Black carbon vertical profiles strongly affect its radiative forcing uncertainty

Authors:

BH Samset, G Myhre, M Schulz, Y Balkanski, S Bauer, TK Berntsen, H Bian, N Bellouin, T Diehl, RC Easter, SJ Ghan, T Iversen, S Kinne, A Kirkevåg, J-F Lamarque, G Lin, X Liu, J Penner, Ø Seland, RB Skeie, P Stier, T Takemura, K Tsigaridis, K Zhang

Brightening of the global cloud field by nitric acid and the associated radiative forcing

Authors:

R Makkonen, S Romakkaniemi, H Kokkola, P Stier, P Räisänen, S Rast, J Feichter, M Kulmala, A Laaksonen

Characterizing uncertainty in deep convection triggering using explainable machine learning

Journal of the Atmospheric Sciences American Meteorological Society

Authors:

Greta A Miller, Philip Stier, Hannah M Christensen

Abstract:

Realistically representing deep atmospheric convection is important for accurate numerical weather and climate simulations. However, parameterizing where and when deep convection occurs (“triggering”) is a well-known source of model uncertainty. Most triggers parameterize convection deterministically, without considering the uncertainty in the convective state as a stochastic process. In this study, we develop a machine learning model, a random forest, that predicts the probability of deep convection, and then apply clustering of SHAP values, an explainable machine learning method, to characterize the uncertainty of convective events. The model uses observed large-scale atmospheric variables from the Atmospheric Radiation Measurement constrained variational analysis dataset over the Southern Great Plains, US. The analysis of feature importance shows which mechanisms driving convection are most important, with large-scale vertical velocity providing the highest predictive power for more certain, or easier to predict, convective events, followed by the dynamic generation rate of dilute convective available potential energy. Predictions of uncertain convective events instead rely more on other features such as precipitable water or low-level temperature. The model outperforms conventional convective triggers. This suggests that probabilistic machine learning models can be used as stochastic parameterizations to improve the occurrence of convection in weather and climate models in the future.

ClimateBench: A benchmark dataset for data-driven climate projections

Authors:

Duncan Watson-Parris, Yuhan Rao, Dirk Olivié, Øyvind Seland, Peer J Nowack, Gustau Camps-Valls, Philip Stier, Shahine Bouabid, Maura Dewey, Emilie Fons, Jessenia Gonzalez, Paula Harder, Kai Jeggle, Julien Lenhardt, Peter Manshausen, Maria Novitasari, Lucile Ricard, Carla Roesch

ClimateBench: A benchmark dataset for data-driven climate projections

Authors:

Duncan Watson-Parris, Yuhan Rao, Dirk Olivié, Øyvind Seland, Peer J Nowack, Gustau Camps-Valls, Philip Stier, Shahine Bouabid, Maura Dewey, Emilie Fons, Jessenia Margarita Marina Gonzalez, Paula Harder, Kai Jeggle, Julien Lenhardt, Peter Manshausen, Maria Novitasari, Lucile Ricard, Carla Roesch