A Review of Neural Networks in Precipitation Prediction
Yugong Zeng, Jiayuan Wang, Jonathan Wu

TL;DR
This review discusses neural network models for precipitation prediction, highlighting their advancements, challenges, and future directions in improving forecast accuracy and robustness.
Contribution
It provides a comprehensive overview of neural network architectures, training methods, datasets, and evaluation metrics used in precipitation forecasting.
Findings
Neural networks significantly improve short- and medium-term precipitation forecast accuracy.
Current challenges include modeling extreme rainfall and handling imbalanced data.
Future systems will integrate multiple data sources and hybrid models for better robustness.
Abstract
Precipitation prediction has undergone a profound transformation. A notable limitation of traditional NWP is the need for extensive statistical post-processing. To address this challenge, neural network-based approaches were developed. These approaches offer a framework that directly learns the mapping from atmospheric predictors to precipitation targets. Based on the technological development, this article first reviews the traditional precipitation forecasting methods and summarizes the development trends of precipitation forecasting based on neural networks. We then outline the training process, loss functions, and some datasets for precipitation prediction. In the main body of the article, we detail the basic artificial neural networks (ANNs), spatial feature extraction models, time feature extraction models, generative models, Transformer models, graph neural networks (GNNs), and…
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