EPCMSDB: Design of an ensemble predictive control model for solar PV MPPT deployments via dual bioinspired optimizations

With the increasing demand for renewable energy, solar power has emerged as a promising option for sustainable power generation. However, the effectiveness and efficiency of solar power systems rely on the ability to effectively manage their performance, making it essential to develop efficient cont...

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Main Authors: Hole Shreyas Rajendra, Das Goswami Agam
Format: Article
Language:English
Published: EDP Sciences 2024-01-01
Series:Science and Technology for Energy Transition
Subjects:
Online Access:https://www.stet-review.org/articles/stet/full_html/2024/01/stet20230110/stet20230110.html
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author Hole Shreyas Rajendra
Das Goswami Agam
author_facet Hole Shreyas Rajendra
Das Goswami Agam
author_sort Hole Shreyas Rajendra
collection DOAJ
description With the increasing demand for renewable energy, solar power has emerged as a promising option for sustainable power generation. However, the effectiveness and efficiency of solar power systems rely on the ability to effectively manage their performance, making it essential to develop efficient control models. This paper proposes a novel ensemble predictive control model for solar deployments using bio-inspired optimizations to improve load-connected solar deployments’ performance. The proposed model integrates multiple control devices, including Maximum Power Point Tracker, Proportional-Integral-Derivative, Proportional-Integral, and Fuzzy Logic Controllers, to selectively control the solar Photovoltaic systems. The proposed model incorporates a predictive control operation utilizing an LSTM-GRU (Long Short-Term Memory-Gated Recurrent Unit) with the VARMA (Vector Auto-Regressive Moving Average) model, which can accurately predict the future power generation of the solar system. This feature can facilitate efficient energy management and increase the system’s performance for different use cases. Implement a SEPIC (Single Ended Primary Inductor Capacitor) converter design to improve the system’s overall efficiency levels. To validate the effectiveness of the proposed approach, the author conducted experiments using real-world data and compared the proposed results with other control strategies. The results demonstrate that the ensemble predictive control model based on bio-inspired optimizations outperforms the existing control models regarding accuracy, efficiency, and stability levels. The proposed model has the potential to significantly improve the performance of load-connected solar deployments, offering a more practical approach to solar power generation. The combination of predictive control operations with bio-inspired optimizations can facilitate the design of sustainable energy systems with higher efficiency and accuracy.
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spelling doaj.art-569c098424404f4b93201505cdb713532024-02-13T08:38:15ZengEDP SciencesScience and Technology for Energy Transition2804-76992024-01-0179810.2516/stet/2024002stet20230110EPCMSDB: Design of an ensemble predictive control model for solar PV MPPT deployments via dual bioinspired optimizationsHole Shreyas Rajendra0https://orcid.org/0000-0002-1432-2196Das Goswami Agam1https://orcid.org/0000-0002-3341-0597VIT-AP UniversityVIT-AP UniversityWith the increasing demand for renewable energy, solar power has emerged as a promising option for sustainable power generation. However, the effectiveness and efficiency of solar power systems rely on the ability to effectively manage their performance, making it essential to develop efficient control models. This paper proposes a novel ensemble predictive control model for solar deployments using bio-inspired optimizations to improve load-connected solar deployments’ performance. The proposed model integrates multiple control devices, including Maximum Power Point Tracker, Proportional-Integral-Derivative, Proportional-Integral, and Fuzzy Logic Controllers, to selectively control the solar Photovoltaic systems. The proposed model incorporates a predictive control operation utilizing an LSTM-GRU (Long Short-Term Memory-Gated Recurrent Unit) with the VARMA (Vector Auto-Regressive Moving Average) model, which can accurately predict the future power generation of the solar system. This feature can facilitate efficient energy management and increase the system’s performance for different use cases. Implement a SEPIC (Single Ended Primary Inductor Capacitor) converter design to improve the system’s overall efficiency levels. To validate the effectiveness of the proposed approach, the author conducted experiments using real-world data and compared the proposed results with other control strategies. The results demonstrate that the ensemble predictive control model based on bio-inspired optimizations outperforms the existing control models regarding accuracy, efficiency, and stability levels. The proposed model has the potential to significantly improve the performance of load-connected solar deployments, offering a more practical approach to solar power generation. The combination of predictive control operations with bio-inspired optimizations can facilitate the design of sustainable energy systems with higher efficiency and accuracy.https://www.stet-review.org/articles/stet/full_html/2024/01/stet20230110/stet20230110.htmlsolar powermpptpipidfuzzyvarmalstmgru
spellingShingle Hole Shreyas Rajendra
Das Goswami Agam
EPCMSDB: Design of an ensemble predictive control model for solar PV MPPT deployments via dual bioinspired optimizations
Science and Technology for Energy Transition
solar power
mppt
pi
pid
fuzzy
varma
lstm
gru
title EPCMSDB: Design of an ensemble predictive control model for solar PV MPPT deployments via dual bioinspired optimizations
title_full EPCMSDB: Design of an ensemble predictive control model for solar PV MPPT deployments via dual bioinspired optimizations
title_fullStr EPCMSDB: Design of an ensemble predictive control model for solar PV MPPT deployments via dual bioinspired optimizations
title_full_unstemmed EPCMSDB: Design of an ensemble predictive control model for solar PV MPPT deployments via dual bioinspired optimizations
title_short EPCMSDB: Design of an ensemble predictive control model for solar PV MPPT deployments via dual bioinspired optimizations
title_sort epcmsdb design of an ensemble predictive control model for solar pv mppt deployments via dual bioinspired optimizations
topic solar power
mppt
pi
pid
fuzzy
varma
lstm
gru
url https://www.stet-review.org/articles/stet/full_html/2024/01/stet20230110/stet20230110.html
work_keys_str_mv AT holeshreyasrajendra epcmsdbdesignofanensemblepredictivecontrolmodelforsolarpvmpptdeploymentsviadualbioinspiredoptimizations
AT dasgoswamiagam epcmsdbdesignofanensemblepredictivecontrolmodelforsolarpvmpptdeploymentsviadualbioinspiredoptimizations