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Evolutionary and population dynamics of 3 parents differential evolution (3PDE) using self-adaptive tuning methodologies

机译:使用自适应调整方法的3个父母差分进化(3PDE)的进化和种群动态

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摘要

Differential Evolution is known for its simplicity and effectiveness as an evolutionary optimizer. In recent years, many researchers have focused on the exploration of Differential Evolution (DE). The objective of this paper is to show the evolutionary and population dynamics for the empirical testing on 3-Parents Differential Evolution (3PDE) for unconstrained function optimization (Teng et al. 2007). In this paper, 50 repeated evolutionary runs for each of 20 well-known benchmarks were carried out to test the proposed algorithms against the original 4-parents DE algorithm. As a result of the observed evolutionary dynamics, 3PDE-SAF performed the best among the preliminary proposed algorithms that included 3PDE-SACr and 3PDE-SACrF. Subsequently, 3PDE-SAF is chosen for the self-adaptive population size for testing dynamic population sizing methods using the absolute (3PDE-SAF-Abs) and relative (3PDE-SAF-Rel) population size encodings. The final result shows that 3PDE-SAF-Rel produced a better performance and convergence overall compared to all the other proposed algorithms, including the original DE. In terms of population dynamics, the population size in 3PDE-SAF-Abs exhibited disadvantageously high dynamics that caused less efficient results. On the other hand, the population size in 3PDE-SAF-Rel was observed to be approximately constant at ten times the number of variables being optimized, hence giving a better and more stable performance.
机译:差异进化作为进化优化器以其简单性和有效性而闻名。近年来,许多研究人员将重点放在差分进化(DE)的探索上。本文的目的是展示用于无约束函数优化的3-Parents差异进化(3PDE)经验测试的进化和种群动力学(Teng et al。2007)。在本文中,对20个知名基准中的每一个进行了50次重复的进化运算,以针对原始的4父母DE算法对所提出的算法进行测试。由于观察到的进化动力学,在包括3PDE-SACr和3PDE-SACrF在内的初步提出的算法中,3PDE-SAF表现最佳。随后,选择3PDE-SAF作为自适应人口规模,以使用绝对(3PDE-SAF-Abs)和相对(3PDE-SAF-Rel)人口规模编码测试动态人口规模确定方法。最终结果显示,与所有其他提议的算法(包括原始DE)相比,3PDE-SAF-Rel产生了更好的性能和收敛性。就种群动态而言,3PDE-SAF-Ab中的种群规模显示出不利的高动态,从而导致效率较低。另一方面,观察到3PDE-SAF-Rel中的种群大小大致恒定,是优化变量数的十倍,因此具有更好,更稳定的性能。

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