Solar power forecasting beneath diverse weather conditions using GD and LM-artificial neural networks

Large-scale solar energy production is still a great deal of obstruction due to the unpredictability of solar power. The intermittent, chaotic, and random quality of solar energy supply has to be dealt with by some comprehensive solar forecasting technologies. Despite forecasting for the long-term,...

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محفوظ في:
التفاصيل البيبلوغرافية
المؤلف الرئيسي: Sharma, Neetan (author)
مؤلفون آخرون: Puri, Vinod (author), Mahajan, Shubham (author), Abualigah, Laith (author), Abu Zitar, Raed (author), Gandomi, Amir H. (author)
منشور في: 2023
الموضوعات:
الوصول للمادة أونلاين:https://depot.sorbonne.ae/handle/20.500.12458/1408
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author Sharma, Neetan
author2 Puri, Vinod
Mahajan, Shubham
Abualigah, Laith
Abu Zitar, Raed
Gandomi, Amir H.
author2_role author
author
author
author
author
author_facet Sharma, Neetan
Puri, Vinod
Mahajan, Shubham
Abualigah, Laith
Abu Zitar, Raed
Gandomi, Amir H.
author_role author
dc.creator.none.fl_str_mv Sharma, Neetan
Puri, Vinod
Mahajan, Shubham
Abualigah, Laith
Abu Zitar, Raed
Gandomi, Amir H.
dc.date.none.fl_str_mv 2023-05-29T07:46:05Z
2023-05-29T07:46:05Z
2023
dc.format.none.fl_str_mv application/pdf
dc.identifier.none.fl_str_mv 10.1038/s41598-023-35457-1
2045-2322
https://depot.sorbonne.ae/handle/20.500.12458/1408
10.1038/s41598-023-35457-1
dc.language.none.fl_str_mv en
dc.relation.none.fl_str_mv Scientific Reports
dc.subject.none.fl_str_mv Energy science Technology
Engineering
Mathematics and computing
dc.title.none.fl_str_mv Solar power forecasting beneath diverse weather conditions using GD and LM-artificial neural networks
dc.type.none.fl_str_mv Controlled Vocabulary for Resource Type Genres::text::periodical::journal::contribution to journal::journal article
description Large-scale solar energy production is still a great deal of obstruction due to the unpredictability of solar power. The intermittent, chaotic, and random quality of solar energy supply has to be dealt with by some comprehensive solar forecasting technologies. Despite forecasting for the long-term, it becomes much more essential to predict short-term forecasts in minutes or even seconds prior. Because key factors such as sudden movement of the clouds, instantaneous deviation of temperature in ambiance, the increased proportion of relative humidity and uncertainty in the wind velocities, haziness, and rains cause the undesired up and down ramping rates, thereby affecting the solar power generation to a greater extent. This paper aims to acknowledge the extended stellar forecasting algorithm using artificial neural network common sensical aspect. Three layered systems have been suggested, consisting of an input layer, hidden layer, and output layer feed-forward in conjunction with back propagation. A prior 5-min te output forecast fed to the input layer to reduce the error has been introduced to have a more precise forecast. Weather remains the most vital input for the ANN type of modeling. The forecasting errors might enhance considerably, thereby affecting the solar power supply relatively due to the variations in the solar irradiations and temperature on any forecasting day. Prior approximation of stellar radiations exhibits a small amount of qualm depending upon climatic conditions such as temperature, shading conditions, soiling effects, relative humidity, etc. All these environmental factors incorporate uncertainty regarding the prediction of the output parameter. In such a case, the approximation of PV output could be much more suitable than direct solar radiation. This paper uses Gradient Descent (GD) and Levenberg Maquarndt Artificial Neural Network (LM-ANN) techniques to apply to data obtained and recorded milliseconds from a 100 W solar panel. The essential purpose of this paper is to establish a time perspective with the greatest deal for the output forecast of small solar power utilities. It has been observed that 5 ms to 12 h time perspective gives the best short- to medium-term prediction for April. A case study has been done in the Peer Panjal region. The data collected for four months with various parameters have been applied randomly as input data using GD and LM type of artificial neural network compared to actual solar energy data. The proposed ANN based algorithm has been used for unswerving petite term forecasting. The model output has been presented in root mean square error and mean absolute percentage error. The results exhibit a improved concurrence between the forecasted and real models. The forecasting of solar energy and load variations assists in fulfilling the cost-effective aspects.
