• Home
  • Browse
    • Current Issue
    • By Issue
    • By Author
    • By Subject
    • Author Index
    • Keyword Index
  • Submit Paper
  • Journal Info
    • About Journal
    • Aims and Scope
    • Editorial Board
    • Advisory Editorial Board
    • Editorial Staff
    • Publication Ethics
    • Indexing Databases
    • Related Links
    • FAQ
    • Peer Review Process
    • News
  • Guide for Authors
  • Reviewers
  • Contact Us
 
  • Login
  • Register
Home Article Info
  • Save Records
  • |
  • Printable Version
  • |
  • Recommend
  • |
  • Export to
    RIS
International Journal of Supply and Operations Management
Articles in Press
Current Issue
Journal Archive
Volume Volume 3 (2016)
Volume Volume 2 (2015)
Volume Volume 1 (2014)

An Efficient Genetic Agorithm for Solving the Multi-Mode Resource-Constrained Project Scheduling Problem Based on Random Key Representation

Article 6, Volume 2, Issue 3, Autumn 2015, Page 905-924  XML PDF (1218 K)
Document Type: Research Paper
Authors
Mohammad Hassan Sebt ; Mohammad Reza Afshar; Yagub Alipouri
Amirkabir University of Technology, Tehran, Iran
Abstract
In this paper, a new genetic algorithm (GA) is presented for solving the multi-mode resource-constrained project scheduling problem (MRCPSP) with minimization of project makespan as the objective subject to resource and precedence constraints. A random key and the related mode list (ML) representation scheme are used as encoding schemes and the multi-mode serial schedule generation scheme (MSSGS) is considered as the decoding procedure. In this paper, a simple, efficient fitness function is proposed which has better performance compared to the other fitness functions in the literature. Defining a new mutation operator for ML is the other contribution of the current study. Comparing the results of the proposed GA with other approaches using the well-known benchmark sets in PSPLIB validates the effectiveness of the proposed algorithm to solve the MRCPSP.
Keywords
Combinatorial optimization; Multi-mode project scheduling; Resource constraints; Genetic algorithm; Random key representation
Main Subjects
operations planning,scheduling & control
Statistics
Article View: 1,042
PDF Download: 818
Home | Glossary | News | Aims and Scope | Sitemap
Top Top

linkedin
© 2017 - Journal Management System. Created by sinaweb.