Multi-model integration for dynamic forecasting (MIDF): a framework for wind speed and direction prediction

被引:0
作者
Maruthi, Molaka [1 ]
Kim, Bubryur [2 ,3 ,4 ]
Sujeen, Song [5 ]
An, Jinwoo [6 ]
Chen, Zengshun [7 ]
机构
[1] Kyungpook Natl Univ, Sch Architecture Civil Environm & Energy Engn, 80 Daehak Ro, Daegu 41566, South Korea
[2] Kyungpook Natl Univ, Sch Space Engn Sci, 80 Daehak Ro, Daegu 41566, South Korea
[3] Kyungpook Natl Univ, Dept Robot & Smart Syst Engn, 80 Daehak Ro, Daegu 41566, South Korea
[4] Kyungpook Natl Univ, Dept Safety Convergence, 80 Daehak Ro, Daegu 41566, South Korea
[5] Dept Earth Turbine, 36,Dongdeok Ro 40 Gil, Daegu 41905, South Korea
[6] Univ Texas Rio Grande Valley, Coll Engn & Comp Sci, Dept Civil Engn, Edinburg, TX 78539 USA
[7] Chongqing Univ, Sch Civil Engn, Chongqing 400044, Peoples R China
基金
新加坡国家研究基金会;
关键词
Ensemble learning; Meta-learning; Wind speed; Wind direction; Multi-model integration for dynamic forecasting; Time series forecasting; POWER; MODEL; CNN;
D O I
10.1007/s10462-025-11140-x
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Accurate forecasting of wind speed and direction is critical for the efficient integration of wind power into energy systems, ensuring reliable renewable energy production and grid stability. Traditional methods often struggle with capturing nonlinear interdependencies, quantifying uncertainties, and providing reliable long-term predictions, particularly in complex atmospheric conditions. To address these challenges, this study introduces multi-model Integration for dynamic forecasting (MIDF), an ensemble machine learning framework that combines the strengths of DeepAR and temporal fusion transformer (TFT) models through a two-step meta-learning process. MIDF leverages DeepAR's probabilistic forecasting capabilities and TFT's attention mechanisms to enhance accuracy, robustness, and interpretability. Using a custom meteorological dataset spanning January 2010 to May 2023, the model was evaluated against standalone alternatives across multiple metrics, including MSE, RMSE, and R2. MIDF achieved superior performance, with MSE, RMSE, and R2 values of 0.0035, 0.01913, and 0.89 for wind speed, and 0.00052, 0.02507, and 0.86 for wind direction, significantly reducing errors compared to existing methods. These results underscore the potential of ensemble learning in advancing wind forecasting accuracy, enabling more reliable renewable energy management, operational planning, and risk mitigation in meteorological applications.
引用
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页数:37
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