Title :
Genetic Algorithms in the Framework of Dempster-Shafer Theory of Evidence for Maintenance Optimization Problems
Author :
Compare, Michele ; Zio, Enrico
Author_Institution :
Energy Dept., Politec. di Milano, Milan, Italy
Abstract :
The aim of this paper is to address the maintenance optimization problem when the maintenance models encode stochastic processes, which rely on parameters that are imprecisely known, and when these parameters are only determined through information elicited from experts. A genetic algorithms (GA)-based technique is proposed to deal with such uncertainty setting; this approach requires addressing three main issues: i) the representation of the uncertainty in the parameters and its propagation onto the fitness values; ii) the development of a ranking method to sort the obtained uncertain fitness values, in case of single-objective optimization; and iii) the definition of Pareto dominance, for multi-objective optimization problems. A known hybrid Monte Carlo-Dempster-Shafer Theory of Evidence method is used to address the first issue, whereas two novel approaches are developed for the second and third issues. For verification, a practical case study is considered concerning the optimization of maintenance for the nozzle system of a turbine in the Oil & Gas industry.
Keywords :
Monte Carlo methods; Pareto optimisation; gas industry; gas turbines; genetic algorithms; inference mechanisms; maintenance engineering; mechanical engineering computing; nozzles; petroleum industry; stochastic processes; GA-based technique; Pareto dominance; fitness value; gas industry; genetic algorithms; hybrid Monte Carlo-Dempster-Shafer theory of evidence method; maintenance model; maintenance optimization problem; multiobjective optimization problems; nozzle system; oil industry; ranking method; single-objective optimization; stochastic processes; turbine; uncertainty representation; Genetic algorithms; Maintenance engineering; Optimization; Reliability; Sociology; Statistics; Uncertainty; Evidence theory; genetic algorithms; maintenance optimization; pareto dominance;
Journal_Title :
Reliability, IEEE Transactions on
DOI :
10.1109/TR.2015.2410193