Methods and algorithms of swarm intelligence for the problems of nonlinear regression analysis and optimization of complex processes, objects, and systems: review and modification of methods and algorithms

Vladyslav V. Khaidurov, Vadym Tatenko, Mykyta Lytovchenko, Tamara Tsiupii, Tetiana Zhovnovach
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Abstract

The development of high-speed methods and algorithms for global multidimensional optimization and their modifications in various fields of science, technology, and economics is an urgent problem that involves reducing computing costs, accelerating, and effectively searching for solutions to such problems. Since most serious problems involve the search for tens, hundreds, or thousands of optimal parameters of mathematical models, the search space for these parameters grows non-linearly. Currently, there are many modern methods and algorithms of swarm intelligence that solve today's scientific and applied problems, but they require modifications due to the large spaces of searching for optimal model parameters. Modern swarm intelligence has significant potential for application in the energy industry due to its ability to optimize and solve complex problems. It can be used to solve scientific and applied problems of optimizing energy consumption in buildings, industrial complexes, and urban systems, reducing energy losses, and increasing the efficiency of resource use, as well as for the construction of various elements of energy systems in general. Well-known methods and algorithms of swarm intelligence are also actively applied to forecast energy production from renewable sources, such as solar and wind energy. This allows better management of energy sources and planning of their use. The relevance of modifications of methods and algorithms is due to the issues of speeding up their work when solving machine learning problems, in particular, in nonlinear regression models, classification, and clustering problems, where the number of observed data can reach tens and hundreds of thousands or more. The work considers and modifies well-known effective methods and algorithms of swarm intelligence (particle swarm optimization algorithm, bee optimization algorithm, differential evolution method) for finding solutions to multidimensional extremal problems with and without restrictions, as well as problems of nonlinear regression analysis. The obtained modifications of the well-known classic effective methods and algorithms of swarm intelligence, which are present in the work, effectively solve complex scientific and applied tasks of designing complex objects and systems. A comparative analysis of methods and algorithms will be conducted in the next study on this topic. Keywords: optimization, swarm intelligence, mathematical modelling, nonlinear regression, complex objects and systems.
用于复杂过程、对象和系统的非线性回归分析和优化问题的群集智能方法和算法:方法和算法的回顾与修改
在科学、技术和经济的各个领域,开发全局多维优化及其修改的高速方法和算法是一个亟待解决的问题,它涉及降低计算成本、加速和有效搜索此类问题的解决方案。由于大多数严重问题都涉及数学模型数十、数百或数千个最优参数的搜索,这些参数的搜索空间呈非线性增长。目前,有许多现代蜂群智能方法和算法可以解决当今的科学和应用问题,但由于搜索最佳模型参数的空间很大,因此需要对这些方法和算法进行修改。由于现代蜂群智能具有优化和解决复杂问题的能力,因此在能源行业具有巨大的应用潜力。它可用于解决优化建筑物、工业综合体和城市系统的能源消耗、减少能源损失、提高资源利用效率等科学和应用问题,也可用于一般能源系统各种要素的建设。众所周知的蜂群智能方法和算法也被积极应用于可再生能源(如太阳能和风能)的能源生产预测。这样可以更好地管理能源和规划能源的使用。在解决机器学习问题时,特别是在非线性回归模型、分类和聚类问题中,观测数据的数量可能达到数万或数十万甚至更多,因此,修改方法和算法的相关性在于加快其工作速度。这项工作考虑并修改了众所周知的群智能有效方法和算法(粒子群优化算法、蜜蜂优化算法、微分进化法),用于寻找有限制和无限制的多维极值问题以及非线性回归分析问题的解决方案。作品中对众所周知的群集智能经典有效方法和算法的修改,有效地解决了设计复杂对象和系统的复杂科学和应用任务。在下一步研究中,我们将对这些方法和算法进行比较分析。关键词:优化、蜂群智能、数学建模、非线性回归、复杂物体和系统。
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