Hybrid genetic algorithms for multi-period part type selection and machine loading problems in flexible manufacturing system

Closed

Wayan F. Mahmudy, Romeo M. Marian, Lee H. S. Luong

2013 Proceeding - IEEE CYBERNETICSCOM 2013: IEEE International Conference on Computational Intelligence and Cybernetics Conference paper Cited by 24

Abstract

This paper addresses the multi-period part type selection and machine loading problems in flexible manufacturing system (FMS) with the objective of maximizing system throughput and maintaining balance of the system for the whole planning horizon. Various flexibilities including machine and tool flexibility, routing flexibility, and alternative production plans are considered. Hybridization of real coded genetic algorithms (RCGA) and variable neighborhood search (VNS) is proposed to simultaneously solve these NP-hard problems for the whole periods. The proposed hybrid genetic algorithms (HGA) are designed to balance the power of the algorithms to explore a huge search space and to exploit local search areas. The experiments show that addressing the problems for the whole periods simultaneously will produce better results comparable to those achieved by the sequential approach. © 2013 IEEE.

Affiliations

Department of Computer Science, Universitas Brawijaya (UB), Indonesia; School of Engineering, University of South Australia, Australia