Weather Forecasting - Web.nmsu.edu

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Weather Forecasting Chapter 13 Chapter 13 March 26, 2009

Transcript of Weather Forecasting - Web.nmsu.edu

Page 1: Weather Forecasting - Web.nmsu.edu

Weather Forecasting

Chapter 13Chapter 13March 26, 2009

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ForecastingForecasting

• The process of inferring weather from a blend of data, understanding, climatology, , g, gy,and solutions of the governing equations

• Requires an analysis of the current• Requires an analysis of the current conditions and then the formation of a hypothesis about how the current weather came to be

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ForecastingForecasting• Requires forming hypothesis of current• Requires forming hypothesis of current

weather• Hypothesis based on conceptual models

– Includes atmospheric processes and howIncludes atmospheric processes and how they look like in routine dataIncludes physical models based on theory– Includes physical models based on theory, experience and climatology

G l i t i i bilit i li• Goal is to maximize our ability visualize processes, form realistic conceptual models and minimize incorrect judgment

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Acquisition of Weather InformationAcquisition of Weather Information

W ld id 10 000 l d b d t ti h d d• World-wide: 10,000 land-based stations, hundreds of ships and buoys

• Data from airports hourly• Data from airports hourly• Upper level: radiosonde, aircraft, satellites, profilers

Organizations involved:• Organizations involved:• United Nations World Meteorological Organization, 175

countries• World Meteorological Centers: Melbourne, Moscow,

Washington D.C.N ti l C t f E i t l P di ti (NCEP)• National Centers for Environmental Prediction (NCEP)

• US National Weather Service (NWS)

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Weather Forecasting ToolsWeather Forecasting Tools• Advanced Weather Interactive Processing• Advanced Weather Interactive Processing

System (AWIPS)Hi h d d d li f– High speed data modeling systems for communication, storage, processing, and di ldisplay

– Doppler radar (NEXRAD, Terminal Doppler)– Satellite imagery (GOES, MODIS, AMSR-E)– Forecast chartsForecast charts– Soundings

Wi d fil– Wind profiles

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AWIPS workstation

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Automated Surface Observations

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Remote Automated Weather Stations (RAWS)

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NEXRAD radar

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Weather Forecasting MethodsWeather Forecasting Methods

• 1950s maps, charts plotted by hand• Numerical weather predictionNumerical weather prediction

– Solves equations using gridded dataFi l h t ll d l i– Final chart called analysis

– 24 hr forecast for the N. Hemisphere requires millions of calculations

– Resolution– Guidance and rules of thumb

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Process to Incorporate ModelsProcess to Incorporate Models

From a talk by Stephen Lord, Director, NCEP Environmental Modeling Center

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Numerical Weather Prediction (NWP)Numerical Weather Prediction (NWP)

• Basic physical laws converted into a series of mathematical equationsq– Physical laws of motion (e.g. Newtons 2nd law)

Conservation of energy (e g 1st law thermo)– Conservation of energy (e.g. 1st law thermo)• Basic prediction

– If we know initial condition of the atmosphere, we can solve the equations to obtain new qvalues of variables at a later time

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Basic NWPBasic NWP

• A model in its simplest form

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Weather Research & Forecasting (WRF)Weather Research & Forecasting (WRF)• The current state of the art forecastThe current state of the art forecast

modeling system12 k id i• 12 km grid spacing

• Terrain following vertical coordinateg• Ingests observational data

I l d h i l d l f• Includes physical models for– Land surface, snow cover and soil effects– Cloud physics (cumulus)– Precipitation– Radiation, etc.

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Global Forecasting System (GFS)Global Forecasting System (GFS)• A commonly used global forecastingA commonly used global forecasting

model0 5° id i ( 60 k )• 0.5° grid spacing (~60 km)

• Sigma vertical coordinateg• Ingests observational data

I l d h i l d l f• Includes physical models for– Land surface, snow cover and soil effects– Cloud physics– Radiation– Oceans, etc.

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Grid ResolutionGrid Resolution

• Various scales of physical processes

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24km

Eff t f

resolution

Effects of Terrain inTerrain in Models

12km12kmResolutionIn WRF-NMM

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Effects of Ice/Snow ResolutionEffects of Ice/Snow Resolution

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NCEP SupercomputingNCEP SupercomputingIBM P 6 575• IBM Power6 p575– 69.7 Teraflops Linpack

#36 T 500 N 2008• #36 Top 500 Nov 2008

– 156 Power6 32-way NodesNodes

– 4,992 processors @

4 7GHz4.7GHz– 19,712 gigabytes

memorymemory – 170 terabytes of disk

spacep– 100 terabyte tape

archive Slide adapted from a talk by Ben Kyger, Director, NCEP Central Operations

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NCEP Supercomputing Performance

80000

69735

60000

70000

40000

50000

(Lin

pack

)

30000

40000

Gig

aflo

ps

13990 1547010000

20000

G

350 1179 1179 1849 18494379 4379

0

10000

1999 2000 2001 2002 2003 2004 2005 2006 2007 20081999 2000 2001 2002 2003 2004 2005 2006 2007 2008

YearsSlide from Ben Kyger, Director, NCEP Central Operations

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Forecasting Rules of ThumbForecasting Rules of Thumb

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Weather Forecasting MethodsWeather Forecasting MethodsThi k Ch t• Thickness Charts– Difference in height between two constant pressure

surfaces (1000mb-500mb)surfaces (1000mb 500mb)– Higher thickness equals warmer air

• Why Forecasts Go Awryy y– Assumptions– Models not global

R i ith f b ti– Regions with few observations– Cannot model small-scale features– All factors cannot be modeledAll factors cannot be modeled

• Ensemble Forecasts:– Spaghetti model, robustp g ,

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Weather Forecasting MethodsWeather Forecasting Methods

• Other Forecasting Techniques• Persistence• Trend• Analogue• Analogue• Statistical• Weather type• Climatologicalg

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Probability of White ChristmasProbability of White Christmas

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Weather Forecasting MethodsWeather Forecasting MethodsT f F t• Types of Forecasts• Nowcast < 6 hrs• Short range 12 to 65 hrs• Medium range 3 to 8.5 daysg y• Long Range > 8.5 days

• Accuracy and Skill• Accuracy and Skill• 12 - 24 hrs most accurate

2 5 d d• 2 - 5 days good• Skill = more accurate than a forecast

j t tili i i t f li t ljust utilizing persistence of climatology

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Weather Forecasting Using Surface Charts

S ti th t f S tSome tips on the movement of Systems1. Mid-lat cyclones move in same direction and

d i 6 hspeed as previous 6 hrs2. Lows move in direction parallel the isobars in

th i h d f th ld f tthe warm air ahead of the cold front3. Lows move toward region of greatest pressure

ddrop

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Frontal TrajectoriesFrontal Trajectories

Movement in 6 hours

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Isallobars-Lines of Equal 3hr Pressure Change

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Some Rules of Thumb• 500mb chart

5640m heights over NoCA rain over central CA– 5640m heights over NoCA – rain over central CA– Eastern US, < 5400m – snow rather than rain– Blocking or Omega high – persists in same

location, keeps trofs in their positions– The tighter the height contours, the higher the

wind speed, the stronger the temperature p , g pdifference below 500 mb

• 700mb chart• 700mb chart– At 700mb level, RH>70%=clouds,

RH 90% i it tiRH>90%=precipitation