Sub-grid cloud parametrization issues in Met Office Unified Model

Similar documents
Overview and Cloud Cover Parameterization

Towards an NWP-testbed

Using Cloud-Resolving Model Simulations of Deep Convection to Inform Cloud Parameterizations in Large-Scale Models

Evalua&ng Downdra/ Parameteriza&ons with High Resolu&on CRM Data

Large Eddy Simulation (LES) & Cloud Resolving Model (CRM) Françoise Guichard and Fleur Couvreux

An economical scale-aware parameterization for representing subgrid-scale clouds and turbulence in cloud-resolving models and global models

GCMs with Implicit and Explicit cloudrain processes for simulation of extreme precipitation frequency

Comparison of the Vertical Velocity used to Calculate the Cloud Droplet Number Concentration in a Cloud-Resolving and a Global Climate Model

What the Heck are Low-Cloud Feedbacks? Takanobu Yamaguchi Rachel R. McCrary Anna B. Harper

Improving Low-Cloud Simulation with an Upgraded Multiscale Modeling Framework

Assessing the performance of a prognostic and a diagnostic cloud scheme using single column model simulations of TWP ICE

Impact of microphysics on cloud-system resolving model simulations of deep convection and SpCAM

1D shallow convective case studies and comparisons with LES

Application of Numerical Weather Prediction Models for Drought Monitoring. Gregor Gregorič Jožef Roškar Environmental Agency of Slovenia

Unified Cloud and Mixing Parameterizations of the Marine Boundary Layer: EDMF and PDF-based cloud approaches

MOGREPS status and activities

Parameterization of Cumulus Convective Cloud Systems in Mesoscale Forecast Models

SPOOKIE: The Selected Process On/Off Klima Intercomparison Experiment

Developing Continuous SCM/CRM Forcing Using NWP Products Constrained by ARM Observations

Description of zero-buoyancy entraining plume model

How To Find Out How Much Cloud Fraction Is Underestimated

Cloud verification: a review of methodologies and recent developments

How To Model An Ac Cloud

Long-term Observations of the Convective Boundary Layer (CBL) and Shallow cumulus Clouds using Cloud Radar at the SGP ARM Climate Research Facility

Cloud-Resolving Simulations of Convection during DYNAMO

How To Find Out How Much Cloud Fraction Is Underestimated

Nowcasting: analysis and up to 6 hours forecast

Convective Clouds. Convective clouds 1

Atmospheric kinetic energy spectra from high-resolution GEM models

Frank and Charles Cohen Department of Meteorology The Pennsylvania State University University Park, PA, U.S.A.

How To Understand And Understand The Physics Of Clouds And Precipitation

Partnership to Improve Solar Power Forecasting

Climate Models: Uncertainties due to Clouds. Joel Norris Assistant Professor of Climate and Atmospheric Sciences Scripps Institution of Oceanography

Clouds and Convection

Evaluating the Impact of Cloud-Aerosol- Precipitation Interaction (CAPI) Schemes on Rainfall Forecast in the NGGPS

Limitations of Equilibrium Or: What if τ LS τ adj?

Guy Carpenter Asia-Pacific Climate Impact Centre, School of energy and Environment, City University of Hong Kong

SAFNWC/MSG Cloud type/height. Application for fog/low cloud situations

Mixed-phase layer clouds

MSG-SEVIRI cloud physical properties for model evaluations

Trimodal cloudiness and tropical stable layers in simulations of radiative convective equilibrium

IMPACT OF SAINT LOUIS UNIVERSITY-AMERENUE QUANTUM WEATHER PROJECT MESONET DATA ON WRF-ARW FORECASTS

Improving Hydrological Predictions

Investigations on COSMO 2.8Km precipitation forecast

The APOLLO cloud product statistics Web service The APOLLO cloud product statistics Web service

Continental and Marine Low-level Cloud Processes and Properties (ARM SGP and AZORES) Xiquan Dong University of North Dakota

Dutch Atmospheric Large-Eddy Simulation Model (DALES v3.2) CGILS-S11 results

The Next Generation Flux Analysis: Adding Clear-Sky LW and LW Cloud Effects, Cloud Optical Depths, and Improved Sky Cover Estimates

Month-Long 2D Cloud-Resolving Model Simulation and Resultant Statistics of Cloud Systems Over the ARM SGP

Chapter 6 - Cloud Development and Forms. Interesting Cloud

Stability and Cloud Development. Stability in the atmosphere AT350. Why did this cloud form, whereas the sky was clear 4 hours ago?

