首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >An analysis on convergence and convergence rate estimate of elitist genetic algorithms in noisy environments
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An analysis on convergence and convergence rate estimate of elitist genetic algorithms in noisy environments

机译:嘈杂环境中精英遗传算法的收敛性和收敛速度估计分析

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摘要

Random noise perturbs objective functions in many practical problems, and genetic algorithms (GAs) have been widely proposed as an effective optimization tool for dealing with noisy objective functions. However, little papers for convergence and convergence speed of genetic algorithms in noisy environments (GA-NE) have been published. In this paper, a Markov chain that models elitist genetic algorithms in noisy environments (EGA-NE) was constructed under the circumstance that objective function is perturbed only by additive random noise, and it was proved to be an absorbing state Markov chain. The convergence of EGA-NE was proved on the basis of the character of the absorbing state Markov chain, its convergence rate was analyzed, and its upper and lower bounds for the iteration number expectation were derived when EGA-NE first gets a globally optimal solution.
机译:随机噪声扰乱了许多实际问题中的目标函数,遗传算法(GA)已被广泛提出来作为一种有效的优化工具,用于处理嘈杂的目标函数。然而,关于噪声环境中遗传算法的收敛性和收敛速度的文献很少。本文在目标函数仅受加性随机噪声干扰的情况下,构造了一个在嘈杂环境中对精英遗传算法建模的马尔可夫链(EGA-NE),并证明它是一个吸收态马尔可夫链。根据吸收态马尔可夫链的性质证明了EGA-NE的收敛性,分析了其收敛速度,推导了EGA-NE首次获得全局最优解时对迭代次数期望的上界和下界。 。

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