TY - JOUR
T1 - A Bayesian approach for statistical–physical bulk parameterization of rain microphysics. Part II
T2 - Idealized Markov chain Monte Carlo experiments
AU - van Lier-Walqui, Marcus
AU - Morrison, Hugh
AU - Kumjian, Matthew R.
AU - Reimel, Karly J.
AU - Prat, Olivier P.
AU - Lunderman, Spencer
AU - Morzfeld, Matthias
N1 - Funding Information:
This work was funded by U.S. DOE Atmospheric System Research Grant DE-SC0016579. The National Center for Atmospheric Research is sponsored by the National Science Foundation. MM and SL acknowledge support by the National Science Foundation under Grant DMS-1619630. MM gratefully acknowledges support by the Office of Naval Research (Grant N00173-17-2-C003).
Funding Information:
Acknowledgments. This work was funded by U.S. DOE Atmospheric System Research Grant DE-SC0016579. The National Center for Atmospheric Research is sponsored by the National Science Foundation. MM and SL acknowledge support by the National Science Foundation under Grant DMS-1619630. MM gratefully acknowledges support by the Office of Naval Research (Grant N00173-17-2-C003).
Publisher Copyright:
© 2020 American Meteorological Society.
PY - 2020/3/1
Y1 - 2020/3/1
N2 - Observationally informed development of a new framework for bulk rain microphysics, the Bayesian Observationally Constrained Statistical–Physical Scheme (BOSS; described in Part I of this study), is demonstrated. This scheme’s development is motivated by large uncertainties in cloud and weather simulations associated with approximations and assumptions in existing microphysics schemes. Here, a proof-of-concept study is presented using a Markov chain Monte Carlo sampling algorithm with BOSS to probabilistically estimate microphysical process rates and parameters directly from a set of synthetically generated rain observations. The framework utilized is an idealized steady-state one-dimensional column rainshaft model with specified column-top rain properties and a fixed thermodynamical profile. Different configurations of BOSS—flexibility being a key feature of this approach—are constrained via synthetic observations generated from a traditional three-moment bulk microphysics scheme. The ability to retrieve correct parameter values when the true parameter values are known is illustrated. For cases when there is no set of true parameter values, the accuracy of configurations of BOSS that have different levels of complexity is compared. It is found that addition of the sixth moment as a prognostic variable improves prediction of the third moment (proportional to bulk rain mass) and rain rate. In contrast, increasing process rate formulation complexity by adding more power terms has little benefit—a result that is explained using further-idealized experiments. BOSS rainshaft simulations are shown to well estimate the true process rates from constraint by bulk rain observations, with the additional benefit of rigorously quantified uncertainty of these estimates.
AB - Observationally informed development of a new framework for bulk rain microphysics, the Bayesian Observationally Constrained Statistical–Physical Scheme (BOSS; described in Part I of this study), is demonstrated. This scheme’s development is motivated by large uncertainties in cloud and weather simulations associated with approximations and assumptions in existing microphysics schemes. Here, a proof-of-concept study is presented using a Markov chain Monte Carlo sampling algorithm with BOSS to probabilistically estimate microphysical process rates and parameters directly from a set of synthetically generated rain observations. The framework utilized is an idealized steady-state one-dimensional column rainshaft model with specified column-top rain properties and a fixed thermodynamical profile. Different configurations of BOSS—flexibility being a key feature of this approach—are constrained via synthetic observations generated from a traditional three-moment bulk microphysics scheme. The ability to retrieve correct parameter values when the true parameter values are known is illustrated. For cases when there is no set of true parameter values, the accuracy of configurations of BOSS that have different levels of complexity is compared. It is found that addition of the sixth moment as a prognostic variable improves prediction of the third moment (proportional to bulk rain mass) and rain rate. In contrast, increasing process rate formulation complexity by adding more power terms has little benefit—a result that is explained using further-idealized experiments. BOSS rainshaft simulations are shown to well estimate the true process rates from constraint by bulk rain observations, with the additional benefit of rigorously quantified uncertainty of these estimates.
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U2 - 10.1175/JAS-D-19-0071.1
DO - 10.1175/JAS-D-19-0071.1
M3 - Article
AN - SCOPUS:85082883922
SN - 0022-4928
VL - 77
SP - 1043
EP - 1064
JO - Journals of the Atmospheric Sciences
JF - Journals of the Atmospheric Sciences
IS - 3
ER -