Shuai hu

and 8 more

The Yangtze River Valley (YRV) experienced an unprecedented heatwave in midsummer of 2022, but the detailed physical processes involved in the influence of anomalous large-scale atmospheric circulation on the heatwave remain unknown. Here, we show that the positive meridional gradient of anomalous atmospheric moisture at the middle-lower troposphere and associated extreme dry air advection over the YRV are key prerequisites for the formation of the 2022 YRV heatwave. The 2022 YRV heatwave is dominated by the interannual variability, which contributes 72.7% to the total temperature anomalies. Diagnosis of the surface heat budget equation indicates that the surface cloud radiative forcing is the most important process in driving the 2022 YRV heatwave, which is dominated by the positive surface short-wave cloud radiative forcing associated with the suppressed precipitation and the middle-low clouds. The suppressed precipitation is induced by the vertical dynamical processes of anomalous moisture advection caused by the anomalous descending flows over the YRV, which are driven by the negative advection of anomalous latent heat energy by climatological meridional wind (anomalous dry air advection) according to the atmospheric moist static energy equation. Simulations from the Lagrangian model FLEXPART further indicate that the moisture anomaly over the north of YRV is mainly originated from the surface evaporation in the YRV, implying that there is a positive land-air feedback during the life cycle of the YRV heatwave. Our study adds a perspective to the existing mechanism analyses of the 2022 YRV heatwave to serve accurate climate prediction and adaptation planning.

Weidong Li

and 7 more

Numerical weather prediction models often struggle to accurately simulate high-resolution precipitation processes, due to resolution limits and difficulties in representing convection and cloud microphysics. Data-driven methods often offer more accurate approximation of these unresolved processes by learning from high-fidelity referential data. Yet, existing approaches fail to yield fine-resolution, spatially coherent, reliable ensemble simulations/predictions, particularly for high-impact extreme events. To address these limitations, we develop a latent diffusion modeling (LDM) framework for quantitative precipitation estimation and forecast. The LDM leverages low-resolution (25 km) circulation and topographic information to estimate precipitation at a 4 km resolution. The latent diffusion model (LDM) learns the probability distribution of precipitation patterns by first compressing high-resolution spatial data into a compact, Quasi-Gaussian latent space. It then gradually refines estimates through a deep neural network parameterized reverse diffusion process, effectively capturing complex precipitation dynamics and delivering superior ensemble predictions. This approach enables LDMs to outperform traditional deep learning models like convolutional neural nets and generative adversarial neural nets, particularly for extreme events, while avoiding issues such as mode collapse, blurring artifacts, or underestimation of extremes. Compared to the dynamical method (WRF and GFS), the LDM offers significant performance gains, particularly for extreme precipitation events, improving over 30% in root mean squared error and over 40% in critical success index. For the extreme precipitation (> 300 mm/d) in California on October 25, 2021, LDM can provide effective forecasting up to 7 days in advance, forced by circulation prediction from a data-driven weather forecasting model.