Post on 29-Apr-2019
NWP at NOAA’s Earth System Research Laboratory, Global Systems Division (ESRL/GSD): developments
and applications for physics parameterizations
Georg Grell, Joe Olson, Shan Sun, Ben Green, Li Zhang, Ravan Ahmadov, Isidora Jankov, Stan Benjamin, Ligia
Bernardet, many others
Overview • Developments of ESRL’s operational storm scale and regional scale
modeling physics suite (currently using WRF)– Overview of storm scale and regional scale physics developments– MYNN-EDMF-Shallow convection– Stochastic physics
• Some aspects of global modeling:– Recent work with the Grell-Freitas convective parameterization– inline chemistry, seasonal forecasting experiments with a couple
atmosphere/ocean/chemistry model• Future modeling plans at ESRL/GSD
RAPid Refresh (RAP), and High Resolution Rapid Refresh (HRRR) domains
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Expanded (new) RAP domain (13 km) • Hourly update cycle for RAP and HRRR – operational
Additional experimental runs
• 750m nest experimental• RAP also with full chemistry
(twice a day – experimental)• HRRR with Smoke and other
anthropogenic emissions twice a day for 36 hrforecasts - experimental
Current Status - NOAA Hourly Updated Models
RAP
HRRR
RAP - Rapid Refresh (Benjamin et al., MWR, 2016) – 13km
– NOAA “situational awareness” model for high-impact weather
– New 18-hour forecast each hour– NOAA/NCEP operational – 1 May 2012– RAPv2 implementation – 25 Feb 2014– Hourly use by National Weather Service,
SPC/AWC/WPC, FAA, private sector
HRRR – High-Resolution Rapid Refresh - 3km - Storm/energy/aviation guidance- Real-time operational – NCEP, and experimental-
ESRL supercomputer- NCEP implementation HRRRv1 - 30 Sept 2014- HRRRv2/RAPv3 -NCEP implementation- Aug 2016
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RAP/HRRR Physical Processes & Parameterizations
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Model Component Currently under development in RAP/HRRR Aspects of ongoing developments Stochastic approaches in
progress
Non-localTurbulent transport
MYNN Mass-fluxEDMF multi plume approach (Neggers et al), momentum transport inclusion, scale aware
Stochastic entrainment
Clouds -microphysics Thompson aerosol-aware
Will be in WRFV3.9
Use of wildfires, dust, sea salt, other emissions for Thompson aerosol aware microphysics, prognostic application of Chaboureau-Bechtold, tuning of radiation coupling
Stochastic SPP component for cloud fractions
Non resolved deepconvection Grell-Freitas
parameterizationWill be in WRFV3.9
Implementation and evaluation in HWRF, FIM, and GFS
Stochastic SPP and SPPT in progress
Land Surface and coupling to PBL
RUC LSM/MYNN Sfc Layer
Real-time green fraction, alternatives to M-O for surface layer
Stochastic SPP, SPPT in progress
Chaboureau-Bechtold
Multi plume approach
Joseph Olson1,2, Jaymes Kenyon1,2,Georg Grell1, John Brown1, Wayne Angevine1,2,
Stan Benjamin1, Kay Suselj3
1NOAA’s Earth System Research Laboratory, Boulder, CO2Cooperative Institute for Research in Environmental Science
3NASA’s Jet Propulsion Laboratory, Pasadena, CA
FY16-17
Development of a scale-aware parameterization of subgrid cloudiness feedback to radiation.
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Scale-Aware Requirements for a Turbulent Mixing Scheme
Boundary Layer-Cloud Physics Development
1)Reduction of parameterized mixing as dx -> 0.2)Change in the behavior of the scheme as dx -> 0.
• Mass-flux (shallow-cu) scheme – represent smaller plumes as dx -> 0.• Eddy Diffusivity scheme – transforms to 3D mixing as dx -> 0.
Subgrid clouds in the MYNN-EDMF Scheme• Stratus component from partial-condensation scheme within
the eddy diffusivity component.• Shallow-cumulus component from mass-flux component.
MYNN Boundary Layer Scheme Modifications
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1. Mass-flux component (MYNN-EDMF)– Dynamic Multi-Plume: dynamic number/sizes of plumes.
• Adapts to different mode grid spacing• Adapts to growth of PBL.
– Options to transport momentum, TKE, and chemical species.– Option to activate stochastic lateral entrainment rates (Suselj et al. 2013).– Total mixing (mass-flux transport & eddy diffusivity) is solved simultaneously and
implicitly (Suselj et al. 2013).
