Effective demand response and GANs for optimal constraint unit commitment in solar‐tidal based microgrids

Author:

Mobtahej Mohammadamin1ORCID,Esapour Khodakhast2,Tajalli Seyede Zahra2,Mohammadi Mojtaba2

Affiliation:

1. School of Electrical Engineering Kazeroon Islamic Azad University Fars Iran

2. Department of Electrical Engineering Isfahan (Khorasgan) Branch Islamic Azad University Isfahan Iran

Publisher

Institution of Engineering and Technology (IET)

Subject

Renewable Energy, Sustainability and the Environment

Reference21 articles.

1. Effective management of energy internet in renewable hybrid microgrids: A secured data driven resilient architecture;Mohammadi M.;IEEE Trans. Ind. Inf.

2. A Hybrid Framework for Detecting and Eliminating Cyber-Attacks in Power Grids

3. Hybrid machine learning based energy policy and management in the renewable-based microgrids considering hybrid electric vehicle charging demand

4. Quantifying residential demand response potential using a mixture density recurrent neural network;Shirsat A.;Int. J. Electr. Power Energy Syst.,2021

5. Improvement of customer baselines for the evaluation of demand response through the use of physically‐based load models;Gabaldón A.;Utilities Policy,2021

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