A fuzzy approach to process plan selection.

作者: H.-C. ZHANG , S. H. HUANG

DOI: 10.1080/00207549408956999

关键词:

摘要: Process planning is the systematic determination of detailed methods by which parts can be manufactured from raw material to finished product. In a real manufacturing environment, usually several different need in single facility sharing constrained resources. The existence alternative process plans for each part makes selection plan very important issue manufacturing. objectives might imprecise and conflicting. this paper, fuzzy approach used deal quantitatively with imprecision problem. Each evaluated its contribution shopfloor performance calculated using set theory. A progressive refinement first identify that maximize contributions, then consolidate reduce resources needed.

参考文章(16)
Leo Alting, Hong-Chao Zhang, Computerized Manufacturing Process Planning Systems ,(2014)
George J. Klir, Tina A. Folger, Fuzzy Sets, Uncertainty and Information ,(1988)
H.J. Warnecke, R. Bäßler, Design for Assembly — Part of the Design Process CIRP Annals. ,vol. 37, pp. 1- 4 ,(1988) , 10.1016/S0007-8506(07)61572-8
KUMAR BHASKARAN, Process plan selection International Journal of Production Research. ,vol. 28, pp. 1527- 1539 ,(1990) , 10.1080/00207549008942810
Inyong Ham, Stephen C.-Y. Lu, Computer-Aided Process Planning: The Present and the Future CIRP Annals. ,vol. 37, pp. 591- 601 ,(1988) , 10.1016/S0007-8506(07)60756-2
Tarun Gupta, An expert system approach in process planning current development and its future Computers & Industrial Engineering. ,vol. 18, pp. 69- 80 ,(1990) , 10.1016/0360-8352(90)90042-K
N. SINGH, B. K. MOHANTY, A fuzzy approach to multi-objective routing problem with applications to process planning in manufacturing systems International Journal of Production Research. ,vol. 29, pp. 1161- 1170 ,(1991) , 10.1080/00207549108930125
Hans-Jürgen Zimmermann, Fuzzy Set Theory - and Its Applications ,(1985)
Edward A. Feigenbaum, The art of artificial intelligence: themes and case studies of knowledge engineering international joint conference on artificial intelligence. pp. 1014- 1029 ,(1977) , 10.21236/ADA046289