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3D-Var Revisit 3D-Var Revisit ed ed and and Quality Control of Surface Quality Control of Surface Temperature Data Temperature Data Xiaolei Zou Xiaolei Zou Department of Meteorology Department of Meteorology Florida State University Florida State University [email protected] [email protected] June 11, 2009 June 11, 2009

3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University [email protected] June 11,

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Page 1: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

3D-Var Revisit3D-Var Revisitededandand

Quality Control of Surface Temperature DataQuality Control of Surface Temperature Data

Xiaolei ZouXiaolei Zou

Department of MeteorologyDepartment of Meteorology

Florida State UniversityFlorida State University

[email protected]@met.fsu.edu

June 11, 2009June 11, 2009

Page 2: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

OutlineOutline

• 3D-Var Formulation3D-Var Formulation• Statistical FormulationStatistical Formulation• AnalysisAnalysis• Practical ApplicationsPractical Applications

Part I:

• MotivationMotivation• EOF analysisEOF analysis

• QC for QC for TTss

Part II:

Page 3: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Part I Part I

3D-Var Revisited3D-Var Revisited

Page 4: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

FactsFacts

1) All background fields, observation operators and observations have errors.

2) There is no truth. Errors in background, observation operator and observations can only be estimated approximately.

Produce the best analysis by combining all available information.

The GoalThe Goal

Page 5: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

QuestionsQuestions

1) What is the measure of the best analysis?

2) How to combine all available information?

Page 6: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Variational FormulationVariational Formulation

J(x0 ) =12(x0 −xb)T B−1(x0 −xb) +

12(H(x0 )−yobs)T (O+ F)−1(H(x0 )−yobs)

A scalar cost function is defined:

x0 ← analysis of the atmospheric state

yobs ← observations

H ← observation operator

xb ← background

B ← background error covarnace matrix O ← observation error covarnace matrix F ← forward model error covarnace matrix

where

Page 7: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Statistical FormulationStatistical Formulation

pobs(y | yobs)

pb (x0 | xb )

H(x0)€

yobs

xb

Available information

pH (y | H (x ot ))

PDF

Write the PDFs for all three sources of information as:

pobs

pb€

pH

σ(x0,y) = pobs pb pH

Joint PDF:

PDF of the a posteriori state of information

Page 8: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

The Bayes TheoremThe Bayes Theorem

The marginal PDF of the a posteriori state of information:

is the PDF of the a posteriori state of information in model space.

σ(x0) = σ (x0,y)dy∫ = pb (x0 | xb ) pobs(y | yobs)∫ pH (y | H(x0))dy

Page 9: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Application of Bayes TheoremApplication of Bayes Theoremto Data Assimilationto Data Assimilation

σ (x0 ),Data assimilation derives some features of the PDF, which is the a posteriori state of information in model space.

• The maximum likelihood estimate

~ analysis

• The covariance matrix of this estimate

~ analysis error covariance A

σ (x0a ) = max

x0

σ (x0 )

x0a

A = σ(x0∫ ) x0 −x0a( )

Tx0 −x0

a( )dx0

Page 10: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Assuming All Errors Are Gaussian,Assuming All Errors Are Gaussian,

The PDF for yobs:

pobs (y yobs ) =C1 exp −12

y−yobs( )TO−1 y−yobs( )

⎛⎝⎜

⎞⎠⎟

pb (x0 xb ) =C2 exp −12

x0 −xb( )TB−1 x0 −xb( )

⎛⎝⎜

⎞⎠⎟

pH (y H (x0 )) =C3 exp −12

y−H(x0 )( )TF−1 y−H(x0 )( )

⎛⎝⎜

⎞⎠⎟

The PDF xb:

The PDF for H(x0):

Page 11: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Bayes Estimate Under Bayes Estimate Under Gaussian AssumptionsGaussian Assumptions

pobs (y yobs ) =C1 exp −12

y−yobs( )TO−1 y−yobs( )

⎛⎝⎜

⎞⎠⎟

pb (x0 xb ) =C2 exp −12

x0 −xb( )TB−1 x0 −xb( )

⎛⎝⎜

⎞⎠⎟

pH (y H (x0 )) =C3 exp −12

y−H(x0 )( )TF−1 y−H(x0 )( )

⎛⎝⎜

⎞⎠⎟

σ (x0 ) = pb (x0 | xb ) pobs (y | yobs )∫ pH (y | H (x0 ))dy

σ (x0 ) = C exp −1

2x0 − xb( )

TB−1 x0 − xb( ) + H (x0 ) − yobs( )

TO + F( )

−1H (x0 ) − yobs( )( )

⎛⎝⎜

⎞⎠⎟

Page 12: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Maximum Likelihood EstimateMaximum Likelihood Estimate

