2019
DOI: 10.4236/jpee.2019.78001
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Enhanced Vibrating Particles System Algorithm for Parameters Estimation of Photovoltaic System

Abstract: To evaluate the performance of a photovoltaic panel, several parameters must be extracted from the photovoltaic. These parameters are very important for the evaluation, monitoring and optimization of photovoltaic. Among the methods developed to extract photovoltaic parameters from current-voltage (I-V) characteristic curve, metaheuristic algorithms are the most used nowadays. A new metaheuristic algorithm namely enhanced vibrating particles system algorithm is presented here to extract the best values of param… Show more

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Cited by 34 publications
(21 citation statements)
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“…This section presents various experiments results including the approximation formulation, the accurate formulation results that are presented in section 5.1 and Section 5.2 respectively, and the 10 recent algorithms published: EVPS [ 6 ], TVACPSO [ 50 ], IMFO [ 35 ], IJAYA [ 19 ], ITLBO [ 25 ], CAO [ 37 ], SOS [ 39 ], MLBSA [ 38 ], MADE [ 36 ], GAMS [ 3 ]. The experiment of these algorithms was made based on the well known set of RTC France solar cell, with various parameters presented at Table 1 .…”
Section: Experiments Carried Out and Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…This section presents various experiments results including the approximation formulation, the accurate formulation results that are presented in section 5.1 and Section 5.2 respectively, and the 10 recent algorithms published: EVPS [ 6 ], TVACPSO [ 50 ], IMFO [ 35 ], IJAYA [ 19 ], ITLBO [ 25 ], CAO [ 37 ], SOS [ 39 ], MLBSA [ 38 ], MADE [ 36 ], GAMS [ 3 ]. The experiment of these algorithms was made based on the well known set of RTC France solar cell, with various parameters presented at Table 1 .…”
Section: Experiments Carried Out and Resultsmentioning
confidence: 99%
“…Numerous available algorithms in literatures portray different modelling techniques such as conventional GA and basic progressive computing techniques. Double PV parameters estimation for diode model was done using: improved the Optimization of Harris hawks (HHO) [ 15 ], improved adapted differential and evolution with repairing crossover rate (RcrIJADE) [ 16 ], genetic algorithm (GA) [ 17 ], algorithm of the enhanced vibration of particles system (EVPS) [ 6 ], artificial algorithm of bee swarm optimizations (ABSO) [ 18 ] and algorithm optimization of the improved JAYA (IJAYA) [ 19 ]. In addition we have the use of self-adaptive teaching-learning-based optimization (SATLBO) [ 20 ], improved optimization of whale algorithm (IWAO) [ 21 ] algorithm of the improved shuffled and complex evolutions (ISCE) [ 22 ], algorithm of hybrid pollination of flower (GOFPANM) [ 23 ] and grasshopper optimization algorithm (GOA) [ 24 ], the improved teaching and learning based optimization (ITLBO) [ 25 ], the algorithm of hybrid cuckoo search (HBCS) [ 26 ].…”
Section: Introductionmentioning
confidence: 99%
“…Optimal parameters obtained using DEDIWPSO for the Photo-watt module (PWP201), RTC France silicon solar cell and a practical PV system are presented in this section. The I-V data for the first two test systems were taken from [24], and have been utilized by various researchers [38][39][40][41]. Inertia weight was initially set at 0.8, and then exponentially decreased following Equation (12).…”
Section: Resultsmentioning
confidence: 99%
“…In practical applications, a single-diode model (SDM) and double-diode model (DDM) are commonly used to describe the nonlinear voltage-current characteristics of photovoltaic systems. This section describes the properties of each of these two models [3,52,57].…”
Section: Photovoltaic Model Descriptionmentioning
confidence: 99%