Major Improvements in Mesoscale Prediction

76
Problems With Model Physics in Mesoscale Models Clifford F. Mass, University of Washington, Seattle, WA

description

Problems With Model Physics in Mesoscale Models Clifford F. Mass, University of Washington, Seattle, WA. Major Improvements in Mesoscale Prediction. Major improvements in the skill of mesoscale models as resolution has increased to 3-15 km. - PowerPoint PPT Presentation

Transcript of Major Improvements in Mesoscale Prediction

Page 1: Major Improvements in Mesoscale Prediction

Problems With Model Physics in Mesoscale Models

Clifford F. Mass, University of Washington, Seattle, WA

Page 2: Major Improvements in Mesoscale Prediction

Major Improvements in Mesoscale Prediction

• Major improvements in the skill of mesoscale models as resolution has increased to 3-15 km.

• Since mesoscale predictability is highly dependent on synoptic predictability, advances in synoptic observations and data assimilation have produced substantial forecast skill benefits.

• Although model physics has improved there are still major weaknesses that need to be overcome.

Page 3: Major Improvements in Mesoscale Prediction

Important to Know the Strengths and Weaknesses of Our Tools

Page 4: Major Improvements in Mesoscale Prediction

Very Complex Because Model Physics Interaction With Each Other—AND Model Dynamics

Page 5: Major Improvements in Mesoscale Prediction

Some Physics Issues with the WRF Model that Are Shared With

Virtually All Other Mesoscale Models

Page 6: Major Improvements in Mesoscale Prediction

Overmixing in Mesoscale Models

• Most mesoscale models have problems in maintaining shallow, stable cool layers near the surface.

• Excessive mixing in the vertical results in excessive temperatures at the surface and excessive winds under stable conditions.

• Such periods are traditionally ones in which weather forecasters can greatly improve over the models or models/statistical post-processing

Page 7: Major Improvements in Mesoscale Prediction

Time series of bias in MAX-T over the U.S., 1 August 2003 – 1 August 2004. Mean temperature over all stations is shown with a dotted line. 3-day smoothing is performed on the data.

Cold spell

Page 8: Major Improvements in Mesoscale Prediction

Shallow Fog…Nov 19, 2005

• Held in at low levels for days.

• Associated with a shallow cold, moist layer with an inversion above.

• MM5 and WRF predicted the inversion…generally without the shallow mixed layer of cold air a few hundred meters deep

• MM5 or WRF could not maintain the moisture at low levels

Page 9: Major Improvements in Mesoscale Prediction
Page 10: Major Improvements in Mesoscale Prediction

ObservedConditions

Page 11: Major Improvements in Mesoscale Prediction

High-ResolutionModel Output

Page 12: Major Improvements in Mesoscale Prediction
Page 13: Major Improvements in Mesoscale Prediction
Page 14: Major Improvements in Mesoscale Prediction
Page 15: Major Improvements in Mesoscale Prediction

So What is the Problem?

• We are using the Yonsei University (YSU) scheme in most work. We have tried all available WRF PBL schemes…no obvious solution in any of them. Same behavior obvious in other models and PBL parameterizations.

• Doesn’t improve going from 36 to 12 km resolution, 1.3 km slightly better.

• There appears to be common flaws in most boundary layer schemes especially under stable conditions.

Page 16: Major Improvements in Mesoscale Prediction

Problems with WRF surface winds

• WRF generally has a substantial overprediction bias for all but the lightest winds.

• Not enough light winds.

• Winds are generally too geostrophic over land.

• Not enough contrast between winds over land and water.

• This problem is evident virtually everywhere and appears to occur in all PBL schemes available with WRF.

• Worst in stable conditions.

