Neural Modeling of Fuzzy Controllers for Maximum Power Point Tracking in Photovoltaic Energy Systems

被引:0
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作者
Jose Manuel Lopez-Guede
Josean Ramos-Hernanz
Necmi Altın
Saban Ozdemir
Erol Kurt
Gorka Azkune
机构
[1] University of the Basque Country (UPV/EHU),Faculty of Engineering of Vitoria
[2] University of the Basque Country (UPV/EHU),Gasteiz, Department of Systems Engineering and Automatic Department
[3] Gazi University,Faculty of Engineering of Vitoria
[4] Gazi University,Gasteiz, Department of Electrical Engineering
[5] University of Deusto,Faculty of Technology, Department of Electrical and Electronics Engineering
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关键词
Fuzzy logic control; FLC; artificial neural networks; ANN; photovoltaic systems;
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摘要
One field in which electronic materials have an important role is energy generation, especially within the scope of photovoltaic energy. This paper deals with one of the most relevant enabling technologies within that scope, i.e, the algorithms for maximum power point tracking implemented in the direct current to direct current converters and its modeling through artificial neural networks (ANNs). More specifically, as a proof of concept, we have addressed the problem of modeling a fuzzy logic controller that has shown its performance in previous works, and more specifically the dimensionless duty cycle signal that controls a quadratic boost converter. We achieved a very accurate model since the obtained medium squared error is 3.47 × 10−6, the maximum error is 16.32 × 10−3 and the regression coefficient R is 0.99992, all for the test dataset. This neural implementation has obvious advantages such as a higher fault tolerance and a simpler implementation, dispensing with all the complex elements needed to run a fuzzy controller (fuzzifier, defuzzifier, inference engine and knowledge base) because, ultimately, ANNs are sums and products.
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页码:4519 / 4532
页数:13
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