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Predictability of Monthly Predictability of Monthly Mean Temperature and Mean Temperature and Precipitation: Role of Precipitation: Role of Initial Conditions Initial Conditions Mingyue Chen, Wanqiu Wang, and Arun Kumar Climate Prediction Center/NCEP/NOAA

Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

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Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions. Mingyue Chen, Wanqiu Wang, and Arun Kumar Climate Prediction Center/NCEP/NOAA. Issues to be discussed. What is the predictability (prediction skill) because of initialized observed conditions? - PowerPoint PPT Presentation

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Page 1: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

Predictability of Monthly Mean Predictability of Monthly Mean Temperature and Precipitation: Role of Temperature and Precipitation: Role of

Initial ConditionsInitial Conditions

Mingyue Chen, Wanqiu Wang, and Arun KumarClimate Prediction Center/NCEP/NOAA

Page 2: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

Issues to be discussedIssues to be discussed– What is the predictability (prediction skill) because of

initialized observed conditions?

– What is the lead-time dependence?

– How does the predictability due to atmospheric/land initial conditions compare with that from SSTs?

Analysis methodAnalysis method– Assess lead-time dependence of prediction skill of

monthly means in CFS hindcasts

– Compare CFS with the simulation skill from the AMIP integrations to assess predictability due to SSTs, and to assess on what time scale influence of initial conditions decays

Page 3: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

Models and dataModels and data• Retrospective forecast

• CFS (5 member ensemble)

• AMIP simulations• GFS (5 member ensemble)

• Variables to be analyzed• T2m• Precipitation

• The analysis is based on forecast and simulations for 1981-2006

Page 4: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

Assessment of CFS monthly mean forecast skills with different lead times

Page 5: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

Definition of forecast lead timeDefinition of forecast lead time

Target month1st day11th day 21st day1st day

0-day-lead

10-day-lead

20-day-lead

30-day-lead

Page 6: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

• High CFS skill at 0-day lead time

• Dramatic skill decrease with lead time from 0-day lead to 10-day lead and more slow decrease afterwards

• Large spatial variation

CFS T2m monthly CFS T2m monthly correlation skillcorrelation skill

Page 7: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

CFS T2m monthly correlation skill (global mean)CFS T2m monthly correlation skill (global mean)

• High CFS skill at 0-day lead time• Dramatic skill decrease with lead time from 0-day lead to 10-day lead and

more slow decrease afterwards

Page 8: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

CFS T2m monthly forecast skills with different lead timeCFS T2m monthly forecast skills with different lead time(zonal mean)(zonal mean)

010

20

304050

• Little change with lead time over tropics

•Quick decrease in high latitudes

Page 9: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

• The monthly prec useful skills are at 0-day-lead forecast

• No useful skill at lead time long than 10 day for most regions

• Prec skill much lower than T2m skill

CFS Prec monthly forecast CFS Prec monthly forecast skills with different lead timeskills with different lead time

Page 10: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

Question:Question: What is the source of remaining skill for longer lead-time forecasts?

A comparison of CFS hindcasts with GFS AMIP simulations

Page 11: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

CFS T2m monthly correlation skill vs. GFS AMIP

• The AMIP skill in high-latitudes is low

• The GFS AMIP is similar to CFS in the tropics.

Page 12: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

CFS T2m monthly correlation skill vs. GFS AMIP(global mean)

GFS AMIPCFS fo

recast

• Globally, the AMIP skill is comparable to CFS skill at 20-30-day lead

Page 13: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

T2m monthly correlation skill (CFS vs. GFS AMIP)(zonal mean)

010

203040

50

GFS AMIP• Similar skills in CFS & GFS

AMIP near the equator

• In N. lower latitudes (5N-35N), CFS skill higher at lead time shorter than 20 days

• Over N. high latitudes (35N-80N), CFS skill higher at lead time shorter than 20-30 days

Page 14: Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions

ConclusionsConclusions

• For monthly forecasts, contribution from the observed land and atmospheric initial conditions does lead to improvements in skill.

• The improvement in skill, however, decays quickly, and within 20-30 days, skill of initialized runs asymptotes to that from SSTs.