Conceptos Básicos
Modeling precipitation evolution with global deterministic motion and local stochastic variations improves prediction accuracy.
Resumen
The content introduces DiffCast, a framework for precipitation nowcasting that decomposes precipitation systems into global deterministic motion and local stochastic variations. It proposes a unified and flexible approach based on residual diffusion to address the shortcomings of previous methods. Extensive experimental results demonstrate the effectiveness of the framework compared to state-of-the-art techniques.
Directory:
- Abstract
- Precipitation nowcasting is a challenging spatio-temporal prediction task.
- DiffCast proposes a unified framework based on residual diffusion.
- Introduction
- Precipitation nowcasting aims to predict radar echoes sequences.
- Conventional methods fail to model the chaotic evolutionary nature of precipitation systems.
- Data Extraction
- Related Work
- Deterministic and probabilistic predictive models are compared.
- Task Definition and Preliminaries
- Formulation of precipitation nowcasting as a spatio-temporal prediction problem.
- Overall Framework
- DiffCast decomposes precipitation systems into global motion trend and local stochastic residual.
- Global Temporal UNet (GTUNet)
- Detailed diffusion component for stochastic residual prediction.
- Training and Inference
- Training and inference flow of the DiffCast framework.
- Experiments
- Experimental results on four radar datasets show significant improvements with DiffCast.
- Analysis and Discussions
- Necessity of deterministic loss and end-to-end training approach.
Estadísticas
"Our code is publicly available at https://github.com/DeminYu98/DiffCast."
Citas
"Our framework has two loss functions, namely the deterministic loss and denoising loss."
"Modeling precipitation evolution with global deterministic motion and local stochastic variations improves prediction accuracy."