2. Subgrid-scale clouds– Chaboureau and Bechtold (2002 & 2005) convective & stratus components.– Diagnostic-decay method implemented.– Coupled to the radiation schemes.
8Boundary Layer-Cloud Physics Development
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Dynamic Multi-Plume Model
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Boundary Layer-Cloud Physics Development
Model grid column
LCL
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Dynamic Multi-Plume (DMP)
A) The maximum number of plumes available (Nmax) is determined by the model grid spacing. Max plume width = 0.75*dx
Boundary Layer-Cloud Physics Development
1 2 3 4 5 6 7 8 9 10 (#)100 200 300 400 500 600 700 800 900 1000 (m)
1 2 3 4 5 6 7 (#)100 200 300 400 500 600 700 (m)
B) Number of plumes (N) is further limited by the PBLH.For example, at dx = 1000 meters, a maximum of 7 plumes are available, but the number used grows as the PBLH grows:
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Scale-Aware Tapering of Mass-Flux Scheme
Boundary Layer-Cloud Physics Development
• Taken from Honnert et al. (2011, JAS, their figure 5):ShCu: TKE in the entrainment layer PBL: TKE in boundary layer
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Δx = 16 km Δx = 1 kmΔx = 2 kmΔx = 4 kmΔx = 8 kmOriginal; shallow-cumulus scheme activated
Above figure taken from Field et al (2013) – 12 UTC 31 Jan 2010.
Comparison of Original and New PhysicsShortwave up at TOA
New MYNN-EDMF scheme with subgrid clouds
RAP/HRRR Physics
• Aerosol aware microphysics and radiation need aerosols: Should we really use an aerosol climatology in the presence of strong aerosol sources?
• Strong sources such as wildfires or dust can decrease SW radiation drastically as well as change CCN by orders of magnitudes
HRRR-Smoke: VIIRS Fire Radiative Power, 3 prognostic aerosols
28-29 Sept 2016
HRRR-Smoke: 3km horizontal resolution, used for aerosol aware microphysics
2016- HRRR-Smoke will include FRP data from VIIRS and MODIS, Thompson aerosol-aware microphysics (water friendly and ice friendly aerosols), including anthropogenic emissions
Direct and indirect effect: only small additional
computer resources needed
Injection layer
Freitas et al., GRL 2006, ACP 2007, 2010
Plumerise in HRRR: The 1-d in-line cloud model: governing equations
• W equation
• U equation
• 1st law of
thermodynamic
• water vapor
conservation
• cloud water
conservation
• rain/ice
conservation
• equation for radius
size
Example of injection height with heat flux of
30 and 80 kW/m2
aaa
aaa
Modeled vertically integrated aerosol concentrations VIIRS AOD
HRRR-Smoke simulated vertically integrated aerosolconcentrations and aerosol optical depth from VIIRS for August 27, 2015
VIIRS data also very useful for independent verification!
Quantitative evaluation with retro runs: comparison of two HRRR-smoke retro periods ( 10 days) with and without feedback: RAOB
verification over HRRR domain
climatology difference“real” emissions
Temperature BIAS
Surface temperature verification over HRRR domain
Ceiling < 3000 ft verification over HRRR domain
SFC TEMPBIAS
TSS Skill Score
climatology difference“real” emissions
Example of HRRR-Smoke forecast during 2016 fire season
AUG 19, 00Z
Short wave radiation differences for one particular time in comparison to integrated smoke
Summary and future plans for aerosols and microphysics
1. With a double moment aerosol aware microphyics scheme only 2 additional variables
are used, including smoke in an operational version of the HRRR with cycling does not
degrade the forecast – indications are it might improve forecasts
2. Need an extended testing period (1 year) to validate (1)
3. Dust and sea salt parameterization should be included
4. Add more fire satellite detection data (MODIS, GOES-R) and smoke boundary
conditions in future
5. Radiative impact versus microphysics impact
Focus on MYNN PBL • Parameters
• Mixing length 30%• Aerodynamic roughness length 30%• Thermal/moisture roughness length 30%• Mass fluxes 20%• Prandtl number limit 2.5 +/- 1 (only for stable conditions)• Cloud fraction 20%
• Temporal and spatial lengths• 150km and 6hr• 300km and 12hr• 600km and 24hr
• Combination of MYNN PBL SPP with SPPT and SKEB• 8-members• 4 cases initialized at 06Z
• Green positive correlation• Red negative correlation
• Figure presents Spread/Skill for SPP, SPP+SPPT and SPP+SPPT+SKEB
Some early results for using stochastic physics
Overview • Developments of ESRL’s operational storm scale and regional
scale modeling physics suite (currently using WRF)– Overview of storm scale and regional scale physics developments– MYNN-EDMF-Shallow convection– Stochastic physics
• Some aspects of global modeling:– Recent work with the Grell-Freitas convective parameterization– inline chemistry, seasonal forecasting experiments with a couple
atmosphere/ocean/chemistry model
Global modeling is changing at ESRL: Switch from ESRL model to NGGPS is starting, but results shown here are still with ESRL’s model
IHYCOM: Icosahedral Hybrid Coordinate Ocean ModelFIM: Flow-following- finite-volume Icosahedral Model
• Icosahedral horizontal grid
• Isentropic-sigma hybrid vertical coordinate
• adaptive in vertical• concentrates
around frontal zones, tropopause
Different coupling appproach: inline, the two models share the same horizontal grid.
