Details

Title

Development of rapid and reliable cuckoo search algorithm for global maximum power point tracking of solar PV systems in partial shading condition

Journal title

Archives of Control Sciences

Affiliation

Bentata, Khadidja : Laboratory Materials and Sustainable Development (LMDD), Electrical Engineering Department, Faculty of Science and Applied Sciences, University of Bouira, Algeria ; Mohammedi, Ahmed : Electrical Engineering Department, Faculty of Science and Applied Sciences, University of Bouira, Algeria ; Mohammedi, Ahmed : LTII Laboratory, University of Bejaia, Algeria ; Benslimane, Tarak : Electrical Engineering Department, University of M’sila, Algeria ; Benslimane, Tarak : SGRE Laboratory, University of Béchar, Algeria

Authors

Keywords

photovoltaic system ; maximum power point tracking ; partial shading ; cuckoosearch algorithm

Divisions of PAS

Nauki Techniczne

Coverage

495-526

Publisher

Committee of Automatic Control and Robotics PAS

Bibliography

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Date

2021.09.27

Type

Article

Identifier

DOI: 10.24425/acs.2021.138690
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