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identifier_str_mv 10.1038/s41598-023-35457-1
2045-2322
language_invalid_str_mv en
network_acronym_str sorbonner
network_name_str Sorbonne University Abu Dhabi repository
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spelling Solar power forecasting beneath diverse weather conditions using GD and LM-artificial neural networksSharma, NeetanPuri, VinodMahajan, ShubhamAbualigah, LaithAbu Zitar, RaedGandomi, Amir H.Energy science TechnologyEngineeringMathematics and computingLarge-scale solar energy production is still a great deal of obstruction due to the unpredictability of solar power. The intermittent, chaotic, and random quality of solar energy supply has to be dealt with by some comprehensive solar forecasting technologies. Despite forecasting for the long-term, it becomes much more essential to predict short-term forecasts in minutes or even seconds prior. Because key factors such as sudden movement of the clouds, instantaneous deviation of temperature in ambiance, the increased proportion of relative humidity and uncertainty in the wind velocities, haziness, and rains cause the undesired up and down ramping rates, thereby affecting the solar power generation to a greater extent. This paper aims to acknowledge the extended stellar forecasting algorithm using artificial neural network common sensical aspect. Three layered systems have been suggested, consisting of an input layer, hidden layer, and output layer feed-forward in conjunction with back propagation. A prior 5-min te output forecast fed to the input layer to reduce the error has been introduced to have a more precise forecast. Weather remains the most vital input for the ANN type of modeling. The forecasting errors might enhance considerably, thereby affecting the solar power supply relatively due to the variations in the solar irradiations and temperature on any forecasting day. Prior approximation of stellar radiations exhibits a small amount of qualm depending upon climatic conditions such as temperature, shading conditions, soiling effects, relative humidity, etc. All these environmental factors incorporate uncertainty regarding the prediction of the output parameter. In such a case, the approximation of PV output could be much more suitable than direct solar radiation. This paper uses Gradient Descent (GD) and Levenberg Maquarndt Artificial Neural Network (LM-ANN) techniques to apply to data obtained and recorded milliseconds from a 100 W solar panel. The essential purpose of this paper is to establish a time perspective with the greatest deal for the output forecast of small solar power utilities. It has been observed that 5 ms to 12 h time perspective gives the best short- to medium-term prediction for April. A case study has been done in the Peer Panjal region. The data collected for four months with various parameters have been applied randomly as input data using GD and LM type of artificial neural network compared to actual solar energy data. The proposed ANN based algorithm has been used for unswerving petite term forecasting. The model output has been presented in root mean square error and mean absolute percentage error. The results exhibit a improved concurrence between the forecasted and real models. The forecasting of solar energy and load variations assists in fulfilling the cost-effective aspects.2023-05-29T07:46:05Z2023-05-29T07:46:05Z2023Controlled Vocabulary for Resource Type Genres::text::periodical::journal::contribution to journal::journal articleapplication/pdf10.1038/s41598-023-35457-12045-2322https://depot.sorbonne.ae/handle/20.500.12458/140810.1038/s41598-023-35457-1enScientific Reportsoai:depot.sorbonne.ae:20.500.12458/14082023-06-14T09:45:26Z
spellingShingle Solar power forecasting beneath diverse weather conditions using GD and LM-artificial neural networks
Sharma, Neetan
Energy science Technology
Engineering
Mathematics and computing
title Solar power forecasting beneath diverse weather conditions using GD and LM-artificial neural networks
title_full Solar power forecasting beneath diverse weather conditions using GD and LM-artificial neural networks
title_fullStr Solar power forecasting beneath diverse weather conditions using GD and LM-artificial neural networks
title_full_unstemmed Solar power forecasting beneath diverse weather conditions using GD and LM-artificial neural networks
title_short Solar power forecasting beneath diverse weather conditions using GD and LM-artificial neural networks
title_sort Solar power forecasting beneath diverse weather conditions using GD and LM-artificial neural networks
topic Energy science Technology
Engineering
Mathematics and computing
url https://depot.sorbonne.ae/handle/20.500.12458/1408