Inline Chemistry – from WRF-Chem• Seasalt, dust, dms emissions modules from the Goddard Chemistry Aerosol
Radiation and Transport (GOCART) model• Anthropogenic emissions from the Hemispheric Transport of Air Pollution (HTAP)
project• Biomass burning are Satellite derived (MODIS), injection height calculated online
with one-dimensional plumerise model• Simple sulfate and aerosol chemistry from GOCART (more complex available)• Wet deposition for resolved and non resolved • Aerosol optical properties are calculated online with MIE calculations for short
wave and longwave RRTMG radiation parameterization
FIM To be replaced with new NGGPS core, once
available !Currently three different
chem suites available:1. GOCART2. GOCART + gas-phase
chemistry3. Complex
aerosols+gas-phase+ secondary organic aerosols
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• Momentum transport (as in SAS and/or ECMWF) • Additional closure for deep convection: Diurnal cycle effect (Bechtold) • Changed cloud water detrainment treatment• Mass conserving tracer transport• Additional closures for shallow convection (Boundary Layer Equilibrium (BLQE,
Raymond 1995; W*, Grant 2001, Heat Engine, Renno and Ingersoll, JAS 1996)• PDF approach for normalized mass flux profiles was implemented
• Originally to fit LES modeling for shallow convection • allows easy application of mass conserving stochastic perturbation of vertical
heating and moistening profiles• Provides smooth vertical profiles
• Latest implements: memory and third type of cloud (mid-level convection)• Stochastic part in WRF now coupled to Stochastic Parameter Perturbation (SPP),
and Stochastic Kinetic Energy Backscatter (SKEBS) approach (J. Berner )
Recent new implementations into GF scheme
Effect of cloud scale horizontal pressure gradients (Gregory et al. 1997, Zhang and Wu, 2000) is to adjust the in-cloud winds towards those of the large scale flow. For the
ECMWF approach (follows Gregory et al., 1997), the entrainment rate is simply adjusted
E(u,v)up=Eup +λDupD(u,v)up=Dup +λDup
Where E(u,v) and D(u,v) are simply the entrainment/detrainment rates.
For SAS approach equations follow directly Zhang and Wu, 2003
• The pressure gradient force across the updraft is proportional to the product of mass flux and vertical shear of the mean wind,
• Proportionality constant is -.55 for Zhang and Wu,• Gregory at al at first assumed the constant to be -.7
Both are very simple to implement. Proportionality constant was tested for Stochastic Parameter Perturbation (SPP)
Momentum transport
As in ECMWF, we also include an additional heat source representing dissipation of kinetic energy (Steinheimer et al 2007)
Heat source from momentum transport: dissipation if kinetic energy
Changing the vertical mass flux PDF’s
• Large changes in vertical redistribution of heat and moisture
• Mass conserving for stochastic approaches
• significant impact on HAC’s,• Increases spread for
ensemble data assimilation
PDF1
PDF2
1d version of GF only
Changing momentum transport constants:• large impact on comparison of
global wind speed biases• Improving wind bias has
significant impact on HAC’s but does not necessarily improve HAC’s
Diurnal Cycle implementation, 120 hour forecasts:
• precipitation averaged over Amazon basin is improved
• HAC’s little impacted
Impact of momentum transport and diurnal cycle implementation
30 retro FIM runs, about 30km resolution, 120hr forecasts
FIM/IHYCOM sub-seasonal hindcast experiments: 600 one month runs (Green et al. 2017)
• *Uncoupled atmosphere-only setup; monthly SSTs from Hadley Centre interpolated to daily.
