Rectifying Distribution Shift in Cascaded Precipitation Nowcasting
- URL: http://arxiv.org/abs/2511.17628v2
- Date: Tue, 25 Nov 2025 08:57:01 GMT
- Title: Rectifying Distribution Shift in Cascaded Precipitation Nowcasting
- Authors: Fanbo Ju, Haiyuan Shi, Qingjian Ni,
- Abstract summary: Precipitation nowcasting aims to provide high-temporal forecasts by leveraging current radar observations.<n>We introduce Recti, a framework that explicitlycouples the rectification of mean-field shift from the generation of locality.<n> Experiments on two radar datasets demonstrate that Recti achieves significant performance improvements over existing state-of-the-art methods.
- Score: 1.1724961392643483
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Precipitation nowcasting, which aims to provide high spatio-temporal resolution precipitation forecasts by leveraging current radar observations, is a core task in regional weather forecasting. Recently, the cascaded architecture has emerged as the mainstream paradigm for deep learning-based precipitation nowcasting. This paradigm involves a deterministic model to predict posterior mean, followed by a probabilistic model to generate local stochasticity. However, existing methods commonly overlook the conflation of the systematic distribution shift in deterministic predictions and the local stochasticity. As a result, the distribution shift of the deterministic component contaminates the predictions of the probabilistic component, leading to inaccuracies in precipitation patterns and intensity, particularly over longer lead times. To address this issue, we introduce RectiCast, a two-stage framework that explicitly decouples the rectification of mean-field shift from the generation of local stochasticity via a dual Flow Matching model. In the first stage, a deterministic model generates the posterior mean. In the second stage, we introduce a Rectifier to explicitly learn the distribution shift and produce a rectified mean. Subsequently, a Generator focuses on modeling the local stochasticity conditioned on the rectified mean. Experiments on two radar datasets demonstrate that RectiCast achieves significant performance improvements over existing state-of-the-art methods.
Related papers
- HydroDiffusion: Diffusion-Based Probabilistic Streamflow Forecasting with a State Space Backbone [24.321954272892338]
HydroDiffusion is a diffusion-based probabilistic forecasting framework with a decoder-only state space model backbone.<n>It is evaluated across 531 watersheds in the contiguous United States (CONUS) in the CAMELS dataset.<n>Results show that HydroDiffusion achieves strong nowcast accuracy when driven by observed meteorological forcings.
arXiv Detail & Related papers (2025-12-13T05:05:27Z) - SimDiff: Simpler Yet Better Diffusion Model for Time Series Point Forecasting [8.141505251306622]
Diffusion models have recently shown promise in time series forecasting.<n>They often fail to achieve state-of-the-art point estimation performance.<n>We propose SimDiff, a single-stage, end-to-end framework for point estimation.
arXiv Detail & Related papers (2025-11-24T16:09:55Z) - SynCast: Synergizing Contradictions in Precipitation Nowcasting via Diffusion Sequential Preference Optimization [62.958457694151384]
We introduce preference optimization into precipitation nowcasting for the first time, motivated by the success of reinforcement learning from human feedback in large language models.<n>In the first stage, the framework focuses on reducing FAR, training the model to effectively suppress false alarms.
arXiv Detail & Related papers (2025-10-22T16:11:22Z) - Elucidated Rolling Diffusion Models for Probabilistic Weather Forecasting [52.6508222408558]
We introduce Elucidated Rolling Diffusion Models (ERDM)<n>ERDM is the first framework to unify a rolling forecast structure with the principled, performant design of Elucidated Diffusion Models (EDM)<n>On 2D Navier-Stokes simulations and ERA5 global weather forecasting at 1.5circ resolution, ERDM consistently outperforms key diffusion-based baselines.
arXiv Detail & Related papers (2025-06-24T21:44:31Z) - DEF: Diffusion-augmented Ensemble Forecasting [5.433548785820674]
We present DEF (textbfulEnsemble textbfulForecasting), a novel approach for generating initial condition perturbations.<n>We demonstrate that a simple conditional diffusion model can generate meaningful structured perturbations.<n>We show that the model accumulates less error over long-term forecasts while producing meaningful forecast distributions.
arXiv Detail & Related papers (2025-06-08T23:43:41Z) - CasCast: Skillful High-resolution Precipitation Nowcasting via Cascaded
Modelling [93.65319031345197]
We propose CasCast, a cascaded framework composed of a deterministic and a probabilistic part to decouple predictions for mesoscale precipitation distributions and small-scale patterns.
CasCast significantly surpasses the baseline (up to +91.8%) for regional extreme-precipitation nowcasting.
arXiv Detail & Related papers (2024-02-06T08:30:47Z) - DiffCast: A Unified Framework via Residual Diffusion for Precipitation Nowcasting [20.657502066923023]
Precipitation nowcasting is an important task to predict the radar echoes sequences based on current observations, which can serve both meteorological science and smart city applications.
Previous studies address the problem either from the perspectives of deterministic modeling or probabilistic modeling.
We propose to decompose and model the chaotic evolutionary precipitation systems from the perspective of global deterministic motion and local variations with residual mechanism.
arXiv Detail & Related papers (2023-12-11T11:26:32Z) - DiffLoad: Uncertainty Quantification in Electrical Load Forecasting with the Diffusion Model [22.428737156882708]
The integration of renewable energy sources and the occurrence of external events, such as the COVID-19 pandemic, have rapidly increased uncertainties in load forecasting.
This paper proposes a diffusion-based Seq2Seq structure to estimate epistemic uncertainty and employs the robust additive Cauchy distribution to estimate aleatoric uncertainty.
arXiv Detail & Related papers (2023-05-31T05:04:50Z) - An Energy-Based Prior for Generative Saliency [62.79775297611203]
We propose a novel generative saliency prediction framework that adopts an informative energy-based model as a prior distribution.
With the generative saliency model, we can obtain a pixel-wise uncertainty map from an image, indicating model confidence in the saliency prediction.
Experimental results show that our generative saliency model with an energy-based prior can achieve not only accurate saliency predictions but also reliable uncertainty maps consistent with human perception.
arXiv Detail & Related papers (2022-04-19T10:51:00Z) - CovarianceNet: Conditional Generative Model for Correct Covariance
Prediction in Human Motion Prediction [71.31516599226606]
We present a new method to correctly predict the uncertainty associated with the predicted distribution of future trajectories.
Our approach, CovariaceNet, is based on a Conditional Generative Model with Gaussian latent variables.
arXiv Detail & Related papers (2021-09-07T09:38:24Z) - Which Invariance Should We Transfer? A Causal Minimax Learning Approach [18.71316951734806]
We present a comprehensive minimax analysis from a causal perspective.
We propose an efficient algorithm to search for the subset with minimal worst-case risk.
The effectiveness and efficiency of our methods are demonstrated on synthetic data and the diagnosis of Alzheimer's disease.
arXiv Detail & Related papers (2021-07-05T09:07:29Z) - Learning Interpretable Deep State Space Model for Probabilistic Time
Series Forecasting [98.57851612518758]
Probabilistic time series forecasting involves estimating the distribution of future based on its history.
We propose a deep state space model for probabilistic time series forecasting whereby the non-linear emission model and transition model are parameterized by networks.
We show in experiments that our model produces accurate and sharp probabilistic forecasts.
arXiv Detail & Related papers (2021-01-31T06:49:33Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.