Research Article
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Year 2020, Volume: 15 Issue: 2, 101 - 110, 24.09.2020

Abstract

References

  • Larbes C, Cheikh S.M.A, Obeidi T, Zerguerras A. Genetic algorithms optimized fuzzy logic control for the maximum power point tracking in photovoltaic system. Renewable Energy 2009; 34: 2093–2100.
  • Esram T, Chapman P.L. Comparison of photovoltaic array maximum power point tracking techniques. IEEE Transactions on Energy Conversion 2007; 22 (2): 439-449.
  • Gupta A, Chauhan Y.K, Pachauri K. A comparative investigation of maximum power point tracking methods for solar PV systems. Solar Energy 2016; 136: 236-253.
  • Belkaid A, Colak I, Kayisli K. Implementation of a modified P&O-MPPT algorithm adapted for varying solar radiation conditions. Electr Eng. 2017; 839–846..
  • Chen P.C, Chen P.Y, Liu Y.H, Chen J.H, Luo Y.F. A comparative study on maximum power poit tracking techniques for photovoltaic generation systems operation under fast changing environments. Solar Energy 2015; 119: 261-276.
  • Rezk H, Eltamaly A.M. A comprehensive comparison of different MPPT techniques for photovoltaic systems. Solar Energy 2015; 112: 1-11.
  • Ahmed J, Salam Z. An enhanced adaptive P&O MPPT for fast and efficient tracking under varying environmental conditions. IEEE Transactions on Sustainable Energy 2018; 9 (3): 1487-1496.
  • Başoğlu M.E, Çakır B. An improved incremental conductance based MPPT approach for PV modules. Turk J Elec Eng & Comp Sci. 2015; 23: 1687-1697.
  • Radjai T, Rahmani L, Mekhilef S, Gaubert J.P. Implementation of a modified incremental conductance MPPT algorithm with direct control based on a fuzzy duty cycle change estimator using dSPACE. Solar Energy 2014; 110: 325-337.
  • Bataineh K. Improved hybrid algorithms-based MPPT algorithm for PV system operating under severe weather conditions. IET Power Electronics 2018; 12 (4): 703-711.
  • Celikel R, Gundogdu A. System identification-based MPPT algorithm for PV systems under variable atmosphere conditions using current sensorless approach. Int Trans Electr Energ Syst. 2020; e12433. https://doi.org/10.1002/2050-7038.12433.
  • Celikel R. Speed Control of BLDC Using NARMA-L2 Controller in Single Link Manipulator. Balkan Journal of Electrical and Computer Engineering 2019; 7(2): 143-148.
  • Karakaya B, Kaya T, Gulten A. FPGA-based ANN Design for Detecting Epileptic Seizure in EEG Signal. Balkan Journal of Electrical and Computer Engineering 2018; 6(2): 83-87.
  • Deniz E. ANN-based MPPT algorithm for solar PMSM drive system fed by direct-connected PV array. Neural Comput & Applic. 2017; 28: 3061–3072.
  • Elobaid L.M, Abdelsalam A.K, Zakzouk E.E. Artificial neural network-based photovoltaic maximum power point tracking techniques: a survey. IET Renewable Power Generation 2015; 9(8): 1043-1063.
  • Kermadi Mostefa, Berkouk E.M. Artificial intelligence-based maximum power point tracking controllers for Photovoltaic systems: Comparative study. Renewable and Sustainable Energy Reviews 2017; 69: 369-386.
  • Messalti S, Harrag A, Loukriz A. A new variable step size neural networks MPPT controller: Review, simulation and hardware implementation. Renewable and Sustainable Energy Reviews 2017; 68: 221-233.
  • Çelik Ö, Teke A. A Hybrid MPPT method for grid connected photovoltaic systems under rapidly changing atmospheric conditions. Electric Power Systems Research 2017; 152: 194-210.
  • Jyothy L.P, Sindhu M.R. An Artificial Neural Network based MPPT Algorithm For Solar PV System. In 2018 4th International Conference on Electrical Energy Systems (ICEES) 2018; 375-380.
  • Kota V.R, Bhukya M.N. A novel global MPP tracking scheme based on shading pattern identification using artificial neural networks for photovoltaic power generation during partial shaded condition. IET Renewable Power Generation 2019; 13(10): 1647-1659.
  • Ibrahim A.W, Jin X, Dai X, Sarhan M.A, Shafik M.B, Zhou H. Artificial Neural Network Based Maximum Power Point Tracking for PV System. In 2019 Chinese Control Conference (CCC) 2019; 6559-6564.
  • Aydogmus O. Design of a solar motor drive system fed by a direct-connected photovoltaic array. Advances in Electrical and Computer Engineering 2012; 12 (3): 53-58.

