Title
An optimization method of technological processes to complex products using knowledge-based genetic algorithm.
Abstract
Purpose - This paper applies the knowledge-based genetic algorithm to solve the optimization problem in complex products technological processes. Design/methodology/approach - The knowledge-based genetic algorithm (KGA) is defined as a hybrid genetic algorithm (GA) which combined the GA model with the knowledge model. The GA model searches the feasible space of optimization problem based on the "neighborhood search" mechanism. The knowledge model discovers some knowledge from the previous optimization process, and applies the obtained knowledge to guide the subsequent optimization process. Findings - The experimental results suggest that the proposed KGA is feasible and available. The effective integration of GA model and knowledge model has greatly improved the optimization performance of KGA. Originality/value - The technological innovation of complex products is one of effective approaches to establish the core competitiveness in future. For this reason, the KGA is proposed to the technological processes optimization of complex products.
Year
DOI
Venue
2015
10.1108/JKM-11-2014-0454
JOURNAL OF KNOWLEDGE MANAGEMENT
Keywords
Field
DocType
Complex product,Component knowledge,Genetic algorithm,Operator knowledge,Parameter knowledge,Technological process
Computer science,Meta-optimization,Originality,Artificial intelligence,Neighborhood search,Optimization problem,Management science,Genetic algorithm
Journal
Volume
Issue
ISSN
19
SP1
1367-3270
Citations 
PageRank 
References 
1
0.35
3
Authors
4
Name
Order
Citations
PageRank
Yuchun Yao110.35
Yan Wang253.49
Lining Xing3168.51
Hao Xu4136.30