Page 17: Major Improvements in Mesoscale Prediction

10-m wind bias, 00 UTC, 24-h forecast, Jan 1-Feb 8, 2010

Page 18: Major Improvements in Mesoscale Prediction

10-m wind bias, 12 UTC, 12-h forecast, Jan 1-Feb 8, 2010

Page 19: Major Improvements in Mesoscale Prediction

The Problem

Page 20: Major Improvements in Mesoscale Prediction
Page 21: Major Improvements in Mesoscale Prediction

Insufficient Contrast Between Land and Water

Page 22: Major Improvements in Mesoscale Prediction

This Problem is Evident in Many Locations

Page 23: Major Improvements in Mesoscale Prediction

Northeast U.S. from SUNY Stony Brook (Courtesy of Brian Colle):

12-36 hr wind bias for NE US: additive bias (F-O)

Page 24: Major Improvements in Mesoscale Prediction

SUNY Stony Brook: Wind Bias over Extended Period for

One Ensemble Member

Page 25: Major Improvements in Mesoscale Prediction

U.S. Army WRF over Utah

Page 26: Major Improvements in Mesoscale Prediction

Cheng and Steenburgh 2005(circles are WRF)

Page 27: Major Improvements in Mesoscale Prediction

UW WRF 36-12-4km: Positive Bias

Change in System

July 2006 Now

Page 28: Major Improvements in Mesoscale Prediction

Wind Direction Bias: Too Geostrophic

Page 29: Major Improvements in Mesoscale Prediction

MAE is something we like to forget…

Page 30: Major Improvements in Mesoscale Prediction

Surface Wind Problems

• Clearly, there are flaws in current planetary boundary layer schemes.

• But there also be another problem?—the inability to consider sub-grid scale variability in terrain and land use.

Page 31: Major Improvements in Mesoscale Prediction

The 12-km grid versus terrain

Page 32: Major Improvements in Mesoscale Prediction

A new drag surface drag parameterization

• Determine the subgrid terrain variance and make surface drag or roughness used in model dependent on it.

• Consulting with Jimy Dudhia of NCAR came up with an approach—enhancing u* and only in the boundary layer scheme (YSU).

• For our 12-km and 36-km runs used the variance of 1-km grid spacing terrain.

Page 33: Major Improvements in Mesoscale Prediction
Page 34: Major Improvements in Mesoscale Prediction

38 Different Experiments: Multi-month evaluation winter and

summer

Page 35: Major Improvements in Mesoscale Prediction

Some Results for Experiment “71”

• Ran the modeling system over a five-week test period (Jan 1- Feb 8, 2010)

Page 36: Major Improvements in Mesoscale Prediction

10-m wind speed bias: Winter

Original

Page 37: Major Improvements in Mesoscale Prediction

With Parameterization

Page 38: Major Improvements in Mesoscale Prediction

MAE 10m wind speed

Page 39: Major Improvements in Mesoscale Prediction

With Parameterization

Page 40: Major Improvements in Mesoscale Prediction

Case Study: Original

Page 41: Major Improvements in Mesoscale Prediction

New Parameterization

Page 42: Major Improvements in Mesoscale Prediction

Old

New

Page 43: Major Improvements in Mesoscale Prediction
Page 44: Major Improvements in Mesoscale Prediction

During the 1990’s it became clear that there were problems with the simulated precipitation and microphysical distributions

• Apparent in the MM5 forecasts at 12 and 4-km

• Also obvious in research simulations of major storm events.

Page 45: Major Improvements in Mesoscale Prediction

Early Work-1995-2000 (mainly MM5, but results are more general)

• Relatively simple microphysics: water, ice/snow, no supercooled water, no graupel

• Tendency for overprediction on the windward slopes of mountain barriers. Only for heaviest observed amounts was there no overprediction.

• Tendency for underprediction to the lee of mountains

Page 46: Major Improvements in Mesoscale Prediction

MM5 PrecipBias for

24-h

90% and 160% lines

are contoured

with dashed and solid

lines

For entireWinterseason

Page 47: Major Improvements in Mesoscale Prediction

Testing more sophisticated schemes and higher resolution ~2000

• Testing of ultra-high resolution (~1 km) and better microphysics schemes (e.g., with supercooled water and graupel), showed some improvements but fundamental problems remained: e.g., lee dry bias, overprediction for light to moderate events, but not the heaviest.

• Example: simulations of the 5-9 February 1996 flood of Colle and Mass 2000.

