6]  
Dii Beer C., De Witte J., Production flow synthesis, Ann. Cirp, 27, (1978)
[7]  
El-Essawy I., Torrance J., Component flow analysis—an effective approach to production system design, Production Engineer, 51, (1972)
[8]  
Kaparthi S., Suresh N.C., A neural network system for shape-based classification and coding of rotational parts, International Journal of Production Research, 29, 9, pp. 1771-1784, (1991)
[9]  
King J.R., Machine-component grouping in production flow analysis: An approach using a rank order clustering algorithm, International Journal of Production Research, 18, 2, pp. 213-232, (1980)
[10]  
King J.R., Nakornchai V., Machine-component group formation in group technology: Review and extension, International Journal of Production Research, 20, 2, (1982)