Please use this identifier to cite or link to this item: http://elar.urfu.ru/handle/10995/131171
Title: Topology Optimization of the Network with Renewable Energy Sources Generation Based on a Modified Adapted Genetic Algorithm
Authors: Bramm, A. M.
Khalyasmaa, A. I.
Eroshenko, S. A.
Matrenin, P. V.
Papkova, N. A.
Sekatski, D. A.
Issue Date: 2022
Publisher: Belarusian National Technical University
Citation: Bramm, AM, Khalyasmaa, AI, Eroshenko, SA, Matrenin, PV, Papkova, NA & Sekatski, DA 2022, 'Оптимизация топологии сети с ВИЭ-генерацией на основе модифицированного адаптированного генетического алгоритма', Energetika. Proceedings of CIS Higher Education Institutions and Power Engineering Associations, Том. 65, № 4, стр. 341-354. https://doi.org/10.21122/1029-7448-2022-65-4-341-354
Bramm, A. M., Khalyasmaa, A. I., Eroshenko, S. A., Matrenin, P. V., Papkova, N. A., & Sekatski, D. A. (2022). Оптимизация топологии сети с ВИЭ-генерацией на основе модифицированного адаптированного генетического алгоритма. Energetika. Proceedings of CIS Higher Education Institutions and Power Engineering Associations, 65(4), 341-354. https://doi.org/10.21122/1029-7448-2022-65-4-341-354
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 was a 15-node circuit of a power network 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 derived 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. © 2022 Belarusian National Technical University. All rights reserved.
Keywords: DISTRIBUTED GENERATION
DISTRIBUTION NETWORK
GENETIC ALGORITHM
LOAD CURVE
METAHEURISTIC METHODS
MODE OPTIMIZATION
POWER LOSSES
RESTRUCTURING
SOLAR ENERGY
URI: http://elar.urfu.ru/handle/10995/131171
Access: info:eu-repo/semantics/openAccess
cc-by
License text: https://creativecommons.org/licenses/by/4.0/
SCOPUS ID: 85138083595
PURE ID: 30978894
632bea92-8e91-4b39-987a-7b5bed8699b4
ISSN: 1029-7448
DOI: 10.21122/1029-7448-2022-65-4-341-354
Appears in Collections:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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