TOPIC: CLOUD CLASSIFICATION

SOLAR IRRADIANCE FORECASTING, BENCHMARKING of DIFFERENT TECHNIQUES and APPLICATIONS of ENERGY METEOROLOGY

Diurnal Cycle of Convection at the ARM SGP Site: Role of Large-Scale Forcing, Surface Fluxes, and Convective Inhibition

The APOLLO cloud product statistics Web service

The impact of parametrized convection on cloud feedback.

Lecture 3. Turbulent fluxes and TKE budgets (Garratt, Ch 2)

Performance Metrics for Climate Models: WDAC advancements towards routine modeling benchmarks

All-sky assimilation of microwave imager observations sensitive to water vapour, cloud and rain

A Review on the Uses of Cloud-(System-)Resolving Models

Climatology of aerosol and cloud properties at the ARM sites:

Nowcasting of significant convection by application of cloud tracking algorithm to satellite and radar images

Meteorological Forecasting of DNI, clouds and aerosols

RAPIDS Operational Blending of Nowcasting and NWP QPF

Evaluation of precipitation simulated over mid-latitude land by CPTEC AGCM single-column model

Assimilation of cloudy infrared satellite observations: The Met Office perspective

Stratosphere-Troposphere Exchange in the Tropics. Masatomo Fujiwara Hokkaido University, Japan (14 March 2006)

Cloud Development and Forms. LIFTING MECHANISMS 1. Orographic 2. Frontal 3. Convergence 4. Convection. Orographic Cloud. The Orographic Cloud

Physical properties of mesoscale high-level cloud systems in relation to their atmospheric environment deduced from Sounders

Combining Satellite High Frequency Microwave Radiometer & Surface Cloud Radar Data for Determination of Large Scale 3 D Cloud IWC 서은경

Transcription:

Sub-grid cloud parametrization issues in Met Office Unified Model Cyril Morcrette Workshop on Parametrization of clouds and precipitation across model resolutions, ECMWF, Reading, November 2012

Table of Contents A tale of several grey zones Sub-grid variability of condensate and its impact on microphysical process rates

Operational Models North Atlantic and Europe 12 km Uses a convection scheme UK4 Model (4 km) Convection scheme has CAPE-dependent CAPEclosure time-scale. UK1.5 Model 1.5 km No convection scheme. Global model ~25 km Uses a convection scheme HadGEM climate model ~60-150 km Uses a convection scheme

Cloud cover 1.0 Relative Humidity 0.0 0.0 0.8 1.0 1.2 Now consider a smaller grid-box A simple cloud scheme Cloud cover first rises above 0 when RH exceeds a critical relative humidity (RHcrit). Overcast conditions reached when RH=2.0-RHcrit. RHt=(qv+qcl)/qsat An example where RHcrit=0.8 1.0 Cloud cover 0.0 0.0 0.9 1.0 1.1 Relative Humidity RHt=(qv+qcl)/qsat An example where RHcrit=0.9

So expect RH crit to tend to 1.0 as grid-box gets smaller RH crit=0.80 Use aircraft data from many flights in different synoptic conditions. Consider flights legs of different lengths Look at local variability and mean conditions and hence infer RH crit Would be nice to look at sensitivity to changes in dz as well as dx. Could we use data from tethered balloons? Figure and analysis by Ian Boutle. Extrapolation gives RHcrit=0.95 at dx=1 km RHcrit=1.00 at dx=180 m RH crit=0.85 RH crit=0.90 RH crit=0.95 RH crit=1.00

Smith (1990) cloud scheme T q T p Currently, all operational limited area models still use the Smith (1990) cloud scheme. q v q c C Then forget everything and start again next timestep However observations suggest that the same thermodynamic state (T,q,p) can be associated with different cloud cover and condensate amounts. So need to have a system where the clouds at a given point is the result of lots of different processes acting on the cloud and modifying it through-out its lifetime. Allows same thermodynamic state to have different cloud in it, depending on what has happened before.

PC2 cloud scheme prognostic cloud, prognostic condensate Wilson et al.(2008a) doi:10.1002/qj.333 similar in concept to Tiedtke (1993) scheme. T q v q c p C Short-Wave Boundary-Layer Convection Erosion Long-Wave MicroPhys Large-scale Ascent System has memory Σ Update the cloud fields then advect with the wind, ready for use next timestep. PC2 cloud scheme is now used for: global deterministic NWP global EPS global climate-simulations (e.g. next IPCC).

