DocumentCode :
722442
Title :
Artificial neural network-based maximum power point tracker for the photovoltaic application
Author :
Veligorskyi, Oleksandr ; Chakirov, Roustiam ; Vagapov, Yuriy
Author_Institution :
Ind. Electron. Dept., Chernihiv Nat. Univ. of Technol., Chernihiv, Ukraine
fYear :
2015
fDate :
2-4 March 2015
Firstpage :
133
Lastpage :
138
Abstract :
This paper proposes a new artificial neural network-based maximum power point tracker for photovoltaic application. This tracker significantly improves efficiency of the photovoltaic system with series-connection of photovoltaic modules in non-uniform irradiance on photovoltaic array surfaces. The artificial neural network uses irradiance and temperature sensors to generate the maximum power point reference voltage and employ a classical perturb and observe searching algorithm. The structure of the artificial neural network was obtained by numerical modelling using Matlab/Simulink. The artificial neural network was trained using Bayesian regularisation back-propagation algorithms and demonstrated a good prediction of the maximum power point. Efficiency of proposed ANN-based MPP tracker has been estimated for linear shadow expanding and constant partial shading of any one PV module.
Keywords :
backpropagation; belief networks; maximum power point trackers; neural nets; photovoltaic power systems; power engineering computing; search problems; temperature sensors; ANN-based MPP tracker; Bayesian regularisation back-propagation algorithms; Matlab/Simulink; PV module; artificial neural network-based maximum power point tracker; constant partial shading; linear shadow expanding; maximum power point reference voltage; nonuniform irradiance; numerical modelling; observe searching algorithm; perturb searching algorithm; photovoltaic application; photovoltaic array surfaces; photovoltaic modules; photovoltaic system; series-connection; temperature sensors; Algorithm design and analysis; Arrays; Artificial neural networks; MATLAB; Photovoltaic systems; Training; artificial neural network; efficiency; maximum power point tracker; partial-shaded photovoltaic; photovoltaic system;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Industrial Networks and Intelligent Systems (INISCom), 2015 1st International Conference on
Conference_Location :
Tokyo
Type :
conf
DOI :
10.4108/icst.iniscom.2015.258313
Filename :
7157834
Link To Document :
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