Weather Forecasting
Weather forecasting aims to accurately predict atmospheric conditions, crucial for numerous societal applications from daily planning to disaster mitigation. Current research emphasizes improving forecast accuracy and efficiency through advanced deep learning models, including transformers, convolutional neural networks, and recurrent neural networks, often incorporating techniques like masked autoencoding and diffusion models to handle complex spatiotemporal dependencies and quantify uncertainty. These advancements are leading to more precise and reliable forecasts across various timescales and spatial resolutions, impacting diverse fields such as agriculture, energy management, and public safety.
Papers
Regional Weather Variable Predictions by Machine Learning with Near-Surface Observational and Atmospheric Numerical Data
Yihe Zhang, Bryce Turney, Purushottam Sigdel, Xu Yuan, Eric Rappin, Adrian Lago, Sytske Kimball, Li Chen, Paul Darby, Lu Peng, Sercan Aygun, Yazhou Tu, M. Hassan Najafi, Nian-Feng Tzeng
Accurate Prediction of Temperature Indicators in Eastern China Using a Multi-Scale CNN-LSTM-Attention model
Jiajiang Shen, Weiyan Wu, Qianyu Xu