What physical processes affect liquid water path in PC2? Liquid Water Path (LWP) Zonal-mean, annual-mean from 10-year simulation of present-day climate. Microphysics Convection Erosion Large-scale ascent Initialization Long-wave Boundary-layer Advection Short-wave Numerical checks Sources of Liquid Water Path The Convection scheme is the dominant source of LWP in PC2. Numerical checks i.e. checking that CF>0 if LWC>0 CF>0 of IWC>0 LWC+IWC>0 if CF>0 If this term is large then there is probably a bug! Sinks of Liquid Water Path Morcrette (2012) DOI: 10.1002/asl.380

Grey Zones Black: process should be parametrized White: process should be done explicitly 1000 km 100 km 10 km 1 km 100 m 10 m 1m Need cloud scheme to determine fractional cloud cover. Cloud scheme grey zone All-or-nothing. Each grid-box is either cloudy or clear. 1000 km 100 km 10 km 1 km 100 m 10 m 1m Need convection scheme to represent stabilization of profile by sub-grid convective motions. Convection scheme grey zone In order to get through the cloud grey zone, one must also get through the convection grey zone. Convective motions are resolved by the grid.

Yes we can, model will run. But need to consider: Re-tuning cloud erosion rate RH crit (can we use value derived from aircraft obs?) Missing process: Given that convection scheme is main source of cloud in PC2: Can we use PC2 in a model without a convection scheme? UK1.5 model also uses sub-grid turbulence scheme (in horizontal) which is not used in coarser-resolution models This diffuses T and q, But does not currently consider the direct impact on LWC and CF. This is all work in progress

Evaluation of cloud forecasts Imagine you have 2 sets of cloud forecasts Which one is better? Better one has smaller errors. But there are different types of cloud errors

Cloud errors can be: Obs Model Obs Model Obs Model

Large-scale errors in T and q Errors in cloud parametrization scheme Error in cloud forecast is combination of all 3 types Errors in other parametrization schemes

Large-scale errors in T and q Errors in cloud parametrization scheme Need to continue with ARM, Cloud-Net and CloudSat that provide detailed observations of clouds in the vertical. Error in cloud forecast is Need to evaluate the cloud forecast when the model has got good forecast of T and q. So need observations of T and q profiles. Use process diagnostics to find out what each scheme is doing and how that is affecting the cloud forecast. Errors in other parametrization schemes

What do we really want from a cloud scheme? Climate Average impact of cloud Radiative impact of clouds depends on FOO, AWP, LWC & IWC (can be nonlinear). Willing to accept some error in average cloud properties if it makes climatological radiative balance better. Do not really care about timing. Weather Forecasting Correct FOO Correct AWP Timing is crucial Not too worried if radiative balance is out on long timescale. But how do we score ourselves?

NWP index (global) The global index is compiled from the following parameters: mean sea-level pressure 500 hpa height 850 hpa wind 250 hpa wind Verified over the following areas: Northern Hemisphere Tropics Southern Hemisphere At the following forecast ranges: T+24 T+48 T+72 T+96 T+120 nothing about cloud!

NWP index (UK) The UK index is compiled from the following parameters: Temperature (surface) Wind (surface) Rainfall (6 hour accumulation) Visibility Total Cloud Amount (TCA) Cloud base height (CBH) Verified over the UK area 6-hourly out to T+48

A tale of several grey zones Cloud scheme grey zone Cloud EVALUATION grey zone Clouds do not form explicit part of evaluation of model performance. Assess things influenced by clouds but not clouds themselves: [e.g. LS flow, LS T,q, T(surf), surf(precip)] Clouds are explicitly considered when evaluating model performance. Assess: cloud cover, cloud-base-height. How does relative model performance differ simply by changing how 2 models are assessed. How does this depend on current compensating errors in: cloud cover, condensate amount, radiative properties, microphysics scheme and diurnal cycle of convection

Sub-grid variability of condensate and impact on microphysical process rates

Consider a microphysics process rate: Because of: sub-grid variability non-linearity the TRUE grid-box mean value of the process rate IS NOT the value calculated from the grid-box mean properties. Following Morrison and Gettelman (2008) and Larson and Griffin (2012), the subgrid variability in q can be written as a PDF (e.g. Gamma or log-normal) defined using the grid-box mean q and f, the fractional standard deviation of q. e.g. gamma distribution: The unbiased process rate can then be calculated from the grid-box mean q and a correction factor, E: where All we now need is f, the fractional standard deviation of the liquid water content.

Fractional standard deviation of liquid water content This f can also be used in the cloud-generator used by McICA for doing radiation. [Hill et al (2012) DOI: 10.1002/qj.1893] Further details in: Boutle et al. (submitted to QJRMS) or from Ian Boutle.

Questions and discussion