Assessment of GTO: Performance evaluation via constrained benchmark function, and Optimized of Three Bar Truss Design Problem

Erdal Eker
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Abstract

The aim of this paper is to show that the artificial gorilla troops optimization (GTO) algorithm, as an optimizer, can cope with test functions such as CEC2019, and also to best optimize the three bar truss design problem as a constrained optimization problem. As a method, two statistical measures such as the best values provided by the algorithms and the standard deviation showing the distance between the values were studied. At the same time, the convergence rate of the algorithms compared by the convergence curves were examined. For this purpose, it has been competed against two other swarm-based algorithms, sine-cosine algorithm (SCA) and golden eagle optimization (GEO). The optimization of the three bar truss design problem, which is another side of the study, has been made. The GTO algorithm reached the best values in the optimization of the parameters of the problem. In addition to the convergence curve, statistical results have examined, and the advantages of GTO are revealed through box-plot figures that evaluate the relationship between median and quartiles and the distribution among all results.
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GTO的评估:基于约束基准函数的性能评估,以及三杆桁架设计问题的优化
本文的目的是为了证明人工大猩猩部队优化(GTO)算法作为一个优化器,可以应对CEC2019等测试函数,并将三杆桁架设计问题作为约束优化问题进行最佳优化。作为一种方法,研究了算法提供的最优值和表示值之间距离的标准差这两个统计度量。同时,通过收敛曲线比较了各算法的收敛速度。为此,它与另外两种基于群的算法,正弦余弦算法(SCA)和金鹰优化(GEO)进行了竞争。对三杆桁架的优化设计问题进行了研究,这是本文研究的另一个方面。GTO算法在优化问题参数时达到了最优值。除了收敛曲线外,还对统计结果进行了检验,并通过箱线图来评估中位数与四分位数之间的关系以及所有结果之间的分布,从而揭示了GTO的优势。
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