σ (x0 ) = C exp −1

2x0 − xb( )

TB−1 x0 − xb( ) + H (x0 ) − yobs( )

TO + F( )

−1H (x0 ) − yobs( )( )

⎛⎝⎜

⎞⎠⎟

= C exp −1

2J(x0 )

⎛⎝⎜

⎞⎠⎟

Maximizing

σ(x0)

J(x0)Minimizing

The PDF of the a posteriori state of information in model space:

Statistical Estimate Variational Calculus

Page 13: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Gaussian and Non-Gaussian signalsGaussian and Non-Gaussian signals

The signals are sampled at 10000 points. PDFs are constructed at an interval of (ymax −ymin) /100.

y =rand(x)

y =4sinπx1000

⎛⎝⎜

⎞⎠⎟

Page 14: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Gaussian and Non-Gaussian signalsGaussian and Non-Gaussian signals

y =4sinπx1000

⎛⎝⎜

⎞⎠⎟+ rand(x)

y =0.4sinπx1000

⎛⎝⎜

⎞⎠⎟+ rand(x)

Page 15: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

3D-Var & 3D-Var Analysis

The 3D-Var data assimilation solves a general inverse problem using the maximum likelihood estimate under the assumptions that all errors are Gaussian.

The 3D-Var analysis is the maximum likelihood estimate if all errors are Gaussian.

Page 16: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Zero Gradient: A necessary ConditionZero Gradient: A necessary Condition

J(x0 ) =12(x0 −xb)T B−1(x0 −xb) +

12(H(x0 )−yobs)T (O+ F)−1(H(x0 )−yobs)

∇J(x0 ) = B−1(x0 − xb ) + HT (O + F)−1(H (x0 ) − yobs )

B−1(x0 −xb) +HT (O+ F)−1(H(x0 )−yobs) =0

J(x0 + Δx0 )−J (x0 ) = ∇Jx0

( )TΔx0

∇J(x0 ) = 0

a linear operatora nonlinear operator

H {

Page 17: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Analytical Expression of Solution Analytical Expression of Solution with a Linear Modelwith a Linear Model

B−1(x0* −xb) +HT (O+ F)−1(H(x0

* )−yobs) =0

H is linear: H (x0 ) =Hx0

x0* −xb +BHT (O+ F)−1(Hx0

* −yobs) =0

x0* =xb + HTR−1H +B−1( )

−1HT O+ F( )−1 yobs −Hxb( )

Page 18: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Analytical Expression of Solution Analytical Expression of Solution with an Approximate Linear Modelwith an Approximate Linear Model

B−1(x0* −xb) +HT (O+ F)−1(H(x0

* )−yobs) =0

B−1 x0* −xb( ) +HT (O+ F)−1 H x0

* −x( )b− H(xb)−yobs( )( ) =0

H (x0* ) ≈H(xb) +H x0

* −xb( )

x0* =xb + HT O+ F( )−1 H +B−1

( )−1

HT O+ F( )−1 yobs −H xb( )( )

=xb +BHT HBHT +O+ F( )−1

yobs −H xb( )( )

Page 19: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Analysis ErrorAnalysis Error

When linear approximation is valid,When linear approximation is valid, the a posteriori PDF is approximately Gaussian, with the analysis as its mean and the following covariance matrix:

A = HTR−1H +B−1( )−1

=B−BHT HBHT +R( )−1

HB

Page 20: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

3D-Var Analysis

A−1 =HT O+ F( )−1 H +B−1

A-1 is referred to as an information content matrix. When the analysis error is small, the value of ||A-1|| is large, the information content is large.

A = HTR−1H +B−1( )−1

A−1 ≥ B−1 , A−1 ≥ O+ F( )−1

The information content of the 3D-Var analysis is greater than the information content in either the background field or the observations that were assimilated.

Page 21: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

3D-Var Practice

• Develop System Decision on variables and resolutions Estimate of background error covariance• Assimilate Data Decision on observations to be assimilated Understanding of the observations Estimate of observation errors Comparison between observations and background Development of the observation operator Estimate of model errors• Obtain Solution Minimization (preconditioning, scaling) Advanced computing (parallelization, data intensive computing platforms)

Page 22: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

What does 3D-Var data assimilation involve?

J(x0 ) =12(x0 −xb)T B−1(x0 −xb) +

12(H(x0 )−yobs)T (O+ F)−1(H(x0 )−yobs)

F

xb yobsx0

H

B O

Choice of analysis variable

What data to assimilation?

Which model to use?

What background to start with?

How to estimate elements in B?

Where to find their values?

How to quantify it?

Model Space Observed Space

x0

3D-Var analysis

+

Page 23: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

What need to be done before and after conducting 3D-Var

experiments?

