Optimal opportunistic maintenance policy using genetic algorithms, 1: formulation
- 1 June 1995
- journal article
- Published by Emerald Publishing in Journal of Quality in Maintenance Engineering
- Vol. 1 (2) , 34-49
- https://doi.org/10.1108/13552519510089574
Abstract
Describes the development of two genetic algorithm (GA) programs for cost optimization of opportunity‐based maintenance policies. The combinatorial optimization problem is formulated and it is shown that genetic algorithms are particularly suited to this type of problem. The theoretical basis and operations of a standard genetic algorithm (SGA) are presented with an iterative procedure necessary for implementation of the SGA to least‐cost part replacement. However, an SGA used in an iterative manner may limit the global search capability of the evolutionary computing technique and may lead to suboptimal solutions. To avoid this problem, an improved GA which considers more than two groups simultaneously is devised. This model is based on the permutation representation and genetic sequencing operators originally developed for the travelling salesman problem. The same example used with the SGA confirmed that the improved GA can bring additional savings.Keywords
This publication has 9 references indexed in Scilit:
- Optimal, opportunistic maintenance policy using genetic algorithms, 2: analysisJournal of Quality in Maintenance Engineering, 1995
- Optimal opportunistic maintenance policy using genetic algorithms, 1: formulationJournal of Quality in Maintenance Engineering, 1995
- Characterizing effective trading strategiesJournal of Economic Dynamics and Control, 1994
- An evolutionary approach to combinatorial optimization problemsPublished by Association for Computing Machinery (ACM) ,1994
- Maintenance management decision makingEuropean Journal of Operational Research, 1992
- Genetic Algorithms + Data Structures = Evolution ProgramsPublished by Springer Nature ,1992
- Reducibility among Combinatorial ProblemsPublished by Springer Nature ,1972
- Renewal TheoryRevue de l'Institut International de Statistique / Review of the International Statistical Institute, 1964
- Modern Probability Theory and Its ApplicationsPhysics Today, 1960