Application of Grey Wolf Optimization Algorithm for Maximum Power Point Tracking of Solar Panels
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Date
2024-04-08
Journal Title
Journal ISSN
Volume Title
Publisher
University of Eloued جامعة الوادي
Abstract
One of the applications of evolutionary algorithms is increasing the efficiency of
photovoltaic (PV) systems. The main problem with using standard algorithms like the Incremental
Conductance (IC) controller for maximum power point tracking (MPPT) under partial shading
conditions (PSC) is that they do not provide reliable tracking of the global peak of the volt-watt
characteristic, leading to increased losses and reduced power plant performance. Furthermore,
there is currently no methodology for selecting the optimal sampling time of soft computing
algorithm-based maximum power trackers for PV systems. The aim of this paper is to apply the
Grey Wolf technique with optimally selected sampling time, which will result in fast and reliable
tracking of the global maximum point of the PV panels. The results show that the selected optimal
sampling time for the digital MPP controllers can increase the performance and efficiency of
MPPT controllers. A DC-DC boost converter is used to match the PV panels with the resistive
load. Several simulations were performed using MATLAB/Simulink to examine the performance of
the proposed system. The results demonstrate that the proposed Grey Wolf algorithm can quickly
capture the GMPP within 0.2 seconds under different shading conditions of the PV panels.
Description
Article
Keywords
MPPT, partial l shading, tracking time, grew wolf optimization, Dc-DC converter
Citation
Khelaifa , Fethi .Lamamra, Kheireddine . Toumi , Djaafar. Application of Grey Wolf Optimization Algorithm for Maximum Power Point Tracking of Solar Panels. The International Journal of Energetica. Vo9. No 01.08/04/2024.faculty of technology. university of el oued. [visited in ../../….]. available from [copy the link here]