Title of article
A knowledge-based NSGAII approach for scheduling in virtual manufacturing cells
Author/Authors
Zandieh، M. نويسنده Management and Accounting Faculty,Department of Industrial Management,Shahid Beheshti University,Tehran,Iran ,
Issue Information
دوفصلنامه با شماره پیاپی سال 2016
Pages
19
From page
89
To page
107
Abstract
This paper considers the job scheduling problem in virtual manufacturing cells (VMCs) with the goal of minimizing two objectives namely, makespan and total travelling distance. To solve this problem two algorithms are proposed: traditional non-dominated sorting genetic algorithm (NSGA-II) and knowledge-based non-dominated sorting genetic algorithm (KBNSGA-II). The difference between these algorithms is that, KBNSGA-II has an additional learning module. Finally, we draw an analogy between the results obtained from algorithms applied to various test problems. The superiority of our KBNSGA-II, based on set coverage and mean ideal distance metrics, is inferred from results.
Keywords
Nondominated sorting genetic algorithm , Virtual manufacturing cells , Knowledge based algorithm , Job Scheduling , Multi-Objective optimization
Journal title
Journal of Industrial Engineering and Management Studies
Serial Year
2016
Journal title
Journal of Industrial Engineering and Management Studies
Record number
2401315
Link To Document