Abstract

An R2 indicator based selection method is a major ingredient in the formulation of indicator based evolutionary multiobjective optimization algorithms. The existing classical indicator based selection methodologies have demonstrated an excellent performance to solve low-dimensional optimization problems. However, the R2 indicator based evolutionary multiobjective optimization algorithms encounter enormous challenges in high-dimensional objective space. Our main purpose is to explore how to extend the R2 indicator to handle many-objective optimization problems. After analyzing the R2 indicator, the objective space partition strategy, and the decomposition method, we propose a steady-state evolutionary algorithm based on the R2 indicator and the decomposition method, named, R2-MOEA/D, to obtain well-converged and well-distributed Pareto front. The main contribution of this paper contains two aspects. (1) The convergence and diversity for the R2 indicator based selection are analyzed. Two improper selection situations will be properly solved via applying the decomposition method. (2) According to the position of a new individual in the steady-state evolutionary algorithm, two different objective space partition strategies and the corresponding selection methods are proposed. Extensive experiments are conducted on a variety of benchmark test problems, and the experimental results demonstrate that the proposed algorithm has competitive performance in comparison with several tailored algorithms for many-objective optimization.

Highlights

  • A large number of evolutionary multiobjective optimization algorithms (EMOAs) have been introduced to solve multiobjective optimization problems (MOPs) [1,2,3,4,5]

  • R2-MOEA/D is based on the hybrid selection strategy which is based on the R2 indicator and decomposition method

  • This paper provides a new algorithm to address manyobjective optimization problems: R2-MOEA/D

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Summary

Introduction

A large number of evolutionary multiobjective optimization algorithms (EMOAs) have been introduced to solve multiobjective optimization problems (MOPs) [1,2,3,4,5]. Most of these algorithms have demonstrated their excellent performance to deal with MOPs involving two or three objectives. Some basic definitions and related works about R2-MOEA/D are firstly introduced. Xn) is the vector of decision variables, n is the dimension of solution space, fi(x) According to [34], the definition of the R2 indicator can be given as follows

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