Experiment name FIM-AGF FIM-CGF FIM-SAS CFSv2
Atm
osph
eric
mod
el
Dynamic core FIM FIM FIM GFS
Horizontal grid(structure, resolution)
(Icosahedral,G7 ~60 km)
(Icosahedral,G7 ~60 km)
(Icosahedral,G7 ~60 km)
(Spectral,T126 ~100 km)
Vertical grid 64 hybrid σ-θ layers 64 hybrid σ-θ layers 64 hybrid σ-θ layers 64 hybrid σ-p layers
Deep conv. scheme Revised GF Revised GF SAS (2015 GFS) SAS (Saha et al. 2010)
All other physics 2015 GFS 2015 GFS 2015 GFS Saha et al. (2014)
Oce
an m
odel Dynamic core None iHYCOM iHYCOM MOM4
Horizontal grid(structure, resolution) N/A (Icosahedral,
G7 ~60 km)(Icosahedral,G7 ~60 km)
Variable (Saha et al.2010, pp. 1031-1032)
Vertical grid N/A 32 hybrid σ-ρ layers 32 hybrid σ-ρ layers 40 stretched height layers
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• Top: Bivariate correlation• Bottom: RMSE and
spread• Left: RMM; Right: VPM• Interesting points:
– FIM-AGF much worse than FIM-CGF (and other coupled runs); no surprise, and no more FIM-AGF results will be shown
– Higher correlations (more skill) but also higher RMSE (error magnitudes) for RMM than for VPM
– FIM-CGF and CFSv2 are comparable in skill and RMSE; FIM-SAS much worse across the board
•
Figure 1: Single-model skill and spread
a
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b
c d
IN GFS: Comparisons of surface precipitation rate (24 h avg mm/day)SAS (operational), SAS (imfdepcnv=2), GF (v3a), v3b (tuning experiment)
Global average Average over the Tropics (20S – 20N)
schemes Total Convective Convective (land+ocean)
Land (Conv) Ocean (conv)
Frac (%) (Conv/tot)
SAS (op) 2.81 1.53 4.41 2.89 4.87 86.7
SAS (2) 2.90 1.61 4.57 4.58 4.57 87.3
GF (v3a) 2.74 1.07 3.66 2.58 3.99 70.5
GF (v3b, imid=0)
3.05 1.56 5.35 2.49 6.22 86.6
GF (v3b, imid=1)
3.03 1.54 5.29 2.42 6.17 86.5Experimental example
V3a So far best performance
First run of GF scheme in GFS, no tuning or data assimilation yet – 10 day forecasts over 3 month period
1-day T RMSE
10-day T RMSE
SAS typically better than GFS-GF early in forecast, but GFS-GF better later.Seen in T, RH at surface and upper air
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• Latest implementations: memory and third type of cloud (mid-level convection)• Splitting the module into three parts:
• Driver (may be different for various physics suites)• Module for deep convection (independent of dynamic core or physics suite)• Module for shallow convection (also independent)• General clean up of unused arrays, and adding comments
Final changes (not including tuning) over last month
Evaluation happening in regional as well as global modelson timescales from storm-scale to sub-seasonal
Experimental: aerosol awarenessChange 2: Modified evaporation of
raindrops (Jiang and Feingold) based on empirical relationship
Change 1: Change constant autoconversion rate to aerosol
(CCN) dependent Berry conversion
Change 2 introduces a proportionality between precipitation efficiency (PE) and total normalized condensate (I1), requiring determination of the
proportionality constant Cpr
Saulo Freitas, Arlindo Silva, Angela Benedetti, Georg Grell, Oriol Jorba, Morad Mokhtari, Samuel Remy and many other WGNE Members Participants
Evaluating aerosols impacts on Numerical Weather Prediction
Many questions left to ask:1. How simple/complex does the chemistry need to be to predict aerosols with
enough accuracy2. How does (1) impact NWP for short, medium, and long range applications3. Impact versus improvement4. With NOAA’s Next Generation Global Prediction System (NGGPS) program this
was the ideal time to start asking the question of what should be part of a state-of-the-art NGGPS modeling system
