4.6 Article

An Efficient Bayesian Approach to Learning Droplet Collision Kernels: Proof of Concept Using Cloudy, a New n-Moment Bulk Microphysics Scheme

出版社

AMER GEOPHYSICAL UNION
DOI: 10.1029/2022MS002994

关键词

cloud microphysics; Bayesian inference; model calibration; uncertainty quantification; parameter learning

资金

  1. Heising-Simons Foundation
  2. National Science Foundation [AGS-1835860]
  3. Department of Energy Computational Sciences Graduate Fellowship

向作者/读者索取更多资源

This article introduces a new bulk microphysics scheme called Cloudy and demonstrates how Bayesian learning can be applied to infer parameters. By using the CES algorithm, computational efficiency is improved and noise pollution is reduced, leading to successful results in experiments.
The small-scale microphysical processes governing the formation of precipitation particles cannot be resolved explicitly by cloud resolving and climate models. Instead, they are represented by microphysics schemes that are based on a combination of theoretical knowledge, statistical assumptions, and fitting to data (tuning). Historically, tuning was done in an ad hoc fashion, leading to parameter choices that are not explainable or repeatable. Recent work has treated it as an inverse problem that can be solved by Bayesian inference. The posterior distribution of the parameters given the data-the solution of Bayesian inference-is found through computationally expensive sampling methods, which require over O 105 evaluations of the forward model; this is prohibitive for many models. We present a proof of concept of Bayesian learning applied to a new bulk microphysics scheme named Cloudy, using the recently developed Calibrate-Emulate-Sample (CES) algorithm. Cloudy models collision-coalescence and collisional breakup of cloud droplets with an adjustable number of prognostic moments and with easily modifiable assumptions for the cloud droplet mass distribution and the collision kernel. The CES algorithm uses machine learning tools to accelerate Bayesian inference by reducing the number of forward evaluations needed to O 102. It also exhibits a smoothing effect when forward evaluations are polluted by noise. In a suite of perfect-model experiments, we show that CES enables computationally efficient Bayesian inference of parameters in Cloudy from noisy observations of moments of the droplet mass distribution. In an additional imperfect-model experiment, a collision kernel parameter is successfully learned from output generated by a Lagrangian particle-based microphysics model.

作者

我是这篇论文的作者
点击您的名字以认领此论文并将其添加到您的个人资料中。

评论

主要评分

4.6
评分不足

次要评分

新颖性
-
重要性
-
科学严谨性
-
评价这篇论文

推荐

暂无数据
暂无数据