Genetic Stochastic Method of Global Extremum Search for Multivariable Function

Q3 Physics and Astronomy
S. Ermakov, L. Vladimirova, I. Rubtsova, A. Rubanik
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引用次数: 1

Abstract

This article is devoted to the development of stochastic methods of global extremum search. The modification of the annealing simulation algorithm [Ermakov and Semenchikov, 2019] is combined with the covariance matrix adaptation method [Ermakov, Kulikov and Leora, 2017]. In this case, an effective computational approach [Ermakov and Mitioglova, 1977] is used for modeling the multivariate normal distribution. The special algorithms of covariance matrices adaptation are suggested to avoid the obtaining of a local extremum instead of a global one. The methods proposed are successfully applied to the problem of nonlinear regression parameters calculation. This problem often arises in physics and mathematics and may be reduced to global extremum search. In particular case considered the extremum of ravine function of 14 variables was found.
多变量函数全局极值搜索的遗传随机方法
本文致力于全局极值搜索的随机方法的发展。退火模拟算法[Ermakov和Semencikov,2019]的修改与协方差矩阵自适应方法[Ermakov,Kulikov和Leora,2017]相结合。在这种情况下,一种有效的计算方法[Ermakov和Mitioglova,1977]用于对多元正态分布进行建模。提出了协方差矩阵自适应的特殊算法,以避免获得局部极值而不是全局极值。所提出的方法已成功地应用于非线性回归参数的计算问题。这个问题经常出现在物理学和数学中,可以归结为全局极值搜索。在特殊情况下,发现了14个变量的峡谷函数的极值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cybernetics and Physics
Cybernetics and Physics Chemical Engineering-Fluid Flow and Transfer Processes
CiteScore
1.70
自引率
0.00%
发文量
17
审稿时长
10 weeks
期刊介绍: The scope of the journal includes: -Nonlinear dynamics and control -Complexity and self-organization -Control of oscillations -Control of chaos and bifurcations -Control in thermodynamics -Control of flows and turbulence -Information Physics -Cyber-physical systems -Modeling and identification of physical systems -Quantum information and control -Analysis and control of complex networks -Synchronization of systems and networks -Control of mechanical and micromechanical systems -Dynamics and control of plasma, beams, lasers, nanostructures -Applications of cybernetic methods in chemistry, biology, other natural sciences The papers in cybernetics with physical flavor as well as the papers in physics with cybernetic flavor are welcome. Cybernetics is assumed to include, in addition to control, such areas as estimation, filtering, optimization, identification, information theory, pattern recognition and other related areas.
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