ANN-Based MPPT Algorithm for Photovoltaic Systems

Year 2020, Volume: 15 Issue: 2, 101 - 110, 24.09.2020

Abstract

It is very important to get maximum efficiency from photovoltaic panels with low yields. To be able to achieve high efficiency from panels, maximum power point tracking algorithms have been developed. Perturb&Observe and incremental conductance methods, which are among the conventional methods, are not very successful in capturing the points from which maximum power can be obtained in variable atmospheric conditions. In this article, a maximum power point tracking method based on the artificial neural network was proposed. In the proposed method, artificial neural network inputs were designed as temperature and voltage, while its output was designed as the reference voltage. By controlling this reference voltage through a PI controller, it was ensured that the system generated maximum power in variable atmospheric conditions. Conventional methods and the proposed method were compared by simulation studies conducted in the MATLAB/Simulink environment. The superiority of the proposed method was demonstrated with a compelling scenario in which temperature and radiation were constantly changing.

References

  • Larbes C, Cheikh S.M.A, Obeidi T, Zerguerras A. Genetic algorithms optimized fuzzy logic control for the maximum power point tracking in photovoltaic system. Renewable Energy 2009; 34: 2093–2100.
  • Esram T, Chapman P.L. Comparison of photovoltaic array maximum power point tracking techniques. IEEE Transactions on Energy Conversion 2007; 22 (2): 439-449.
  • Gupta A, Chauhan Y.K, Pachauri K. A comparative investigation of maximum power point tracking methods for solar PV systems. Solar Energy 2016; 136: 236-253.
  • Belkaid A, Colak I, Kayisli K. Implementation of a modified P&O-MPPT algorithm adapted for varying solar radiation conditions. Electr Eng. 2017; 839–846..
  • Chen P.C, Chen P.Y, Liu Y.H, Chen J.H, Luo Y.F. A comparative study on maximum power poit tracking techniques for photovoltaic generation systems operation under fast changing environments. Solar Energy 2015; 119: 261-276.
  • Rezk H, Eltamaly A.M. A comprehensive comparison of different MPPT techniques for photovoltaic systems. Solar Energy 2015; 112: 1-11.
  • Ahmed J, Salam Z. An enhanced adaptive P&O MPPT for fast and efficient tracking under varying environmental conditions. IEEE Transactions on Sustainable Energy 2018; 9 (3): 1487-1496.
  • Başoğlu M.E, Çakır B. An improved incremental conductance based MPPT approach for PV modules. Turk J Elec Eng & Comp Sci. 2015; 23: 1687-1697.
  • Radjai T, Rahmani L, Mekhilef S, Gaubert J.P. Implementation of a modified incremental conductance MPPT algorithm with direct control based on a fuzzy duty cycle change estimator using dSPACE. Solar Energy 2014; 110: 325-337.
  • Bataineh K. Improved hybrid algorithms-based MPPT algorithm for PV system operating under severe weather conditions. IET Power Electronics 2018; 12 (4): 703-711.
  • Celikel R, Gundogdu A. System identification-based MPPT algorithm for PV systems under variable atmosphere conditions using current sensorless approach. Int Trans Electr Energ Syst. 2020; e12433. https://doi.org/10.1002/2050-7038.12433.
  • Celikel R. Speed Control of BLDC Using NARMA-L2 Controller in Single Link Manipulator. Balkan Journal of Electrical and Computer Engineering 2019; 7(2): 143-148.
  • Karakaya B, Kaya T, Gulten A. FPGA-based ANN Design for Detecting Epileptic Seizure in EEG Signal. Balkan Journal of Electrical and Computer Engineering 2018; 6(2): 83-87.
  • Deniz E. ANN-based MPPT algorithm for solar PMSM drive system fed by direct-connected PV array. Neural Comput & Applic. 2017; 28: 3061–3072.
  • Elobaid L.M, Abdelsalam A.K, Zakzouk E.E. Artificial neural network-based photovoltaic maximum power point tracking techniques: a survey. IET Renewable Power Generation 2015; 9(8): 1043-1063.
  • Kermadi Mostefa, Berkouk E.M. Artificial intelligence-based maximum power point tracking controllers for Photovoltaic systems: Comparative study. Renewable and Sustainable Energy Reviews 2017; 69: 369-386.
  • Messalti S, Harrag A, Loukriz A. A new variable step size neural networks MPPT controller: Review, simulation and hardware implementation. Renewable and Sustainable Energy Reviews 2017; 68: 221-233.
  • Çelik Ö, Teke A. A Hybrid MPPT method for grid connected photovoltaic systems under rapidly changing atmospheric conditions. Electric Power Systems Research 2017; 152: 194-210.
  • Jyothy L.P, Sindhu M.R. An Artificial Neural Network based MPPT Algorithm For Solar PV System. In 2018 4th International Conference on Electrical Energy Systems (ICEES) 2018; 375-380.
  • Kota V.R, Bhukya M.N. A novel global MPP tracking scheme based on shading pattern identification using artificial neural networks for photovoltaic power generation during partial shaded condition. IET Renewable Power Generation 2019; 13(10): 1647-1659.
  • Ibrahim A.W, Jin X, Dai X, Sarhan M.A, Shafik M.B, Zhou H. Artificial Neural Network Based Maximum Power Point Tracking for PV System. In 2019 Chinese Control Conference (CCC) 2019; 6559-6564.
  • Aydogmus O. Design of a solar motor drive system fed by a direct-connected photovoltaic array. Advances in Electrical and Computer Engineering 2012; 12 (3): 53-58.
There are 22 citations in total.

