Two efficient algorithms for constructing almost even approximations of the Pareto front in multi-objective optimization problems |
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Authors: | Azam Dolatnezhadsomarin |
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Affiliation: | Department of Mathematics and Computer Sciences, Amirkabir University of Technology, Tehran, Iran |
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Abstract: | In this article, two algorithms are proposed for constructing almost even approximations of the Pareto front of multi-objective optimization problems. The first algorithm is a hybrid of the ε-constraint and Pascoletti–Serafini scalarization methods for solving bi-objective problems. The second is a modification of the successive Pareto optimization (SPO) algorithm for solving three-objective problems. In these algorithms, the MATLAB fmincon solver is used to solve single-objective optimization problems, which returns a local optimal solution. Some metrics are considered to evaluate the quality of approximations obtained by the suggested algorithms on six test problems, and their results are compared with other algorithms (normal constraint, weighted constraint, SPO, differential evolution, multi-objective evolutionary algorithm/decomposition–differential evolution, non-dominated sorting genetic algorithm-II and S-metric selection evolutionary multi-objective algorithm). Experimental results show that the proposed algorithms provide almost even approximations of the whole Pareto front, and better quality of approximation and CPU time compared with established algorithms. |
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Keywords: | Multi-objective optimization problem Pareto-optimal solution Pascoletti–Serafini scalarization approach ε-constraint method |
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