A Diffusion-Based Framework for High-Resolution Precipitation Forecasting over CONUS
- URL: http://arxiv.org/abs/2512.09059v1
- Date: Tue, 09 Dec 2025 19:23:27 GMT
- Title: A Diffusion-Based Framework for High-Resolution Precipitation Forecasting over CONUS
- Authors: Marina Vicens-Miquel, Amy McGovern, Aaron J. Hill, Efi Foufoula-Georgiou, Clement Guilloteau, Samuel S. P. Shen,
- Abstract summary: This study introduces a diffusion-based deep learning (DL) framework that systematically compares three residual prediction strategies differing only in their input sources.<n>Forecasts are produced at 1-km spatial resolution, beginning with direct 1-hour predictions and extending to 12 hours using autoregressive rollouts.
- Score: 0.410492188035848
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate precipitation forecasting is essential for hydrometeorological risk management, especially for anticipating extreme rainfall that can lead to flash flooding and infrastructure damage. This study introduces a diffusion-based deep learning (DL) framework that systematically compares three residual prediction strategies differing only in their input sources: (1) a fully data-driven model using only past observations from the Multi-Radar Multi-Sensor (MRMS) system, (2) a corrective model using only forecasts from the High-Resolution Rapid Refresh (HRRR) numerical weather prediction system, and (3) a hybrid model integrating both MRMS and selected HRRR forecast variables. By evaluating these approaches under a unified setup, we provide a clearer understanding of how each data source contributes to predictive skill over the Continental United States (CONUS). Forecasts are produced at 1-km spatial resolution, beginning with direct 1-hour predictions and extending to 12 hours using autoregressive rollouts. Performance is evaluated using both CONUS-wide and region-specific metrics that assess overall performance and skill at extreme rainfall thresholds. Across all lead times, our DL framework consistently outperforms the HRRR baseline in pixel-wise and spatiostatistical metrics. The hybrid model performs best at the shortest lead time, while the HRRR-corrective model outperforms others at longer lead times, maintaining high skill through 12 hours. To assess reliability, we incorporate calibrated uncertainty quantification tailored to the residual learning setup. These gains, particularly at longer lead times, are critical for emergency preparedness, where modest increases in forecast horizon can improve decision-making. This work advances DL-based precipitation forecasting by enhancing predictive skill, reliability, and applicability across regions.
Related papers
- Extreme Weather Nowcasting via Local Precipitation Pattern Prediction [6.992919908851609]
ExPreCast is an efficient deterministic framework for generating detailed radar forecasts.<n>Our approach achieves state-of-the-art performance, delivering accurate and reliable nowcasts across both normal and extreme rainfall regimes.
arXiv Detail & Related papers (2026-02-05T01:55:14Z) - The Forecast Critic: Leveraging Large Language Models for Poor Forecast Identification [74.64864354503204]
We propose The Forecast Critic, a system that leverages Large Language Models (LLMs) for automated forecast monitoring.<n>We evaluate the ability of LLMs to assess time series forecast quality.<n>We present three experiments, including on both synthetic and real-world forecasting data.
arXiv Detail & Related papers (2025-12-12T21:59:53Z) - CSU-PCAST: A Dual-Branch Transformer Framework for medium-range ensemble Precipitation Forecasting [6.540270371082014]
This study develops a deep learning-based ensemble framework for multi-step precipitation prediction.<n>The architecture employs a patch-based Swin Transformer backbone with periodic convolutions to handle longitudinal continuity.<n>Training minimizes a hybrid loss combining the Continuous Ranked Probability Score (CRPS) and weighted log1p mean squared error (log1pMSE)
arXiv Detail & Related papers (2025-10-23T17:43:38Z) - 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) - HRRRCast: a data-driven emulator for regional weather forecasting at convection allowing scales [1.3834027455392646]
We introduce HRRRCast, a data-driven emulator built with advanced machine learning techniques.<n>ResHRRR is a ResNet-based model (ResHRRR) and a Graph Neural Network-based model (GraphHRRR)<n>ResHRRR outperforms HRRR forecast at light rainfall threshold (20 dBZ) and achieves competitive performance at moderate thresholds (30 dBZ)
arXiv Detail & Related papers (2025-07-08T04:26:47Z) - OMG-HD: A High-Resolution AI Weather Model for End-to-End Forecasts from Observations [11.729902584481767]
OMG-HD is an AI-based high-resolution weather forecasting model designed to make predictions directly from observational data sources.<n>We achieve up to a 13% improvement on RMSE for 2-meter temperature, 17% on 10-meter wind speed, 48% on 2-meter specific humidity, and 32% on surface pressure.