5. What can we afford with respect to computational requirements?
WGNE comparisons
• Full chemistry run (with feedbacks minus meteorology only run
• Double moment microphysics
• Average over 20 runs, 3 days, 12Z T2m differences,
Low AOD: Most of this warming caused by constant droplet number assumption in meteorology only run
Latest aerosol work, regional and global scales
Averaging in areas with significant convection, dx= 1.7km
RNW appeared unpredictable: Convection has different strength
For high resolution run: CLW and ICE appear to have a
signal
T2M, 18Z, Sep 10
Box averaged vertical profile of CLW+ICE
Lat = -4.5 to -6.5Lon -68 to -72
1.E6*kg/kg
PM2.5 (μg/m3)
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T2M difference fields, September 10, 1200UTC- mid-morning. Positive (red) is warmer compared to MET – simulation with convective parameterization
DIR +IND
Full chemistry and physics, aerosol indirect
explicitly included
DX=5km
Using convective parameterization with and without
aerosol awareness
1 run only! Will have to retune GF and run all 20 cases!
Direct effect only
Average over 20 runs!
Using chemistry and aerosol suites with different complexity: An NGGPS project that started before the dynamic core was known
• Use ESRL’s Flow following finite volume Icosahedral Model (FIM) as dynamic core place holder
• GFS physics package, except for Grell-Freitas convective parameterization (GF has capability of wet scavenging, aqueous phase chemistry and aerosol interactions)
• Chemistry suites:– Simple: bulk aerosols (GOCART) with sectional dust and sea salt – 17 additional prognostic
3d variables– Not so simple: GOCART coupled with gas-phase chemistry (RACM) – 66 additional
prognostic variables– Much more complex: RACM and modal aerosols with Secondary Organic Aerosols using
Volatility Basis System (VBS) – > 100 additional prognostic 3d variable– Almost non-existent: ice friendly, water friendly aerosols, total pm2.5 – 3 additional
prognostic 3d variables (in the works)
Can we even predict aerosols with some confidence: Evaluation of chemical composition with ATom
The Atmospheric Tomography Mission (ATom) willstudy the impact of human-produced air pollution ongreenhouse gases and on chemically reactive gasesin the atmosphere. ATom deploys an extensive gasand aerosol payload on the NASA DC-8 aircraft forsystematic, global-scale sampling of theatmosphere, profiling continuously from 0.2 to 12 kmaltitude.
8/15/16 South Atlantic, Punta Arenas to Ascension Is.
8/17/16 Equatorial towards North Atlantic, Ascension Is. to Azores
Preliminary data: comparisons of Aerosol and Gas Tracers between FIM-Chem and ATom
8/15
/201
6 an
d8/
17/2
016
• The model shows good performance in reproducing the height-latitude profiles of EC and CO at the low altitude, especially capturing the biomass burning plumes.
• Discrepancies between model predictions and measurements are mainly over the altitude above 4~5km.
ECPreliminary data Preliminary data
CO
AOD evaluation over longer timeperiods: using AFWA version of GOCART Scheme
Dust Evaluation with data from AERONET
Similar evaluation near biomass burning
Is there an impact of aerosols on NWP? Only direct/semi-direct impact is
considered here!
00Z
12Z
Surface temperature differences
Precipitation differences (convective)
00Z
Domain averaged precip and surface temperatures are very slightly lower
mm/day
0C
Is there an impact of the gas-phase
chemistry on NWP?
Convective Precipitation differences
Surface T differences
mm/day
0C
Future work in global modeling, collaboration with ESRL/CSD, ESRL/PSD, EMC, ARL, and EPA
• HRRR-WRF-ARW for regional storm-scale model – working with NCEP, NCAR, other labs, switch to FV3 will be tested
• Switch to NGGPS core, FV3.• Test of aerosol awareness in GF scheme• Tuning of GF within GFS physics• Sub-seasonal/seasonal impact of wildfires and aerosols with
coupled atmos/chem/ocean model• More detailed look at 5 to 10 day height anomaly correlations and
WGNE case for South America• Feedback to global NWP also with microphysics:
– In addition to GFS physics, this will also run with Thompson aerosol aware microphysics
• Evaluate different dust and sea salt modules
Credits also go to:
Jian-Wen Bao, Sara A. Michelson, Evelyn Grell, Cécile Penland, Stefan Tulich, Phil Pegion
Ongoing Research on NWP Model Physics Parameterizations at NOAA/ESRL/PSD
1. Microphysical Consistency between Grid-Resolved and subgrid Cloud Parameterizations at Gray-Zone Resolution
2. Coherent 3-D TKE-based subgrid mixing: development of a scale-adaptive TKE-based subgrid mixing scheme in the WRF model
3. Stochastic parameterizations based on observations and high-resolution simulations
Thank you for your attention!
Questions?