ANFIS MODEL FOR THE PREDICTION OF GENERA TED ELECTRICITY OF PHOTO VOLTAIC MODULES

dc.citation.epage48
dc.citation.spage35
dc.citation.volume2
dc.contributor.authorStojčić, Mirko
dc.contributor.authorStjepanović, Aleksandar
dc.contributor.authorStjepanović, Đorđe
dc.date.accessioned2023-07-12T11:35:32Z
dc.date.available2023-07-12T11:35:32Z
dc.date.issued2019
dc.description.abstractThe fact that conventional energy sources are exhaustive and limited are increasingly encouraging research in the field of alternative and renewable energy sources. The electricity generated by solar photovoltaic modules and panels occupies an ever greater percentage in total electricity production, so it is clear that photovoltaic systems are increasingly integrating with the existing electricity network into one system or functioning as autonomous systems. The aim of the research is to create a model based on the principles of the fuzzy logic and artificial neural networks that will perform the task of predicting the maximum energy of photovoltaic modules as accurately as possible. The prediction should facilitate work in planning production and consumption, system management, economic analysis. The most important methods used in the research are modeling and simulation. Input and output variables are selected and in the ANFIS (Adaptive Neuro Fuzzy Inference System) model a set of their values is presented. Based on them it comes to the function of dependency. The prediction rating of the created model was performed on a separate data set for testing and a model with the lowest average test error value was selected. The performance of the model was compared with the mathematical model through sensitivity analysis, which led to the conclusion that the ANFIS model gives more accurate results.
dc.identifier.doi10.31181/dmame1901035s
dc.identifier.urihttps://vaseljena.ues.rs.ba/handle/123456789/430
dc.language.isoen
dc.sourceDecision Making: Applications in Management and Engineering
dc.subjectprediction, ANFIS (Adaptive Neuro Fuzzy Inference System), photovoltaic modules, artificial neural networks, fuzzy logic, RMSE (Root Mean Square Error).
dc.titleANFIS MODEL FOR THE PREDICTION OF GENERA TED ELECTRICITY OF PHOTO VOLTAIC MODULES
dc.typeArticle
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