arXiv Detail & Related papers (2024-12-24T07:46:50Z) - ExtremeCast: Boosting Extreme Value Prediction for Global Weather Forecast [57.6987191099507]
We introduce Exloss, a novel loss function that performs asymmetric optimization and highlights extreme values to obtain accurate extreme weather forecast.
We also introduce ExBooster, which captures the uncertainty in prediction outcomes by employing multiple random samples.
Our solution can achieve state-of-the-art performance in extreme weather prediction, while maintaining the overall forecast accuracy comparable to the top medium-range forecast models.
arXiv Detail & Related papers (2024-02-02T10:34:13Z) - GenCast: Diffusion-based ensemble forecasting for medium-range weather [10.845679586464026]
We introduce GenCast, a probabilistic weather model with greater skill and speed than the top operational medium-range weather forecast in the world.
GenCast generates an ensemble of 15-day global forecasts, at 12-hour steps and 0.25 degree latitude-longitude, for over 80 surface and atmospheric variables in 8 minutes.
It has greater skill than ENS on 97.4% of 1320 targets we evaluated, and better predicts extreme weather, tropical cyclones, and wind power production.
arXiv Detail & Related papers (2023-12-25T19:30:06Z) - When Rigidity Hurts: Soft Consistency Regularization for Probabilistic
Hierarchical Time Series Forecasting [69.30930115236228]
Probabilistic hierarchical time-series forecasting is an important variant of time-series forecasting.
Most methods focus on point predictions and do not provide well-calibrated probabilistic forecasts distributions.
We propose PROFHiT, a fully probabilistic hierarchical forecasting model that jointly models forecast distribution of entire hierarchy.
arXiv Detail & Related papers (2023-10-17T20:30:16Z) - Residual Corrective Diffusion Modeling for Km-scale Atmospheric Downscaling [58.456404022536425]
State of the art for physical hazard prediction from weather and climate requires expensive km-scale numerical simulations driven by coarser resolution global inputs.
Here, a generative diffusion architecture is explored for downscaling such global inputs to km-scale, as a cost-effective machine learning alternative.
The model is trained to predict 2km data from a regional weather model over Taiwan, conditioned on a 25km global reanalysis.
arXiv Detail & Related papers (2023-09-24T19:57:22Z) - When Rigidity Hurts: Soft Consistency Regularization for Probabilistic
Hierarchical Time Series Forecasting [69.30930115236228]
Probabilistic hierarchical time-series forecasting is an important variant of time-series forecasting.
Most methods focus on point predictions and do not provide well-calibrated probabilistic forecasts distributions.
We propose PROFHiT, a fully probabilistic hierarchical forecasting model that jointly models forecast distribution of entire hierarchy.
arXiv Detail & Related papers (2022-06-16T06:13:53Z) - Machine learning for total cloud cover prediction [0.0]
We investigate the performance of post-processing using multilayer perceptron (MLP) neural networks, gradient boosting machines (GBM) and random forest (RF) methods.
Compared to the raw ensemble, all calibration methods result in a significant improvement in forecast skill.
RF models provide the smallest increase in predictive performance, while POLR and GBM approaches perform best.
arXiv Detail & Related papers (2020-01-16T17:13:37Z)
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.