Improving the Performance of Hybrid System-Based Renewable Energy by Artificial Intelligence

Author:

Kechida Abdelhak1ORCID,Gozim Djamal2ORCID,Toual Belgacem3ORCID

Affiliation:

1. Applied Automation and Industrial Diagnostics Laboratory (LAADI), Faculty of Sciences and Technology , Ziane Achour University of Djelfa , Algeria

2. Department of Electrical Engineering , Ziane Achour University of Djelfa , Algeria

3. Renewable Energy Systems Applications Laboratory (LASER) Ziane Achour University of Djelfa , Algeria

Abstract

Abstract Artificial intelligence (AI) has emerged as a critical indicator of technological progress in recent years. The present study uses AI to enhance the efficiency of a hybrid system that operates on renewable energy sources. The hybrid system we propose consists of a wind energy conversion system (WECS), a photovoltaic system (PVS), a battery storage system (BSS) and electronic power converters. AI manages these converters cleverly. We use the maximum power point tracking (MPPT)-based fuzzy logic controller (FLC) to regulate the boost converter in the PVS and the WECS. We propose an adaptive neuro fuzzy inference system (ANFIS)-based controller to control the bidirectional converter of the storage system. The design of this module intends to maintain voltage stability on the direct current (DC) bus and improve energy quality. We study and simulate this system using MATLAB/SIMULINK. The results of this research show that the FLC-MPPT technique outperforms the Perturb and Observe (P&O) algorithm in terms of efficiency in power production. The console we propose also shows good results in maintaining the voltage stability in the DC bus in comparison with the proportional integral (PI) controller. This paper has the potential to contribute to the development of environmentally friendly resource performance.

Publisher

Walter de Gruyter GmbH

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