Page 48: Major Improvements in Mesoscale Prediction

5-9 February 1996 Flooding Event

Page 49: Major Improvements in Mesoscale Prediction

MM5: Little Windward Bias, Too Dry in Lee

Bias: 100%-no bias

Windward slope

Lee

Page 50: Major Improvements in Mesoscale Prediction

Flying Blind

Page 51: Major Improvements in Mesoscale Prediction

IMPROVE• Clearly, progress in improving the simulation of

precipitation and clouds demanded better observations:– High quality insitu observations aloft of cloud and precipitation

species.

– Comprehensive radar coverage

– High quality basic state information (e.g., wind, humidity, temperature)

• The IMPROVE field experiment (2001) was designed and to a significant degree achieved this.

Page 52: Major Improvements in Mesoscale Prediction

Olympic Mts.

British Columbia

Washington

Ca

scad

e M

ts.

Cas

cade

Mts

.

Oregon

California

OrographicStudy Area

Washington

Oregon

Co

asta

l Mts

.

Co

asta

l Mts

.

S-Pol Radar Range

Santiam Pass

OSA ridge crest

Cas

cade

Mts

.

< 100 m

100-500 m

500-1000 m

1000-1500 m

1500-2000 m

2000-3000 m

> 3000 m

Terrain Heights

Portland

Salem

Newport

Medford

UW Convair-580

Airborne Doppler Radar

S-Pol Radar

BINET Antenna

NEXRAD Radar

Wind Profiler

Rawinsonde

Legend

Ground Observer

0 100 km

WSRP Dropsondes

Columbia R.

Rain Gauge Sites in OSA Vicinity

Santiam Pass

SNOTEL sites CO-OP rain gauge sites

50 km

Orographic Study Area

S-Pol Radar Range

Olympic Mts.

S-Pol Radar Range

Westport

90 nm(168 km)

Offshore FrontalStudy Area

Paine Field

Univ. of Washington

Area of Multi-Doppler

Coverage

Special Raingauges

PNNL RemoteSensing Site

TwoIMPROVE

observationalcampaigns:

I. Offshore Frontal Study (Wash. Coast, Jan-Feb 2001)

II. Orographic Study (Oregon Cascades, Nov-Dec 2001)

Page 53: Major Improvements in Mesoscale Prediction

The NOAA P3 Research AircraftDual Doppler Tail Radar Surveillance RadarCloud Physics and Standard Met. Sensors

Convair 580Cloud Physics and Standard Met. Sensors

Page 54: Major Improvements in Mesoscale Prediction
Page 55: Major Improvements in Mesoscale Prediction

PARSLSite

Terr

ain

ht.

(m

)

Distance (km)0 50 100

0

1000

2000

3000

4000

5000

6000

7000

8000

9000

S-POL Radar

SantiamJunction

SantiamPass

CampSherman

-50-100

20-40 inches/year40-60 inches/year60-80 inches/year80-100 inches/year> 100 inches/year

< 20inches/year60 km

100 km

Slope matches that of an ice crystal falling at 0.5 m/s in a mean cross-barrier

flow of 10 m/s, which takes ~3 h.

Total flight time: 3.4 h

Convair-580 Flight Strategy

Page 56: Major Improvements in Mesoscale Prediction

The S-Pol Doppler Radar

Page 57: Major Improvements in Mesoscale Prediction
Page 58: Major Improvements in Mesoscale Prediction

S-Band Vertically Pointing Radar

Pacific Northwest National Lab (PNNL)

Atmospheric Remote Sensing Laboratory (PARSL)

•94 GHz Cloud Radar

•35 GHz Scanning Cloud Radar

•Micropulse LIDAR

•Microwave Radiometer

•Broadband radiometers 

•Multi-Filter Rotating Shadowband Radiometer (MFRSR)

•Infrared Thermometer (IRT)

•Ceilometer

•Surface MET

•Total Sky Imager

Page 59: Major Improvements in Mesoscale Prediction

We now had the microphysical data aloft to determine what

was happening

Model

Observations

Page 60: Major Improvements in Mesoscale Prediction

The Diagnosis•Too much snow being produced aloft•Too much snow blowing over the mountains, providing overprediction in the lee•Too much cloud liquid water on the lower windward slopes•Too little cloud liquid water near crest level.•Problems with the snow size distribution (too few small particles)•Several others!

