2021
DOI: 10.1175/mwr-d-20-0077.1
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A Stochastic Parameter Perturbation Method to Represent Uncertainty in a Microphysics Scheme

Abstract: Current state-of-the art regional numerical weather forecasts are run at horizontal grid spacings of a few kilometers, which permits medium to large-scale convective systems to be represented explicitly in the model. With the convection parameterization no longer active, much uncertainty in the formulation of subgrid-scale processes moves to other areas such as the cloud microphysical, turbulence, and land-surface parameterizations. The goal of this study is to investigate experiments with stochastically-pertu… Show more

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Cited by 20 publications
(21 citation statements)
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“…They differ however in the selection of the AR1 model class (Grunwald et al, 2000), the quantity to which the model is applied and the underlying statistical parameter distribution used for sampling the innovations at every time step. For example, the SPP scheme first formulated by Ollinaho et al (2017) and since applied in a number of other studies makes use of the Gaussian AR1 model applied to spectral coefficients of 2D horizontal Gaussian correlated noise with the innovations based on either the Log-Normal or Normal univariate distributions (Jankov et al, 2017(Jankov et al, , 2019Ollinaho et al, 2017;Stanford et al, 2019;Thompson et al, 2021). Another widely used SP scheme referred to as the Random Parameters (RP) uses a non-Gaussian linear AR1 model applied directly to spatially invariant parameters, with the innovation term based on the bounded uniform distribution (Hermoso et al, 2021;McCabe et al, 2016).…”
Section: Sampling Of Stochastically Perturbed Parametersmentioning
confidence: 99%
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“…They differ however in the selection of the AR1 model class (Grunwald et al, 2000), the quantity to which the model is applied and the underlying statistical parameter distribution used for sampling the innovations at every time step. For example, the SPP scheme first formulated by Ollinaho et al (2017) and since applied in a number of other studies makes use of the Gaussian AR1 model applied to spectral coefficients of 2D horizontal Gaussian correlated noise with the innovations based on either the Log-Normal or Normal univariate distributions (Jankov et al, 2017(Jankov et al, , 2019Ollinaho et al, 2017;Stanford et al, 2019;Thompson et al, 2021). Another widely used SP scheme referred to as the Random Parameters (RP) uses a non-Gaussian linear AR1 model applied directly to spatially invariant parameters, with the innovation term based on the bounded uniform distribution (Hermoso et al, 2021;McCabe et al, 2016).…”
Section: Sampling Of Stochastically Perturbed Parametersmentioning
confidence: 99%
“…As a result, the SP schemes produce physically‐based and physically‐consistent stochastic variability to the tendencies of the resolved states. Evaluations of the SP schemes in global and regional models have shown positive impacts on the ensemble prediction skill of various degrees depending on the prediction time range, the modeling system, and verification variables (Christensen et al., 2015; Hermoso et al., 2021; Jankov et al., 2017; Leutbecher et al., 2017; McCabe et al., 2016; Ollinaho et al., 2017; Stanford et al., 2019; Thompson et al., 2021; Wang et al., 2019). In comparison to the SPPT, the impacts of the SP schemes on ensemble spread were found to be smaller, but adding value when the two approaches were combined (Christensen et al., 2015; Hermoso et al., 2021; Jankov et al., 2019; Ollinaho et al., 2017).…”
Section: Introductionmentioning
confidence: 99%
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“…The aforementioned inconsistencies can be larger above the melting layer, where uncertainty exists in, among other things, the partitioning of the total ice water content (IWC) P. Shrestha et al: Evaluation of the COSMO model (v5.1) in polarimetric radar space across hydrometeor species -cloud ice, snow aggregates, graupel and hail -in cloud microphysics schemes (van Lier-Walqui et al, 2012;Morrison et al, 2020;Thompson et al, 2021). Morrison and Milbrandt (2015) developed an alternative scheme called P3 with only a single frozen hydrometeor class but with explicit prediction of size-dependent hydrometeor bulk densities and fall speeds based on the prognostic rimed and deposited masses.…”
Section: Introductionmentioning
confidence: 99%