A comparative analysis of LSTM, SVM, and GSTANN models for enhancing solar power prediction

Solar power prediction is crucial for integrating renewable energy into the grid, but current methods often struggle with accuracy due to the limitations of machine learning algorithms. This study aims to enhance prediction accuracy by comparing the performance of Long Short-Term Memory (LSTM)...

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主要な著者: M. Helmy, Muhammad Fareezy Fahmy, Yusoff, Siti Hajar, Mansor, Hasmah, Gunawan, Teddy Surya, Chowdhury, Israth Jahan, Mohd Sapihie, Siti Nadiah
フォーマット: Proceeding Paper
言語:English
出版事項: IEEE 2024
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オンライン・アクセス:http://irep.iium.edu.my/115179/13/115179_%20A%20comparative%20analysis%20of%20LSTM.pdf
http://irep.iium.edu.my/115179/
https://ieeexplore.ieee.org/document/10675536
https://doi.org/10.1109/ICSIMA62563.2024.10675536
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要約:Solar power prediction is crucial for integrating renewable energy into the grid, but current methods often struggle with accuracy due to the limitations of machine learning algorithms. This study aims to enhance prediction accuracy by comparing the performance of Long Short-Term Memory (LSTM) and Support Vector Machine (SVM) models using datasets from Hebei, China. The main objective is identifying the most effective algorithm for precise solar power forecasting. The methodology involves training both models on historical solar power data and evaluating their performance against the Graph Spatial-Temporal Attention Neural Network (GSTANN) benchmark. The SVM model was selected for its superior metrics, achieving an MAE (Mean Absolute Error) of 0.5587, RMSE of 0.9741, and a training time of 0.0157 seconds. Results show that SVM outperforms GSTANN in 45 and 60- minute intervals, with MAE, MAPE, and RMSE improvements of up to 68.62%, 42.65%, and 69.44%, respectively. These findings suggest that SVM offers a more reliable solution for solar power prediction, providing valuable insights for further model enhancements.