Better calibration of cloud parameterizations and subgrid effects increases the fidelity of the E3SM Atmosphere Model version 1

Realistic simulation of the Earth's mean-state climate remains a major challenge, and yet it is crucial for predicting the climate system in transition. Deficiencies in models' process representations, propagation of errors from one process to another, and associated compensating errors can often confound the interpretation and improvement of model simulations. These errors and biases can also lead to unrealistic climate projections and incorrect attribution of the physical mechanisms governing past and future climate change. Here we show that a significantly improved global atmospheric simulation can be achieved by focusing on the realism of process assumptions in cloud calibration and subgrid effects using the Energy Exascale Earth System Model (E3SM) Atmosphere Model version 1 (EAMv1). The calibration of clouds and subgrid effects informed by our understanding of physical mechanisms leads to significant improvements in clouds and precipitation climatology, reducing common and long-standing biases across cloud regimes in the model. The improved cloud fidelity in turn reduces biases in other aspects of the system. Furthermore, even though the recalibration does not change the global mean aerosol and total anthropogenic effective radiative forcings (ERFs), the sensitivity of clouds, precipitation, and surface temperature to aerosol perturbations is significantly reduced. This suggests that it is possible to achieve improvements to the historical evolution of surface temperature over EAMv1 and that precise knowledge of global mean ERFs is not enough to constrain historical or future climate change. Cloud feedbacks are also significantly reduced in the recalibrated model, suggesting that there would be a lower climate sensitivity when it is run as part of the fully coupled E3SM. This study also compares results from incremental changes to cloud microphysics, turbulent mixing, deep convection, and subgrid effects to understand how assumptions in the representation of these processes affect different aspects of the simulated atmosphere as well as its response to forcings. We conclude that the spectral composition and geographical distribution of the ERFs and cloud feedback, as well as the fidelity of the simulated base climate state, are important for constraining the climate in the past and future.

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Author Ma, Po-Lun
Harrop, Bryce E.
Larson, Vincent E.
Neale, Richard B.
Gettelman, Andrew
Morrison, Hugh
Wang, Hailong
Zhang, Kai
Klein, Stephen A.
Zelinka, Mark D.
Zhang, Yuying
Qian, Yun
Yoon, Jin-Ho
Jones, Christopher R.
Huang, Meng
Tai, Sheng-Lun
Singh, Balwinder
Bogenschutz, Peter A.
Zheng, Xue
Lin, Wuyin
Quaas, Johannes
Chepfer, Hélène
Brunke, Michael A.
Zeng, Xubin
Mülmenstädt, Johannes
Hagos, Samson
Zhang, Zhibo
Song, Hua
Liu, Xiaohong
Pritchard, Michael S.
Wan, Hui
Wang, Jingyu
Tang, Qi
Caldwell, Peter M.
Fan, Jiwen
Berg, Larry K.
Fast, Jerome D.
Taylor, Mark A.
Golaz, Jean-Christophe
Xie, Shaocheng
Rasch, Philip J.
Leung, L. Ruby
Publisher UCAR/NCAR - Library
Publication Date 2022-04-07T00:00:00
Digital Object Identifier (DOI) Not Assigned
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Resource Version N/A
Topic Category geoscientificInformation
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Metadata Date 2023-08-18T18:35:58.139594
Metadata Record Identifier edu.ucar.opensky::articles:25287
Metadata Language eng; USA
Suggested Citation Ma, Po-Lun, Harrop, Bryce E., Larson, Vincent E., Neale, Richard B., Gettelman, Andrew, Morrison, Hugh, Wang, Hailong, Zhang, Kai, Klein, Stephen A., Zelinka, Mark D., Zhang, Yuying, Qian, Yun, Yoon, Jin-Ho, Jones, Christopher R., Huang, Meng, Tai, Sheng-Lun, Singh, Balwinder, Bogenschutz, Peter A., Zheng, Xue, Lin, Wuyin, Quaas, Johannes, Chepfer, Hélène, Brunke, Michael A., Zeng, Xubin, Mülmenstädt, Johannes, Hagos, Samson, Zhang, Zhibo, Song, Hua, Liu, Xiaohong, Pritchard, Michael S., Wan, Hui, Wang, Jingyu, Tang, Qi, Caldwell, Peter M., Fan, Jiwen, Berg, Larry K., Fast, Jerome D., Taylor, Mark A., Golaz, Jean-Christophe, Xie, Shaocheng, Rasch, Philip J., Leung, L. Ruby. (2022). Better calibration of cloud parameterizations and subgrid effects increases the fidelity of the E3SM Atmosphere Model version 1. UCAR/NCAR - Library. http://n2t.net/ark:/85065/d78d00wd. Accessed 04 April 2025.

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