extreme precipitation event
Towards a Spatiotemporal Fusion Approach to Precipitation Nowcasting
Curcio, Felipe, Castro, Pedro, Fonseca, Augusto, Castro, Rafaela, Franco, Raquel, Ogasawara, Eduardo, Stepanenko, Victor, Porto, Fabio, Ferro, Mariza, Bezerra, Eduardo
--With the increasing availability of meteorological data from various sensors, numerical models and reanalysis products, the need for efficient data integration methods has become paramount for improving weather forecasts and hy-drometeorological studies. In this work, we propose a data fusion approach for precipitation nowcasting by integrating data from meteorological and rain gauge stations in Rio de Janeiro metropolitan area with ERA5 reanalysis data and GFS numerical weather prediction. We employ the spatiotemporal deep learning architecture called STConvS2S, leveraging a structured dataset covering a 9 x 11 grid. The study spans from January 2011 to October 2024, and we evaluate the impact of integrating three surface station systems. Among the tested configurations, the fusion-based model achieves an F1-score of 0.2033 for forecasting heavy precipitation events (greater than 25 mm/h) at a one-hour lead time. Additionally, we present an ablation study to assess the contribution of each station network and propose a refined inference strategy for precipitation nowcasting, integrating the GFS numerical weather prediction (NWP) data with in-situ observations. Precipitation nowcasting (or very short-range forecasting [1]) involves predicting rainfall within a six-hour lead time. Objective analysis techniques are then employed to synthesize these disparate measurements into a coherent, gridded spatial map for precipitation nowcasting [16]. Accurate precipitation forecasting is critical for mitigating natural disasters, such as floods, landslides, and droughts, and supports informed decision-making across sectors including agriculture, transportation, energy, and public health [3]. Recent advancements in machine learning, particularly deep learning, have demonstrated significant potential in geoscien-tific applications, including precipitation nowcasting.
- South America > Brazil > Rio de Janeiro > Rio de Janeiro (0.26)
- Europe > Russia > Central Federal District > Moscow Oblast > Moscow (0.04)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
- (3 more...)
Improving ensemble extreme precipitation forecasts using generative artificial intelligence
Sha, Yingkai, Sobash, Ryan A., Gagne, David John II
An ensemble post-processing method is developed to improve the probabilistic forecasts of extreme precipitation events across the conterminous United States (CONUS). The method combines a 3-D Vision Transformer (ViT) for bias correction with a Latent Diffusion Model (LDM), a generative Artificial Intelligence (AI) method, to post-process 6-hourly precipitation ensemble forecasts and produce an enlarged generative ensemble that contains spatiotemporally consistent precipitation trajectories. These trajectories are expected to improve the characterization of extreme precipitation events and offer skillful multi-day accumulated and 6-hourly precipitation guidance. The method is tested using the Global Ensemble Forecast System (GEFS) precipitation forecasts out to day 6 and is verified against the Climate-Calibrated Precipitation Analysis (CCPA) data. Verification results indicate that the method generated skillful ensemble members with improved Continuous Ranked Probabilistic Skill Scores (CRPSSs) and Brier Skill Scores (BSSs) over the raw operational GEFS and a multivariate statistical post-processing baseline. It showed skillful and reliable probabilities for events at extreme precipitation thresholds. Explainability studies were further conducted, which revealed the decision-making process of the method and confirmed its effectiveness on ensemble member generation. This work introduces a novel, generative-AI-based approach to address the limitation of small numerical ensembles and the need for larger ensembles to identify extreme precipitation events.
- North America > United States > Rocky Mountains (0.04)
- North America > United States > Mississippi (0.04)
- North America > United States > Louisiana (0.04)
- (7 more...)
Climate simulation more realistic with artificial intelligence
Accurately modeling extreme precipitation events remains a major challenge for climate models. These models predict how the earth's climate may change over the course of decades and even centuries. To improve them especially with regard to extreme events, researchers now use machine learning methods otherwise applied to image generation. Computers already use artificial intelligence to improve the resolution of fuzzy images, to create images imitating the style of particular painters based on photographs, or to render realistic portraits of people who do not actually exist. The underlying method is based on what are referred to as GANs (Generative Adversarial Networks).
- Europe > Germany > Brandenburg > Potsdam (0.05)
- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.05)
RainBench: Towards Global Precipitation Forecasting from Satellite Imagery
de Witt, Christian Schroeder, Tong, Catherine, Zantedeschi, Valentina, De Martini, Daniele, Kalaitzis, Freddie, Chantry, Matthew, Watson-Parris, Duncan, Bilinski, Piotr
Extreme precipitation events, such as violent rainfall and hail storms, routinely ravage economies and livelihoods around the developing world. Climate change further aggravates this issue. Data-driven deep learning approaches could widen the access to accurate multi-day forecasts, to mitigate against such events. However, there is currently no benchmark dataset dedicated to the study of global precipitation forecasts. In this paper, we introduce \textbf{RainBench}, a new multi-modal benchmark dataset for data-driven precipitation forecasting. It includes simulated satellite data, a selection of relevant meteorological data from the ERA5 reanalysis product, and IMERG precipitation data. We also release \textbf{PyRain}, a library to process large precipitation datasets efficiently. We present an extensive analysis of our novel dataset and establish baseline results for two benchmark medium-range precipitation forecasting tasks. Finally, we discuss existing data-driven weather forecasting methodologies and suggest future research avenues.
- North America > United States (0.14)
- South America (0.04)
- Asia > India (0.04)
- (4 more...)