Optimizing self-adaptive gender ratio of elephant search algorithm by min-max strategy

Zhonghuan Tian, S. Fong, R. Wong, R. Millham
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引用次数: 2

Abstract

Elephant Search Algorithm (ESA) is one of the contemporary metaheuristic search recently proposed. Its efficacy depends largely on the right choice of gender ratio that balances the proportion between the number of male and female elephants as search agents with different functions. The male elephants are responsible for global exploration, roaming to new dimensions of search space. The female elephants focus on doing local search, for finding the optimal solution. The value for this gender ratio however needs to be manually chosen in the original version of ESA. An automatic mechanism for finding the appropriate gender ratio ESA agents is proposed in this paper. A self-adaptive method guided by min-max strategy is used to search for the optimal gender ratio of ESA. The self-adaptive method is simulated on nine optimization testing functions with different dimensions. Compared with enumerated global-best ratio, the self-adaptive ratio obtained by our method can save 90% of computation time at the cost of 20% compromise in fitness value in most testing functions. Simulation results are also compared with classical meta-heuristic algorithms including PSO, Firefly and WSA. ESA's performance with min-max ratio is also comparable towards these algorithms.
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用最小-最大策略优化大象搜索算法的自适应性别比例
大象搜索算法(Elephant Search Algorithm, ESA)是近年来提出的一种当代元启发式搜索算法。它的有效性很大程度上取决于正确选择性别比例,平衡雄性和雌性大象作为不同功能的搜索代理的数量比例。雄性大象负责全球探索,漫游到新的搜索空间维度。母象专注于局部搜索,寻找最优解。但是,这个性别比例的值需要在欧空局的原始版本中手动选择。本文提出了一种自动确定欧空局人员性别比例的机制。采用最小-最大策略指导下的自适应方法搜索最优空投性别比例。在9个不同维数的优化测试函数上对自适应方法进行了仿真。与枚举全局最优比相比,本文方法得到的自适应比可以节省90%的计算时间,但代价是大多数测试函数的适应度值会降低20%。仿真结果还与经典的元启发式算法PSO、Firefly和WSA进行了比较。最小-最大比的ESA性能也与这些算法相当。
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