A close neighbour algorithm for designing cellular manufacturing systems
- 1 October 1991
- journal article
- research article
- Published by Taylor & Francis in International Journal of Production Research
- Vol. 29 (10), 2097-2116
- https://doi.org/10.1080/00207549108948069
Abstract
The first step in creating a cellular manufacturing system is to identify machine groups and form part families. Clustering and data organization (CDR) algorithms (such as the bond energy algorithm) and array sorting (ARS) methods (such as the rank order clustering algorithm) have been proposed to solve the machine and part grouping problem. However, these methods do not always produce a solution matrix that has a block diagonal structure, making visual identification of machine groups and part families extremely difficult. This paper presents a ‘close neighbour algorithm’ to solve this problem. The algorithm overcomes many deficiencies of the CDR and ASM methods. The algorithm is tested against ten existing algorithms in solving test problems from the literature. Test results show that the algorithm is very reliable and efficient.Keywords
This publication has 18 references indexed in Scilit:
- GROUPABIL1TY: an analysis of the properties of binary data matrices for group technologyInternational Journal of Production Research, 1989
- ZODIAC—an algorithm for concurrent formation of part-families and machine-cellsInternational Journal of Production Research, 1987
- A within-cell utilization based heuristic for designing cellular manufacturing systemsInternational Journal of Production Research, 1987
- An ideal seed non-hierarchical clustering algorithm for cellular manufacturingInternational Journal of Production Research, 1986
- Grouping of parts and components in flexible manufacturing systemsEuropean Journal of Operational Research, 1986
- Group technology in production management: The short horizon planning levelApplied Stochastic Models and Data Analysis, 1985
- Machine-component group formation in group technology: review and extensionInternational Journal of Production Research, 1982
- Direct clustering algorithm for group formation in cellular manufactureJournal of Manufacturing Systems, 1982
- Machine-component grouping in production flow analysis: an approach using a rank order clustering algorithmInternational Journal of Production Research, 1980
- Numerical taxonomy applied to group technology and plant layoutInternational Journal of Production Research, 1973