- Muhammad Hamza Zafar, Noman Mujeeb Khan, Mohamad Abou Houran, Majad Mansoor, Naureen Akhtar, Filippo Sanfilippo, “A novel hybrid deep learning model for accurate state of charge estimation of Li-Ion batteries for electric vehicles under high and low temperature”, Energy, 292, 2024, 130584
- Denis Sidorov, Fang Liu, Yonghui Sun, “Machine Learning for Energy Systems”, Energies, 13, № 18, 2020, 4708
- Mahmoud H. El-Bahay, Mohammed E. Lotfy, Mohamed A. El-Hameed, “Computational Methods to Mitigate the Effect of High Penetration of Renewable Energy Sources on Power System Frequency Regulation: A Comprehensive Review”, Arch Computat Methods Eng, 30, № 1, 2023, 703
- Dmitriy N. Karamov, Ildar R. Muftahov, Alexey V. Zhukov, F.-J. Lin, N. Voropai, C.-I. Chen, K. Suslov, D. Sidorov, A.M. Foley, Y. Sun, P. Lombardi, A. Kler, “Increasing Storage Battery Lifetime in Autonomous Photovoltaic Systems with Power Generation Structure Varying Throughout the Year”, E3S Web Conf., 289, 2021, 05006
- Dmitriy N. Karamov, Konstantin V. Suslov, “Structural optimization of autonomous photovoltaic systems with storage battery replacements”, Energy Reports, 7, 2021, 349
- Zhenhua Cui, Le Kang, Liwei Li, Licheng Wang, Kai Wang, “A hybrid neural network model with improved input for state of charge estimation of lithium-ion battery at low temperatures”, Renewable Energy, 198, 2022, 1328
- Kailun Wang, Qiang Song, Shukai Xu, “Analysis and Design of the Energy Storage Requirement of Hybrid Modular Multilevel Converters Using Numerical Integration and Iterative Solution”, Energies, 15, № 3, 2022, 1225
- Dmitriy N. Karamov, Ilya M. Minarchenko, Anton V. Kolosnitsyn, Nikita V. Pavlov, “Installed capacity optimization of autonomous photovoltaic systems under energy service contracting”, Energy Conversion and Management, 240, 2021, 114256
- Ildar Muftahov, Denis Sidorov, Aleksei Zhukov, Dmitriy Karamov, 1301, Progress in Intelligent Decision Science, 2021, 808
- Rakshith Subramanya, Seppo A. Sierla, Valeriy Vyatkin, “Exploiting Battery Storages With Reinforcement Learning: A Review for Energy Professionals”, IEEE Access, 10, 2022, 54484