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IoT based solar power forecasting using SSA-ELM technique.

Authors :
Borgohain, Santanu
Dalai, Sumant K.
Peesapati, Rangababu
Panda, Gayadhar
Source :
International Journal of Emerging Electric Power Systems. Jun2024, p1. 10p. 4 Illustrations, 2 Charts.
Publication Year :
2024

Abstract

The optimizing of renewable energy use and grid integration relies on accurate solar power predictions. In order to predict the amount of power that solar photovoltaic (PV) systems would produce inside an IoT framework, this study suggests a new method that integrates Singular Spectrum Analysis (SSA) with Extreme Learning Machine technology. The SSA algorithm makes sense of solar power data by separating it into its component parts, such as trend, seasonality, and noise. The ELM model, a quick and effective feedforward neural network with a single hidden layer, takes these broken-down parts as input characteristics. In order to enhance the accuracy of solar power forecasts, the suggested strategy combines the decomposition skills of SSA with the predictive capability of ELM. Data acquired by solar PV sensors is input into the IoT-based forecasting model, which then undergoes preprocessing with SSA, feature extraction, model training with ELM, and performance evaluation. The SSA-ELM methodology has been successfully tested on real solar power data and has shown promising results in terms of accuracy measures such as low mean absolute error and mean absolute percentage error. By implementing the suggested method, accurate projections of solar output can be made, leading to better energy management, lower costs, and the smooth incorporation of renewables into smart grids. A dependable and computationally efficient method for solar forecasting in Internet of Things applications is provided by the combination of SSA and ELM. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
1553779X
Database :
Academic Search Index
Journal :
International Journal of Emerging Electric Power Systems
Publication Type :
Academic Journal
Accession number :
177836929
Full Text :
https://doi.org/10.1515/ijeeps-2024-0148