A comparative study on the operational effectiveness of machine learning models in solar power forecasting

Authors: Manh-Hai Pham*, , Nguyen Tuan Anh, Vu Minh Phap, Pham Van Duy, Le Thanh Doanh, Vu Thi Anh Tho, Nguyen Dang Toan
https://doi.org/10.51316/jst.182.ssad.2025.35.2.7

Abstract

Accurate solar power forecasting is crucial for optimizing grid operations and balancing energy supply and demand. Due to the high variability of solar radiation, advanced machine learning methods are needed to enhance forecasting accuracy. This study compares three models: XGBoost, LightGBM, and a single-hidden-layer Bidirectional Gated Recurrent Unit (BiGRU). XGBoost and LightGBM are decision tree-based boosting models known for fast training and high accuracy, while BiGRU is a recurrent neural network designed for time-series data but prone to overfitting. Experimental results show that XGBoost and LightGBM train significantly faster and achieve lower errors (NMAPE < 5%), demonstrating superior generalization. In contrast, BiGRU exhibits overfitting with NMAPE = 23.986% and RMSE = 18,763.12 kW on June 30, 2021. Notably, on December 31, 2021, XGBoost and LightGBM closely followed actual power generation trends, whereas BiGRU struggled to capture variations, further indicating its generalization issues. The findings highlight XGBoost and LightGBM as more suitable models for solar power forecasting, providing valuable insights for researchers and engineers in power grid management

Keyword

Solar power forecasting, XGBoost, LightGBM, BiGRU, overfiting, execution time
Pages : 54-61

Related Articles:

Authors : Le Van Nghia, Nguyen Quoc Trieu*, Dam Hoang Phuc, Tran Trong Dat, Duong Ngoc Khanh
Authors : Dang Hoang Dieu, Nguyen Thu Ha*, Dinh Thi Lan Anh, Nguyen Duc Quang
Authors : Tran The Hung*, , Dao Cong Truong, Le Dinh Anh, Nguyen Trang Minh, Dinh Cong Truong