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A hybrid shuffled complex evolution approach with pattern search for unconstrained optimization

机译:具有模式搜索的混合随机混合复杂进化方法无约束优化

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The difficulties associated with using classical mathematical programming methods on complex optimization problems have contributed to the development of alternative and efficient numerical approaches. Recently, to overcome the limitations of classical optimization methods, researchers have proposed a wide variety of meta-heuristies for searching near-optimum solutions to problems. Among the existing meta-heuristic algorithms, a relatively new optimization paradigm is the Shuffled Complex Evolution at the University of Arizona (SCE-UA) which is a global optimization strategy that combines concepts of the competition evolution theory, downhill simplex procedure of Nelder-Mead, controlled random search and complex shuffling. In an attempt to reduce processing time and improve the quality of solutions, particularly to avoid being trapped in local optima, in this paper is proposed a hybrid SCE-UA approach. The proposed hybrid algorithm is the combination of SCE-UA (without Nelder-Mead downhill simplex procedure) and a pattern search approach, called SCE-PS, for unconstrained optimization. Pattern search methods are derivative-free, meaning that they do not use explicit or approximate derivatives. Moreover, pattern search algorithms are direct search methods well suitable for the global optimization of highly nonlinear, multiparameter, and multimodal objective functions. The proposed SCE-PS method is tested with six benchmark optimization problems. Simulation results show that the proposed SCE-PS improves the searching performance when compared with the classical SCE-UA and a genetic algorithm with floating-point representation for all the tested problems. As evidenced by the performance indices based on the mean performance of objective function in 30 runs and mean of computational time, the SCE-PS algorithm has demonstrated to be effective and efficient at locating best-practice optimal solutions for unconstrained optimization.
机译:在复杂的优化问题上使用经典的数学规划方法所带来的困难促成了替代和有效数值方法的发展。最近,为克服经典优化方法的局限性,研究人员提出了各种各样的元启发式方法来寻找问题的近乎最佳解。在现有的元启发式算法中,一个相对较新的优化范例是亚利桑那大学的混洗复杂演化(SCE-UA),这是一种全球优化策略,结合了竞争演化理论,Nelder-Mead的下坡单纯形程序的概念,受控的随机搜索和复杂的改组。为了减少处理时间并提高解决方案的质量,尤其是避免陷入局部最优,本文提出了一种混合SCE-UA方法。提出的混合算法是SCE-UA(无Nelder-Mead下坡单纯形程序)和模式搜索方法(称为SCE-PS)的组合,用于无约束优化。模式搜索方法无导数,这意味着它们不使用显式或近似导数。此外,模式搜索算法是直接搜索方法,非常适合高度非线性,多参数和多模式目标函数的全局优化。所提出的SCE-PS方法经过六个基准优化问题的测试。仿真结果表明,与经典的SCE-UA和带有浮点表示的遗传算法相比,所提出的SCE-PS可以提高所有搜索问题的搜索性能。正如基于30次运行中目标函数的平均性能和计算时间的性能指标所证明的那样,SCE-PS算法已被证明可以有效地找到无约束优化的最佳实践最优解。

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