A multi-objective Chaos Game Optimization algorithm based on decomposition and random learning mechanisms for numerical optimization

进化算法 数学优化 算法 计算机科学 多目标优化 最优化问题 粒子群优化 局部最优 数学
作者
Salma Yacoubi,Ghaith Manita,Amit Chhabra,Ouajdi Korbaa,Seyedali Mirjalili
出处
期刊:Applied Soft Computing [Elsevier BV]
卷期号:144: 110525-110525 被引量:39
标识
DOI:10.1016/j.asoc.2023.110525
摘要

Chaos Game Optimization (CGO) is a heuristic optimization approach that estimates global optima for optimization problems using operators based on chaos theory. This paper first proposes a multi-objective variant of this recent algorithm using decomposition. The proposed algorithm is called Multi-Objective CGO based on Decomposition (MOCGO/D), in which the decomposition step employs a Normalized Boundary Intersection (NBI) technique for decomposing the multi-objective problem into single-objective sub-problems. A novel Random Learning (RL) strategy based on the combination of multiple strategies such as Opposition-based learning, Levy flight operator, Orthogonal learning, and the tangent flight operator, is incorporated in the MOCGO/D to propose an enhanced version called MOCGO/DR algorithm. The RL strategy aims to improve the balance between exploitation and exploration of the conventional CGO, leading to better convergence behavior and avoiding getting trapped in local optima. The first set of experimental results demonstrates that MOCGO/DR can perform better than three other variants of MOCGO, namely archive-based MOCGO (MOCGO/A), crowding-distance based MOCGO (MOCGO/CD) and decomposition-based MOCGO (MOCGO/D) on 62% of test cases. A second set of experiments and evaluation shows that the proposed approach provides better results than well-regarded algorithms, including strength pareto evolutionary algorithm (SPEA2), multiobjective evolutionary algorithm based on decomposition (MOEA/D), multi-objective particle swarm optimization algorithm based on decomposition (MPSO/D), multistage evolutionary algorithm (MSEA), and a fast and elitist multi- objective genetic algorithm (NSGAII) when using performance measures such as GD, IGD, HV, Spacing, Spread, and Hausdorff distance on 65% test cases. This two-stage evaluation was conducted on three different benchmark test sets: the Deb–Thiele–Laumanns–Zitzler (DTLZ) test suite, the Zitzler–Deb–Thiele (ZDT) test suite, and the bias test suite (BT). Overall, the Friedman test results for all performance measures show that MOCGO/DR is demonstrated to be a competitive candidate as a multi-objective optimization algorithm in this space. • This work proposed the Multi-objective Optimization Algorithm called MOCGO/DR. • NBI technique decomposed multi-objective problem into single-objective sub-problems. • A Random Learning strategy is added to balance the exploration–exploitation phases. • MOCGO/DR is compared against state-of-the-art multi-objective approaches. • Experimental results showed the superiority of the MOCGO/DR over established approaches.
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