3D-Var3D-VarInput Data Output Analysis

Quality Control Diagnosis of Analysis

Page 24: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

What need to be done before and after conducting 3D-Var experiments?

• Quality Control Knowing the data Knowing the major difference between data and background field Remove errorneous data Eliminate data that render errors non-Gaussian • Diagnosis of 3D-Var analyses Check the convergence Examine the analysis increments Estimate analysis errors Assess forecast impact Provide physical and dynamical explanations to the numerical results one obtains

Page 25: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

When Working with Real-Data,When Working with Real-Data,

The key things areThe key things are

• Knowing the dataKnowing the data before inputting them before inputting them

into a 3D-Var system by a careful QC!into a 3D-Var system by a careful QC!• Kowing the systemKowing the system after a 3D-Var after a 3D-Var

experiment by a careful analysis of experiment by a careful analysis of

the 3D-Var results!the 3D-Var results!

Page 26: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Examing 3D-Var ResultsExaming 3D-Var Results

Page 27: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Analysis - obsAnalysis - obsone-week average one-week average

resultsresults

q p

u v

Page 28: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Differences between Differences between model and obs.model and obs.beforebefore and and afterafter a a 3D-Var experiment3D-Var experiment

pb - pobs and pa-pobs

Page 29: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

29

σ ob2

σ a2

σ o2

σ b2

σ oa2

Inferred from

calculated

σ b2 = σ ob

2 − σ o2 σ a

2 = σ oa2 − σ o

2and

Page 30: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

Part IIPart II

Quality Control of Surface Quality Control of Surface Temperature DataTemperature Data

Page 31: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

31

Motivations

• Surface data are abundant • Very little surface data are assimilated in operational systems• Surface data are important to thunderstorm prediction

Challenges

• Existing data assimilation systems have short or no memory of surface data• Diurnal cycle dominants the variability of surface variability and is not described with sufficient accuracy in large-scale analysis which is used as background in mesoscale forecast• Background errors are non-Gaussian

Page 32: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

32

A Total of 3197 Surface Stations

The number of missing data at each station in January 2008 is indicated by color bar.

Page 33: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

33

Improving Surface Data Assimilation

Key steps:

1) Inclusion of more surface data

2) Improved QC

3) Vertical interpolation based on the atmospheric

structures within the boundary layer

Surface layer

Mixed layer

3) Incorporation of dynamic constraint

Page 34: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

34

EOF Modes for Ts Constructed from Station Observations

First Second Third

Fourth Fifth Sixth

Page 35: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

35

EOF Modes for Ts Constructed from Station Observations (cont.)

Seventh Eighth

Ninth Tenth

Page 36: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

36

Explained Variances

Surface Data (blue)NCEP analysis (red)

Page 37: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

37

10

14

18

-10

0

10

-10

-5

0

5

-4

0

4

-4

0

4

-4

0

4

Fi rst

Second

Thi rd

Fourth

Fi f th

Si xth

1 3 5 7 9 11 13 15 17 19 21 23 25 27 29Ti me (uni t: day)

Principal Components (PCs)

Page 38: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

38

Principal Components (PCs)

-3

0

3

-3

0

3

-2

0

2

-2

0

2

Seventh

Ei ghth

Ni nth

Tenth

1 3 5 7 9 11 13 15 17 19 21 23 25 27 29Ti me (uni t: day)

Page 39: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

39

Dominant Oscillations in January 2008P

erio

d (

un

it:

day

)

Obs.

NCEP

EOF mode EOF mode EOF mode

Per

iod

(u

nit

: h

our)

Per

iod

(u

nit

: h

our)

Longer-periodoscillation

Diurnal oscillation Shorter-periodoscillation

Page 40: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

40

Diurnal Oscillation

-10

0

10

-4

0

4

-4

0

4

-6

0

6

-6

0

6

-6

0

6

-6

0

6

Tenth

Ni nth

Si xth

Fi f th

Fourth

Thi rd

1 2 3 4 5 6 7Ti me(uni t: day)

Second

Page 41: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

41

Longer-Period Oscillations

-12

0

12

-12

0

12

-12

0

12

-12

0

12

-12

0

12

Si xth

Seventh

Ei ghth

Ni nth

Tenth

1 3 5 7 9 11 13 15 17 19 21 23 25 27 29

Ti me (uni t: day)

Page 42: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

42

Diurnal Oscillationand

Longer-Period Oscillations

Phase difference

Amplitude difference

Page 43: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

43

PC Differences between Surface Data and NCEP Analysis

Second Third

Fourth Fifth

Sixth

Time (unit: day)

Time (unit: day)

