Ten-Meter Wind Speed Forecast Correction in Southwest China Based on U-Net Neural Network
Abstract
:1. Introduction
2. Data
3. Methods
3.1. Correction Methods
3.1.1. Decaying Averaging Method (DAM)
3.1.2. Unary Linear Regression (ULR)
3.1.3. CNN
3.1.4. U-Net Neural Network
3.2. Evaluation Metrics
3.3. Error Decomposition
4. Results
4.1. Forecast Correction Evaluation
4.2. Evaluations of Error Decomposition
5. Discussion and Conclusions
- (1)
- The original GEFS forecasts exhibit poor performance in predicting wind speeds in the Western and Eastern Sichuan provinces, Eastern Yunnan province, and Guizhou province, with better predictions for the 10-m U-component of wind compared to the 10-m V-component.
- (2)
- The DAM, ULR, CNN, and U-Net methods all show certain correction effects on GEFS wind speed forecasts in the region under study. While DAM, ULR, and CNN exhibit some negative corrections in specific local areas, U-Net achieves positive corrections throughout the entire study area. CNN and U-Net show significantly better correction performance than traditional DAM and ULR methods, with U-Net demonstrating the best overall correction effect. After correction using the U-Net, for a 1-day forecast lead time, the proportion of the 10-m U-component of wind with errors less than 0.5 m/s has increased by 46% compared to GEFS. Similarly, for the 10-m V-component of wind, the proportion of errors less than 0.5 m/s has increased by 50% compared to GEFS.
- (3)
- The changes in MSE for DAM, ULR, CNN, and U-Net over different lead times are similar to those of GEFS, increasing with the lead time. GEFS’s Bias2 and Distribution show little variation with the lead time, while the Sequence changes consistently with MSE. This suggests that the increase in MSE with lead time is primarily driven by the Sequence. After correction, all schemes are mainly driven by the Sequence. DAM and ULR show the best correction performance for Bias2. CNN and U-Net exhibit better correction for Distribution in the first five days, while U-Net achieves the best correction for Sequence.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Xiang, T.; Zhi, X.; Guo, W.; Lyu, Y.; Ji, Y.; Zhu, Y.; Yin, Y.; Huang, J. Ten-Meter Wind Speed Forecast Correction in Southwest China Based on U-Net Neural Network. Atmosphere 2023, 14, 1355. https://doi.org/10.3390/atmos14091355
Xiang T, Zhi X, Guo W, Lyu Y, Ji Y, Zhu Y, Yin Y, Huang J. Ten-Meter Wind Speed Forecast Correction in Southwest China Based on U-Net Neural Network. Atmosphere. 2023; 14(9):1355. https://doi.org/10.3390/atmos14091355
Chicago/Turabian StyleXiang, Tao, Xiefei Zhi, Weijun Guo, Yang Lyu, Yan Ji, Yanhe Zhu, Yanan Yin, and Jiawen Huang. 2023. "Ten-Meter Wind Speed Forecast Correction in Southwest China Based on U-Net Neural Network" Atmosphere 14, no. 9: 1355. https://doi.org/10.3390/atmos14091355
APA StyleXiang, T., Zhi, X., Guo, W., Lyu, Y., Ji, Y., Zhu, Y., Yin, Y., & Huang, J. (2023). Ten-Meter Wind Speed Forecast Correction in Southwest China Based on U-Net Neural Network. Atmosphere, 14(9), 1355. https://doi.org/10.3390/atmos14091355