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MODIFIED GENETIC ALGORITHM APPLIED TO SOLVE PRODUCT FAMILY OPTIMIZATION PROBLEM
引用本文:CHEN Chunbao WANG Liya Department of Industrial Engineering and Management,Shanghai Jiaotong University,Shanghai 200030,China. MODIFIED GENETIC ALGORITHM APPLIED TO SOLVE PRODUCT FAMILY OPTIMIZATION PROBLEM[J]. 机械工程学报(英文版), 2007, 20(4): 106-111
作者姓名:CHEN Chunbao WANG Liya Department of Industrial Engineering and Management  Shanghai Jiaotong University  Shanghai 200030  China
作者单位:CHEN Chunbao WANG Liya Department of Industrial Engineering and Management,Shanghai Jiaotong University,Shanghai 200030,China
基金项目:国家自然科学基金 , the Joint Research Scheine of National Natural Science Foundation of China , Hong Kong Re search Grant Council, China
摘    要:The product family design problem solved by evolutionary algorithms is discussed.A successful product family design method should achieve an optimal tradeoff among a set of compet- ing objectives,which involves maximizing commonality across the family of products and optimizing the performances of each product in the family.A 2-level chromosome structured genetic algorithm (2LCGA)is proposed to solve this class of problems and its performance is analyzed in comparing its results with those obtained with other methods.By interpreting the chromosome as a 2-level linear structure,the variable commonality genetic algorithm(GA)is constructed to vary the amount of plat- form commonality and automatically searches across varying levels of commonality for the platform while trying to resolve the tradeoff between commonality and individual product performance within the product family during optimization process.By incorporating a commonality assessing index to the problem formulation,the 2LCGA optimize the product platform and its corresponding family of products in a single stage,which can yield improvements in the overall performance of the product family compared with two-stage approaches(the first stage involves determining the best settings for the platform variables and values of unique variables are found for each product in the second stage). The scope of the algorithm is also expanded by introducing a classification mechanism to allow mul- tiple platforms to be considered during product family optimization,offering opportunities for supe- rior overall design by more efficacious tradeoffs between commonality and performance.The effec- tiveness of 2LCGA is demonstrated through the design of a family of universal electric motors and comparison against previous results.

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MODIFIED GENETIC ALGORITHM APPLIED TO SOLVE PRODUCT FAMILY OPTIMIZATION PROBLEM
CHEN Chunbao WANG Liya. MODIFIED GENETIC ALGORITHM APPLIED TO SOLVE PRODUCT FAMILY OPTIMIZATION PROBLEM[J]. Chinese Journal of Mechanical Engineering, 2007, 20(4): 106-111
Authors:CHEN Chunbao WANG Liya
Affiliation:Department of Industrial Engineering and Management, Shanghai Jiaotong University, Shanghai 200030, China
Abstract:The product family design problem solved by evolutionary algorithms is discussed. A successfiil product family design method should achieve an optimal tradeoff among a set of competing objectives, which involves maximizing conunonality across the family of products and optimizing the performances of each product in the family. A 2-level chromosome structured genetic algorithm (2LCGA) is proposed to solve this dass of problems and its performance is analyzed in comparing its results with those obtained with other methods. By interpreting the chromosome as a 2-level linear structure, the variable commonality genetic algorithm (GA) is constructed to vary the amount of platform commonality and automatically searches across varying levels of commonality for the platform while trying to resolve the tradeoff between commonality and individual product performance within the product family during optimization process. By incorporating a commonality assessing index to the problem formulation, the 2LCGA optimize the product platform and its corresponding family of products in a single stage, which can yield improvements in the overall performance of the product family compared with two-stage approaches (the first stage involves determining the best settings for the platform variables and values of unique variables are found for each product in the second stage). The scope of the algorithm is also expanded by introducing a classification mechanism to allow multiple platforms to be considered during product family optimization, offering opportunities for superior overall design by more efficacious tradeoffs between commonality and performance. The effectiveness of 2LCGA is demonstrated through the design of a family of universal electric motors and comparison against previous results.
Keywords:Product family design Product platform Genetic algorithm Optimization  OPTIMIZATION PROBLEM  FAMILY  PRODUCT  GENETIC ALGORITHM  effectiveness  overall design  universal  electric motors  comparison  opportunities  superior  scope  algorithm  classification  mechanism  multiple  best  settings  values  unique
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