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xperiments in 1-6 h Forecasting of Convective Storm Using Radar Extrapolation and Numerical Weather Prediction Acknowledgements Mei Xu - MM5 Morris Weisman – WRF James Pinto –WRF, NCWF-6, computer support Steve Weygandt - RUC Tom Saxen – NCWF-6, Extrapolation Cindy Mueller – NCWF-6, Extrapolation, management Jenny Sun – Forecast VDRAS Dan Megenhardt – computer support Rita Roberts – Scientific advise Frank Hage – Display support

Experiments in 1-6 h Forecasting of Convective Storms Using Radar Extrapolation and

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Acknowledgements Mei Xu - MM5 Morris Weisman – WRF James Pinto –WRF, NCWF-6, computer support Steve Weygandt - RUC Tom Saxen – NCWF-6, Extrapolation Cindy Mueller – NCWF-6, Extrapolation, management Jenny Sun – Forecast VDRAS Dan Megenhardt – computer support - PowerPoint PPT Presentation

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Page 1: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Experiments in 1-6 h Forecasting of Convective Storms Using Radar Extrapolation andNumerical Weather Prediction

Acknowledgements Mei Xu - MM5 Morris Weisman – WRF James Pinto –WRF, NCWF-6, computer support Steve Weygandt - RUC Tom Saxen – NCWF-6, Extrapolation Cindy Mueller – NCWF-6, Extrapolation, management Jenny Sun – Forecast VDRAS Dan Megenhardt – computer support Rita Roberts – Scientific advise Frank Hage – Display support

Page 2: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Overarching Goal

Blend

Numerical Forecasting Methods

and

Observational methods

To improve 1-6 h nowcasting

Page 3: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Predictability

Forecast Length

Extrapolation

NWP

Fo

reca

st S

kill

Blended

Be

st

Page 4: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Challenge - How to blend extrapolation and model nowcast

ExtrapolationForecast

NumericalModelForecast

Page 5: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

8 methods that produce 1-6h forecasts4 numerical and 4 observational

Forecasts evaluated with the objective of developingideas for blending numerical and observational

To meet this challenge – NCAR conducted a forecast extravaganza this summer

Page 6: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Study areaJune 2005

Page 7: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Example Initiation case

Page 8: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Extrapolation• Probabilities• Extrapolation plus smart trending (synoptic situation and time of day)

Observational Techniques Examined

Page 9: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

• Probabilities• 20 km grid• 3 h forecast cycle• ACARS, VAD, profiler, GOES precip water)

NWP Techniques Examined

• nested grid• 3h forecast cycle• observational nudging• radar data assimilation (conus mosaic of reflectivity)

• 4 km grid• 24h forecast cycle• initialized with 40km ETA

The point is-State of the art techniques were available

Page 10: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Subjective evaluation of forecast quality

Page 11: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

1 – forecast and observed almost perfect overlap.

2 – majority of observed and forecast echoes overlap or offsets <50 km.3- forecast and observed look similar but there are a number of echo offsets and several areas maybe missing or extra.

4 – the forecasts and observed are significantly different with very little overlap; but some features are suggestive of what actually occurred.

5- There is no resemblance to forecast and observed.

Forecast Quality DefinitionsWilson subjective categories

Page 12: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Forecast

Observed

Quality = 2.0 Quality = 3.0

Quality = 4.0 Quality = 5.0

Examples of Forecast Quality

Page 13: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

1.Quality of forecasts for echo Existing at forecast time.

2. Quality of NWP forecasts of initiation

3. Quality of NWP forecasts of change in area size

Page 14: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

1

2

3

4

5

0 2 4 6

Forecast Period (Hours)

Qu

alit

y

1. Echo present at forecast time

Forecast Quality

Extrapolation

NWP

Bes

t

Page 15: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Quality = 4.0

Forecast

observed

Page 16: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

0 1 2 3 4 5 6 Forecast Length, hours

.2

.4

.6

.8

1.0

Accuracy of Rainfall Nowcasts>1 mm/h

GRID MESH 20 km Jun-Oct 2002

Courtesy of Shingo Yamada JMA

Extrapolation

NWP

Cri

tica

l S

ucc

ess

Ind

ex (

CS

I)

Cross over region

Page 17: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Best NWP Results

2-hourforecast

4-hourforecast

6-hourforecast

Initiation(number cases)

17 17 17

Initiations fxcorrect (percent)

71 71 65

Forecast quality(category)

3.6 3.8 3.9

Offset median (hours) 1.0 1.0 0.0

False alarms(number)

5

2. Initiation Forecasts

Page 18: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

2, 4 and 6 hr forecasts of trend in area size

3. Area Size Trend Forecasts

g+ large growthg medium growth g- small growthnc no changed- small dissipationd medium dissipationd+ large dissipation

7 Trend Categories

forecast

observed

Error 2 categories

Page 19: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

2, 4 and 6 hr forecasts of trend in area size

3. Area Size Trend Forecasts

g+ large growthg medium growth g- small growthnc no changed- small dissipationd medium dissipationd+ large dissipation

7 Trend Categories

forecast

observed

Error 2 categories

Page 20: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

2, 4 and 6 hr forecasts of trend in area size

3. Area Size Trend Forecasts

g+ large growthg medium growth g- small growthnc no changed- small dissipationd medium dissipationd+ large dissipation

7 Trend Categoriesforecast

observed

Error 6 categories

Page 21: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

0

10

20

30

40

50

60

70

80

90

100

0 1 2 3 4 5 6

Error in Forecasting trend in Area Size (number of categories)

Acc

um

ula

ted

Per

cen

tag

e

6 h

Best NWP results

3. Area Size Trend Forecasts

Best Worse

Page 22: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Overarching Goal

Blend

Numerical Forecasting Methods

and

Observational methods

To improve 1-6 h nowcasting

Summary

Page 23: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Summary

1. Model – frequent cycling (3hr), assimilate radar reflectivity

2. Initiation – Give full weight to model

3. Existing storms – Extrapolate and trend area size based on model trend (more weight for dissipation trend)

Unfinished – examine model and extrapolation predictability stratified by precipitation organization, synoptic situation and time of day.

Page 24: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Thank You

Page 25: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

05

10

15

2025

30

35

40

g+ g g- nc d- d d+

2-hour trend

0

5

10

15

20

25

g+ g g- nc d- d d+

4-hour trend

g+ large growthg medium growthg- small growthnc no changed- small dissipationd medium dissipationd+ large dissipation

0

5

10

15

20

25

g+ g g- nc d- d d+

6-hour trend

Trend Category

Num

ber

case

s

Area Size Trends

Page 26: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Forecast

Observed

Quality = 1.5

Page 27: Experiments in 1-6 h Forecasting of Convective Storms  Using Radar Extrapolation and

Example Initiation case