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Hyperparameter Optimization Based Deep Belief Network for Clean Buses Using Solar Energy Model

Justin, Shekaina; Saleh, Wafaa; Al Ghamdi, Tasneem; Shermina, J.

Authors

Shekaina Justin

Tasneem Al Ghamdi

J. Shermina



Abstract

Renewable energy has become a solution to the world’s energy concerns in recent years. Photovoltaic (PV) technology is the fastest technique to convert solar radiation into electricity. Solar-powered buses, metros, and cars use PV technology. Such technologies are always evolving. Included in the parameters that need to be analysed and examined include PV capabilities, vehicle power requirements, utility patterns, acceleration and deceleration rates, and storage module type and capacity, among others. PVPG is intermittent and weather-dependent. Accurate forecasting and modelling of PV system output power are key to managing storage, delivery, and smart grids. With unparalleled data granularity, a data-driven system could better anticipate solar generation. Deep learning (DL) models have gained popularity due to their capacity to handle complex datasets and increase computing power. This article introduces the Galactic Swarm Optimization with Deep Belief Network (GSODBN-PPGF) model. The GSODBN-PPGF model predicts PV power production. The GSODBN-PPGF model normalises data using data scaling. DBN is used to forecast PV power output. The GSO algorithm boosts the DBN model’s predicted output. GSODBN-PPGF projected 0.002 after40 h but observed 0.063. The GSODBN-PPGF model validation is compared to existing approaches. Simulations showed that the GSODBN-PPGF model outperformed recent techniques. It shows that the proposed model is better at forecasting than other models and can be used to predict the PV power output for the next day.

Citation

Justin, S., Saleh, W., Al Ghamdi, T., & Shermina, J. (2023). Hyperparameter Optimization Based Deep Belief Network for Clean Buses Using Solar Energy Model. Intelligent Automation and Soft Computing, 37(1), 1091-1109. https://doi.org/10.32604/iasc.2023.032589

Journal Article Type Article
Acceptance Date Oct 26, 2022
Publication Date 2023-04
Deposit Date Jun 8, 2023
Publicly Available Date Jun 8, 2023
Journal Intelligent Automation & Soft Computing
Print ISSN 1079-8587
Publisher Tech Science Press
Peer Reviewed Peer Reviewed
Volume 37
Issue 1
Pages 1091-1109
DOI https://doi.org/10.32604/iasc.2023.032589
Keywords Photovoltaic systems; solar energy; power generation; prediction model; deep learning

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