Details

Primary Language English
Subjects Engineering
Journal Section TJST
Authors

Reşat Çelikel 0000-0002-9169-6466

Ahmet Gündoğdu 0000-0002-8333-3083

Publication Date September 24, 2020
Submission Date July 7, 2020
Published in Issue Year 2020 Volume: 15 Issue: 2

Cite

APA Çelikel, R., & Gündoğdu, A. (2020). ANN-Based MPPT Algorithm for Photovoltaic Systems. Turkish Journal of Science and Technology, 15(2), 101-110.
AMA Çelikel R, Gündoğdu A. ANN-Based MPPT Algorithm for Photovoltaic Systems. TJST. September 2020;15(2):101-110.
Chicago Çelikel, Reşat, and Ahmet Gündoğdu. “ANN-Based MPPT Algorithm for Photovoltaic Systems”. Turkish Journal of Science and Technology 15, no. 2 (September 2020): 101-10.
EndNote Çelikel R, Gündoğdu A (September 1, 2020) ANN-Based MPPT Algorithm for Photovoltaic Systems. Turkish Journal of Science and Technology 15 2 101–110.
IEEE R. Çelikel and A. Gündoğdu, “ANN-Based MPPT Algorithm for Photovoltaic Systems”, TJST, vol. 15, no. 2, pp. 101–110, 2020.
ISNAD Çelikel, Reşat - Gündoğdu, Ahmet. “ANN-Based MPPT Algorithm for Photovoltaic Systems”. Turkish Journal of Science and Technology 15/2 (September 2020), 101-110.
JAMA Çelikel R, Gündoğdu A. ANN-Based MPPT Algorithm for Photovoltaic Systems. TJST. 2020;15:101–110.
MLA Çelikel, Reşat and Ahmet Gündoğdu. “ANN-Based MPPT Algorithm for Photovoltaic Systems”. Turkish Journal of Science and Technology, vol. 15, no. 2, 2020, pp. 101-10.
Vancouver Çelikel R, Gündoğdu A. ANN-Based MPPT Algorithm for Photovoltaic Systems. TJST. 2020;15(2):101-10.