This study investigates the feasibility of optimizing site-specific temperature and dew point forecasts by adopting the gradient boosting decision tree model XGBoost, supported by insights from Shapley Additive Explanations (SHAP) to increase the reliability of the machine learning-based forecasts.
Aardvark Weather is the first end-to-end data-driven weather forecasting system that takes raw observational data as input and provides skillful global and local weather forecasts without relying on traditional numerical weather prediction models.
AI-based diffusion models provide accurate and efficient tropical cyclone forecasts, crucial for vulnerable regions.
HEAL-ViT introduces a novel architecture that combines the benefits of graph-based models and transformers to improve medium-range weather forecasting.
MSE-based models struggle with extreme weather prediction, but Exloss and ExEnsemble improve accuracy.
Using Exloss and ExEnsemble improves extreme weather prediction accuracy.
Data-driven ensemble models improve sub-seasonal forecasting accuracy.
Accurate weather forecasting using a multilayer perceptron model tailored for Itoshima, Japan.
The author proposes a hybrid modeling approach to address the limitations of data-driven weather prediction models by integrating physics-based and statistical components, such as neural networks, to improve forecasting accuracy.
Conformer introduces continuous attention to capture spatio-temporal features in weather forecasting, outperforming existing models.