We propose a new evolutionary multi-objective optimization (EMO) algorithm based on chaotic evolution optimization framework, which is called as multi-objective chaotic evolution (MOCE). It extends the optimization application of chaotic evolution algorithm to multi-objective optimization field. The non-dominated sorting and tournament selection using crowding distance are two techniques to ensure Pareto dominance and solution diversity in EMO algorithm. However, the search capability of multi-objective optimization algorithm is a serious issue for its practical application. Chaotic evolution algorithm presents a strong search capability for single objective optimization due to the ergodicity of chaotic system. Proposed algorithm is a promising multi-objective optimization algorithm that composes a search algorithm with strong search capability, dominant sort for keeping Pareto dominance, and tournament selection using crowding distance for increasing the solution diversity. We evaluate our proposed MOCE by comparing with NSGA-II and an algorithm using the basic framework of chaotic evolution but different mutation strategy. From the evaluation results, the MOCE presents a strong optimization performance for multi-objective optimization problems, especially in the condition of higher dimensional problems. We also analyse, discuss, and present some research subjects, open topics, and future works on the MOCE.
[1]
W. Karush.
Minima of Functions of Several Variables with Inequalities as Side Conditions
,
2014
.
[2]
Kalyanmoy Deb,et al.
A fast and elitist multiobjective genetic algorithm: NSGA-II
,
2002,
IEEE Trans. Evol. Comput..
[3]
Yan Pei,et al.
Chaotic Evolution: fusion of chaotic ergodicity and evolutionary iteration for optimization
,
2014,
Natural Computing.
[4]
Yan Pei,et al.
From Determinism and Probability to Chaos : Chaotic Evolution towards Philosophy and Methodology of Chaotic Optimization
,
2015
.
[5]
Kalyanmoy Deb,et al.
MULTI-OBJECTIVE FUNCTION OPTIMIZATION USING NON-DOMINATED SORTING GENETIC ALGORITHMS
,
1994
.
[6]
Kalyanmoy Deb,et al.
Muiltiobjective Optimization Using Nondominated Sorting in Genetic Algorithms
,
1994,
Evolutionary Computation.
[7]
Xin Yao,et al.
Many-Objective Evolutionary Algorithms
,
2015,
ACM Comput. Surv..
[8]
M. Farina,et al.
On the optimal solution definition for many-criteria optimization problems
,
2002,
2002 Annual Meeting of the North American Fuzzy Information Processing Society Proceedings. NAFIPS-FLINT 2002 (Cat. No. 02TH8622).
[9]
Lothar Thiele,et al.
Comparison of Multiobjective Evolutionary Algorithms: Empirical Results
,
2000,
Evolutionary Computation.