Blue line: First WeekRed line: Last Week

Page 44: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

44

Frequency Distributions of Diurnal Cycle Modes

First Week

Third

FourthFourth

Fifth

Fifth

SixthFre

qu

ency Second

Tobs-TNCEP (unit: K)F

req

uen

cy

Fre

qu

ency

Fre

qu

ency

Fre

qu

ency

Last Week First Week Last Week

Fourth

Sixth

Tobs-TNCEP (unit: K)

January 2008

Second

Fourth

Sixth

Third

Fifth

Page 45: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

45

Frequency Distributions (modes 2-6)

First Week Last Week

Entire Month

Fre

qu

ency

Fre

qu

ency

Tobs-TNCEP (unit: K)

Tobs-TNCEP (unit: K)Tobs-TNCEP (unit: K)

Fre

qu

ency

Sum of Modes 2-6

Page 46: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

46

Statistical Measures

Mean Variance

Kurtosis Skewness

Page 47: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

47

QC Procedure

Step 1:

1) Historical extremum checkΔT > The average of NCEP analysis of each station pluses (minuses) 15-times its variance

• Temporal consistency check ΔT > 50℃ in 24-hours interval1) Bi-weight check

Z-score > 3• Spatial consistency checkT > The average of linear fit to highly correlated

stations pluses (minuses) 4-times its variance

Page 48: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

48

QC Procedure (cont.)

Step 2:

The Z-score of the difference between station observation and background field must less than 4

Step 3:

The Z-score of the difference between station observation and background field excluding the contribution from diurnal cycle must less than 2

Page 49: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

49

( a )( a )

Step 2

( b )( b )

Step 3

Background

Obs

.

Obs

.

Background

Page 50: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

50

Frequency Distribution before and after QC

First Week Last Week

Entire Month

Tobs-TNCEP (unit: K)

Tobs-TNCEP (unit: K)Tobs-TNCEP (unit: K)

Fre

qu

ency

Fre

qu

ency

Fre

qu

ency

Page 51: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

51

Frequency Distribution with and without Contribution from Modes 2-6

First Week Last Week

Entire Month

Tobs-TNCEP (unit: K)Tobs-TNCEP (unit: K)

Tobs-TNCEP (unit: K)

Fre

qu

ency

Fre

qu

ency

Fre

qu

ency

Page 52: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

52

Correlations and RMS Differences of the PCs before and after QC

Page 53: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

53

Data Number Removed at Each Station

Step One Step Two

Step Three All Three QC Steps

Page 54: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

54

Percentage of Data Removed by QC

Step 1 Steps 1-2 Steps1- 3

Page 55: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

55

Percentage of Data Removed by QC

Time (day)

Page 56: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

56

Variation of the Statistical Measureswith QC Steps

Mea

n (

un

it:

K)

Std

. (u

nit

: K

)

Sk

ewn

ess

Ku

rtos

is

Step 1 Step 2 Step 3 Step 1 Step 2 Step 3Ori. No DC Ori. No DC

Page 57: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

57

Time Evolution of Standard Deviationbefore and after QC

Std

. (K

)

Time (unit: day)

Page 58: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

58

Time-Zone Dependence of Diurnal Oscillation

Time (unit: hour)

Tem

per

atu

reT

emp

erat

ure

Weekly mean Ts at seven surface stations selected within different time zones: Zone 1: 55.03E, 36.42N Zone 2: 65.68E, 40.55N Zone 3: 82.78E, 41.23N Zone 4: 98.9E, 40.0N Zone 5: 110.05, 41.03 Zone 6: 128.15E, 40.89N Zone 7: 141.17E, 39.7N

Surface Obs.

NCEP Analysis

Page 59: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

59

Average Time at Which Ts Reached the Maximum in the First Week of January 2008

Tim

e (U

TC

) T

ime

(UT

C)

Page 60: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

60

Global Diurnal Cycle

NCEP ECMWF (ERA-Interim)

Surface ObservationsTime (UTC)

Time (UTC)

Tem

pera

ture

(K

)

Tem

pera

ture

(K

)

Time (UTC)

January 1-7, 2008

Page 61: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

SummarySummary

• Diurnal cycle dominates the temporal variability of

surface data

• Large-scale analysis contains a significant phase error

(~10-85 degrees) of the diurnal cycle

• A three-step QC procedure is developed to identify

outliers in surface-station temperature data which have

a non-Gaussian frequency distribution

Page 62: 3D-Var Revisited and Quality Control of Surface Temperature Data Xiaolei Zou Department of Meteorology Florida State University zou@met.fsu.edu June 11,

More details can be found inMore details can be found in

Qin, Z.-K., X. Zou, G. Li and X.-L. Ma, 2009: Quality control of surface temperature data with non-Gaussian background errors. Quart. J. Roy. Meteor. Soc., Submitted.

Zou, X. and Qin, Z.-K., 2009: Diurnal cycle in global analysis. J. Geo. Letter., to be submitted.