Page 61: Major Improvements in Mesoscale Prediction

Problems and deficiencies of boundary layer and diffusion schemes can

significantly affect precipitation and microphysics

• Boundary layer parameterizations are generally considered one of the major weaknesses of mesoscale models

• Deficiencies in the PBL structures were noted during IMPROVE.

• Errors in boundary layer structure can substantially alter mountain waves and resultant precipitation.

Page 62: Major Improvements in Mesoscale Prediction

Impacts of Boundary Layer Parameterization on Microphysics

Snow-diff CLW-diff Graupel-diff

Microphysics Differences ETA - MRF

Page 63: Major Improvements in Mesoscale Prediction

Lots of activity in improving microphysical parameterizations

• New Thompson Scheme for WRF that includes a number of significant improvements.

• Higher moment schemes are being tested. (e.g., new Morrison two-moment scheme)

• Microphysical schemes are being modified to consider the different density and fall speed characteristics of varying ice habits and degrees of riming.

Page 64: Major Improvements in Mesoscale Prediction

Convective Parameterization

• The need for convective parameterization declines at models gain enough resolution to explicitly model convection.

• Appears that one starts getting useful explicit convective predictions at 4-km grid spacing.

• In the future, they is one problem that will go away as we move to sub-4km grid spacing.

Page 65: Major Improvements in Mesoscale Prediction

Real-time 12 h WRF Reflectivity Forecast

Composite NEXRAD Radar

4 km BAMEX forecast

Valid 6/10/03 12Z

10 km BAMEX forecast

22 km CONUS forecast

Page 66: Major Improvements in Mesoscale Prediction

Example: Radar reflectivity,24 h fcst vs obs, valid 0000 UTC May 13, 2005

WRF 4km

WRF 2km

NMM 4.5km

observed

http:// www.spc.noaa.gov/exper/Spring_2005

Page 67: Major Improvements in Mesoscale Prediction

Hurricane Rainbands• Ultra high resolution (< 2 km grid spacing)

result in better structures and intensity predictions.

15-km grid spacing 1.67 km grid spacing

Page 68: Major Improvements in Mesoscale Prediction

More Physics Issues• Serious deficiencies in many land surface modeling

schemes, particularly in the areas of snow physics and soil moisture

• Need to characterize uncertainties in physics schemes and the development of stochastic physics.

• Require physics schemes applicable to a wide range of resolutions for the next generation of unified models.

Page 69: Major Improvements in Mesoscale Prediction

Resolution Was Easy

• We have had a lot of fun increasing resolution over the past few decades.

• Now we have to put much more emphasis on doing the research and operational testing required to improve model physics and describing the uncertainties in our schemes.

• This work is made more difficult by the interactions among the physics parameterizations.

Page 70: Major Improvements in Mesoscale Prediction

The End

Page 71: Major Improvements in Mesoscale Prediction

Garvert, Mass, and Smull, 2007

Improve-2Dec13-14, 2001

Changes in PBL schemes

substantially change PBL

structures, with

none bein correct.

Page 72: Major Improvements in Mesoscale Prediction

An Issue• Our method appears to hurt slightly during

strong wind speeds and near maximum temperatures in summer.

Page 73: Major Improvements in Mesoscale Prediction

Summer-0000 TC-Original

Page 74: Major Improvements in Mesoscale Prediction

With Sub-grid drag

Page 75: Major Improvements in Mesoscale Prediction

Summer

Page 76: Major Improvements in Mesoscale Prediction

Improvement?

• Next step—could have the parameterizaton fade out for higher winds speeds and lower stability, possibility by depending on Richardson number.

• Actually, this makes some sense…sometimes the atmosphere is well-mixed, and at these times variations in sub-grid roughness would be less important.