Multi-objective optimization model and algorithm implementation of the distributed power generation system for renewable energy in China and Russia

This study focuses on solving multi-objective optimization problems in distributed power generation systems (DPGS) for renewable energy in China and Russia, including low economic efficiency, poor environmental benefits, and insufficient system reliability. It proposes a hybrid optimization model that integrates deep learning with an improved particle swarm optimization algorithm, namely Adaptive Linear Decreasing Inertia Weight Particle Swarm Optimization with Mutation Strategy (ALD-MPSO). By introducing a Dense Bidirectional Long Short-Term Memory with Attention Mechanism (DBI-LSTM-AM) model, which combines a Bidirectional Long Short-Term Memory (Bi-LSTM) network, Dense layers, and an Attention Mechanism (AM), the model performs time-series forecasting of energy demand. Coupled with the ALD-MPSO algorithm, the model simultaneously optimizes economic efficiency, environmental benefits, and system reliability. The study designs a renewable energy prediction and optimization model for DPGS, based on the fusion of the DBI-LSTM-AM and ALD-MPSO algorithms (DBI-LSTM-2AM-PSO). Finally, the model's performance is evaluated. Experimental results show that the proposed model achieves superior prediction accuracy (95.53 %), with an F1 score of 91.41 %, and a mean squared error (MSE) of 0.049, outperforming the benchmark algorithms. Additionally, the fitness value in MOO is reduced to 0.47, with a training time of only 25.7 s and low computational resource consumption (Center Processing Unit usage at 10.55 %). This study provides effective technical support for the intelligent management of DPGS in the renewable energy sectors of China and Russia. © 2025 Elsevier B.V., All rights reserved.

Авторы
Ma
Издательство
KeAi Communications Co.
Язык
English
Статус
Published
Номер
100201
Том
7
Год
2025
Организации
  • 1 RUDN University, Moscow, Russian Federation
Ключевые слова
Deep learning; Distributed power generation system; Multi-objective optimization; Particle swarm optimization algorithm; Renewable energy
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Avatkov V.A., Apanovich M.Yu., Borzova A.Yu., Bordachev T.V., Vinokurov V.I., Volokhov V.I., Vorobev S.V., Gumensky A.V., Иванченко В.С., Kashirina T.V., Матвеев О.В., Okunev I.Yu., Popleteeva G.A., Sapronova M.A., Свешникова Ю.В., Fenenko A.V., Feofanov K.A., Tsvetov P.Yu., Shkolyarskaya T.I., Shtol V.V. ...
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