Evolutionary multiobjective optimization in noisy problem environments

Evolutionary multiobjective optimization in noisy problem environments

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Article ID: iaor200971812
Country: United States
Volume: 15
Issue: 6
Start Page Number: 559
End Page Number: 595
Publication Date: Dec 2009
Journal: Journal of Heuristics
Authors: ,
Keywords: heuristics, programming: multiple criteria
Abstract:

This paper presents a multiobjective evolutionary algorithm (MOEA) capable of handling stochastic objective functions. We extend a previously developed approach to solve multiple objective optimization problems in deterministic environments by incorporating a stochastic nondomination-based solution ranking procedure. In this study, concepts of stochastic dominance and significant dominance are introduced in order to better discriminate among competing solutions. The MOEA is applied to a number of published test problems to assess its robustness and to evaluate its performance relative to NSGA-II. Moreover, a new stopping criterion is proposed, which is based on the convergence velocity of any MOEA to the true Pareto optimal front, even if the exact location of the true front is unknown. This stopping criterion is especially useful in real-world problems, where finding an appropriate point to terminate the search is crucial.

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