Dynamic global power extraction from partially shaded photovoltaic using deep recurrent neural network and improved PSO techniques

Under partial shading (PS) condition, the P-V curve becomes more complex where many peaks (one global maximum peak [GMP] and many other local maximum peaks [LMPs]) are generated. This GMP changes with time under a time-variant PS; this is called dynamic GMP. Conventional particle swarm optimization...

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Main Authors: Farh, Hassan M. H., Eltamaly, Ali M., Ibrahim, Ahmed B., Othman, Mohd. F.
Format: Article
Published: John Wiley and Sons Ltd 2019
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Online Access:http://eprints.utm.my/id/eprint/88034/
http://dx.doi.org/10.1002/2050-7038.12061
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spelling my.utm.880342020-12-14T22:58:38Z http://eprints.utm.my/id/eprint/88034/ Dynamic global power extraction from partially shaded photovoltaic using deep recurrent neural network and improved PSO techniques Farh, Hassan M. H. Eltamaly, Ali M. Ibrahim, Ahmed B. Othman, Mohd. F. T Technology (General) Under partial shading (PS) condition, the P-V curve becomes more complex where many peaks (one global maximum peak [GMP] and many other local maximum peaks [LMPs]) are generated. This GMP changes with time under a time-variant PS; this is called dynamic GMP. Conventional particle swarm optimization (PSO) can track the GMP under the same PS effectively. Nevertheless, it cannot track the dynamic GMP because all particles will be concentrated at the first GMP caught. In addition, using PSO as a maximum power point tracker (MPPT) technique suffers from obvious power oscillations in the steady state. In this paper, the PSO technique is improved to make it able to follow the dynamic GMP under time-invariant PS. In addition, a novel deep recurrent neural network (DRNN) is introduced to track the dynamic GMP under time-variant PS. A detailed comparison between DRNN and improved PSO is introduced, analyzed, and discussed. DRNN performs well compared with the improved PSO in terms of dynamic GMP tracking with almost zero steady-state oscillation, tracking speed, accuracy, and efficiency. John Wiley and Sons Ltd 2019-09-01 Article PeerReviewed Farh, Hassan M. H. and Eltamaly, Ali M. and Ibrahim, Ahmed B. and Othman, Mohd. F. (2019) Dynamic global power extraction from partially shaded photovoltaic using deep recurrent neural network and improved PSO techniques. International Transactions on Electrical Energy Systems, 29 (9). e12061-e12061. ISSN 2050-7038 http://dx.doi.org/10.1002/2050-7038.12061
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic T Technology (General)
spellingShingle T Technology (General)
Farh, Hassan M. H.
Eltamaly, Ali M.
Ibrahim, Ahmed B.
Othman, Mohd. F.
Dynamic global power extraction from partially shaded photovoltaic using deep recurrent neural network and improved PSO techniques
description Under partial shading (PS) condition, the P-V curve becomes more complex where many peaks (one global maximum peak [GMP] and many other local maximum peaks [LMPs]) are generated. This GMP changes with time under a time-variant PS; this is called dynamic GMP. Conventional particle swarm optimization (PSO) can track the GMP under the same PS effectively. Nevertheless, it cannot track the dynamic GMP because all particles will be concentrated at the first GMP caught. In addition, using PSO as a maximum power point tracker (MPPT) technique suffers from obvious power oscillations in the steady state. In this paper, the PSO technique is improved to make it able to follow the dynamic GMP under time-invariant PS. In addition, a novel deep recurrent neural network (DRNN) is introduced to track the dynamic GMP under time-variant PS. A detailed comparison between DRNN and improved PSO is introduced, analyzed, and discussed. DRNN performs well compared with the improved PSO in terms of dynamic GMP tracking with almost zero steady-state oscillation, tracking speed, accuracy, and efficiency.
format Article
author Farh, Hassan M. H.
Eltamaly, Ali M.
Ibrahim, Ahmed B.
Othman, Mohd. F.
author_facet Farh, Hassan M. H.
Eltamaly, Ali M.
Ibrahim, Ahmed B.
Othman, Mohd. F.
author_sort Farh, Hassan M. H.
title Dynamic global power extraction from partially shaded photovoltaic using deep recurrent neural network and improved PSO techniques
title_short Dynamic global power extraction from partially shaded photovoltaic using deep recurrent neural network and improved PSO techniques
title_full Dynamic global power extraction from partially shaded photovoltaic using deep recurrent neural network and improved PSO techniques
title_fullStr Dynamic global power extraction from partially shaded photovoltaic using deep recurrent neural network and improved PSO techniques
title_full_unstemmed Dynamic global power extraction from partially shaded photovoltaic using deep recurrent neural network and improved PSO techniques
title_sort dynamic global power extraction from partially shaded photovoltaic using deep recurrent neural network and improved pso techniques
publisher John Wiley and Sons Ltd
publishDate 2019
url http://eprints.utm.my/id/eprint/88034/
http://dx.doi.org/10.1002/2050-7038.12061
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