Topology Optimization of the Network with Renewable Energy Sources Generation Based on a Modified Adapted Genetic Algorithm

Q3 Energy
A. Bramm, A. Khalyasmaa, S. Eroshenko, P. Matrenin, N. A. Papkova, D. A. Sekatski
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引用次数: 4

Abstract

The article presents an adaptive genetic algorithm developed by the authors, which makes it possible to optimize the topology of a power network with distributed generation. The optimization was based on bioinspired methods. The objects of the study were a 15-node circuit of a power net-work with photovoltaic stations and a 14-node IEEE augmented circuit with distributed generation sources (three wind farms and two photovoltaic plants). The simulation of the modes of electric power systems was performed using the Pandapower library for the Python programming language, which is in the public domain. Three types of electric load of consumers were considered, reflecting the natures of electricity consumption in the nodes of real electric power systems, the results of numerical studies were presented. The proposed genetic algorithm used two different functions of interbreeding, the function of mutation, selection of the best individuals and mass mutation (complete population renewal). At the end of each iteration of the algorithm operation, statistical dependencies were de-rived that characterized its work: the best (minimal losses) and average adaptability in the population, a list of the best individuals throughout all iterations, etc. The verification was carried out in comparison with the results obtained by a complete search of possible radial configurations of the system, and it showed that the developed genetic algorithm had fast convergence, high accuracy and was able to work correctly with different configurations of electrical circuits, generation and load structures. The algorithm can be used in conjunction with renewable energy sources generation forecasting systems for the day ahead when planning the operating modes of power units in order to minimize the costs of covering electricity losses and improve the quality of electricity supplied.
基于改进自适应遗传算法的可再生能源发电网络拓扑优化
本文提出了一种自适应遗传算法,使分布式发电电网的拓扑优化成为可能。优化是基于生物启发的方法。本研究的对象是一个包含光伏电站的15节点电网电路和一个包含分布式发电源(三个风电场和两个光伏电站)的14节点IEEE增强电路。电力系统模式的模拟是使用公共领域的Python编程语言的Pandapower库进行的。考虑用户的三种负荷类型,反映了实际电力系统中各节点的用电性质,给出了数值研究结果。提出的遗传算法使用了两种不同的杂交功能,即突变功能,即最佳个体的选择功能和群体突变(完全群体更新)功能。在算法操作的每次迭代结束时,导出表征其工作的统计依赖性:种群中的最佳(最小损失)和平均适应性,所有迭代中最佳个体的列表,等等。结果表明,所提出的遗传算法收敛速度快,精度高,能够在不同的电路配置、发电结构和负载结构下正常工作。该算法可与可再生能源发电预测系统结合使用,在规划发电机组的运行模式时,以最大限度地减少弥补电力损失的成本,提高电力供应质量。
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
CiteScore
1.60
自引率
0.00%
发文量
32
审稿时长
8 weeks
期刊介绍: The most important objectives of the journal are the generalization of scientific and practical achievements in the field of power engineering, increase scientific and practical skills as researchers and industry representatives. Scientific concept publications include the publication of a modern national and international research and achievements in areas such as general energetic, electricity, thermal energy, construction, environmental issues energy, energy economy, etc. The journal publishes the results of basic research and the advanced achievements of practices aimed at improving the efficiency of the functioning of the energy sector, reduction of losses in electricity and heat networks, improving the reliability of electrical protection systems, the stability of the energetic complex, literature reviews on a wide range of energy issues.
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