Intelligent control of the power generation system using DSPACE

Author:

Hamid Chojaa1,Aziz Derouich1,Zamzoum Othmane1,El Idrissi Abderrahman1ORCID,Zawbaa Hossam M.23,Zeinoddini‐Meymand Hamed4ORCID,Kamel Salah5ORCID

Affiliation:

1. TIS Laboratory, Higher School of Technology USMBA University Fez Fes Morocco

2. Faculty of Computers and Artificial Intelligence Beni‐Suef University Beni Suef Egypt

3. Applied Science Research Center Applied Science Private University Amman Jordan

4. Department of Electrical and Computer Engineering Graduate University of Advanced Technology Kerman Iran

5. Department of Electrical Engineering, Faculty of Engineering Aswan University Aswan Egypt

Abstract

AbstractWind power systems (WPs) are complex non‐linear systems with varying parameters affected by environmental changes, including wind speed fluctuations. Extracting maximum power from WPs poses a significant challenge due to these factors. Direct power control (DPC) is a highly effective technique known for its simplicity and ease of implementation. However, it suffers from power ripples caused by the use of hysteresis comparators and switching tables that operate at variable frequencies. To address this issue, this paper presents the robust neural controller (NC) based on DPC, which replaces the switching tables. The Double‐Fed Induction Generator (DFIG) is the chosen generator for the studied WP system due to its advantageous features. The NC‐DPC effectively regulates the exchange of active and reactive powers between the DFIG and the system, maximizing power extraction from the WP system while reducing Total Harmonic Distortion and enhancing overall system quality. The effectiveness of the NC‐DPC is evaluated through MATLAB simulations and further supported by experimental data obtained using the Real‐Time Interface of the dSPACE‐DS1104 Controller card.

Publisher

Institution of Engineering and Technology (IET)

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