1 department of earth & atmospheric sciences, univ. of houston

17
Investigation of Atmospheric Recycling Rate from Observation and Model James Trammell 1 , Xun Jiang 1 , Liming Li 2 , Maochang Liang 3 , Jing Zhou 4 , and Yuk L. Yung 5 1 Department of Earth & Atmospheric Sciences, Univ. of Houston 2 Department of Physics, Univ. of Houston 3 Research Center for Environmental Changes, Academia Sinica 4 Department of Physics, Beijing Normal University 5 Division of Geological & Planetary Sciences, Caltech AGU Fall Meeting, Dec 3, 2012

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Investigation of Atmospheric Recycling Rate from Observation and Model James Trammell 1 , Xun Jiang 1 , Liming Li 2 , Maochang Liang 3 , Jing Zhou 4 , and Yuk L. Yung 5. 1 Department of Earth & Atmospheric Sciences, Univ. of Houston 2 Department of Physics, Univ. of Houston - PowerPoint PPT Presentation

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Page 1: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Investigation of Atmospheric Recycling Rate from Observation and Model

James Trammell1, Xun Jiang1, Liming Li2, Maochang Liang3, Jing Zhou4, and Yuk L. Yung5

1 Department of Earth & Atmospheric Sciences, Univ. of Houston

2Department of Physics, Univ. of Houston

3 Research Center for Environmental Changes, Academia Sinica

4Department of Physics, Beijing Normal University

5 Division of Geological & Planetary Sciences, Caltech

AGU Fall Meeting, Dec 3, 2012

Page 2: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Overview

• Motivation

• Data

• Observational Study

• GISS Model Results • Conclusions

Page 3: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Motivation• To understand the hydrological cycle as a response to

global warming

• To quantitatively simulate the precipitation trend in order to predict the variation of precipitation in the future

• To better understand the physics behind the temporal variation and spatial pattern of precipitation

• To alleviate, forecast, and prepare for the consequences of drought in one area and flooding in another

Page 4: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Data

I. Water VaporSpecial Sensor Microwave/Imager (SSM/I) (V6)

Spatial: 0.25º× 0.25º; Temporal: 1988-present

II. Precipitation1. Global Precipitation Climatology Project (GPCP) (V2.1)

Spatial: 2.5º× 2.5º; Temporal: 1979-2009

2. SSM/I (V6) Spatial: 0.25º× 0.25º; Temporal: 1988-present

Page 5: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Recycling Rate

Total Monthly Precipitation (P)

Recycling Rate (R) = _________________________________________

Mean Precipitable Water Vapor (W)

_ _ _

∆R / R = ∆P / P - ∆W / W

(The ratio of temporal variation to time mean)

[Chahine et al., 1997]

Page 6: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Trends in Oceanic Precipitation, Water Vapor, and Recycling Rates [Li et al., ERL

2011]

SSM/I: 0.13 ± 0.63 %/decade GPCP: 0.33 ± 0.54 %/decade

SSM/I: 0.97 ± 0.37 %/decade

Recycling 2 = (GPCP P)/(SSM/I W)

Recycling 2: -0.65 ± 0.51 %/decade

Recycling 1 = (SSM/I P)/(SSM/I W)

Recycling 1: -0.82 ± 1.11 %/decade

Deseasonalized & Lowpass Filtered Time Series

ENSO Signals have been removed by a multiple regression method.

Lowpass filter has been applied to remove high frequency signals.

Page 7: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Recycling RatePositive at ITCZ // Negative at two sides of ITCZ

Recycling Rate1 = (SSM/I Precipitation)/(SSM/I H2O)

Page 8: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Temporal Variations of PrecipitationWet Areas

Dry Areas

8.0 ± 2.4 mm/decade

-1.3 ± 0.88 mm/decade

ENSO Signals have been removed by a multiple regression method.

Lowpass filter has been applied to remove high frequency signals.

Page 9: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

GISS Model

NASA Goddard Institute for Space Studies (GISS)-HYCOM Model

Historic Run – Historic greenhouse gases are included.

Control Run – Concentrations of greenhouse gases are fixed.

Can the current atmospheric models quantitatively capture the characteristics of precipitation and water vapor from the

observational study?

Page 10: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Oceanic Precipitation, Water Vapor, and Recycling Rates

Deseasonalized & Lowpass Filtered Time Series

ENSO Signals have been removed by a multiple regression method.

Dashed line is the GISS historic run comparison with the observations.

Trends for GISS run

(A)P: 0.80 ± 0.29 %/decade(B)W: 1.78 ± 0.48 %/decade(C)R: -0.55 ± 0.34 %/decade

% change in precipitation (A), water vapor (B), and recycling rate (C)

Page 11: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

GISS ComparisonDeseasonalized / Lowpass Filtered Precipitation

Historic Run Control Run (fixed)

2.36 ± 1.17 mm/decade

-0.14 ± 0.22 mm/decade -0.02 ± 0.20 mm/decade

0.12 ± 1.04 mm/decade

Page 12: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

GISS ComparisonDeseasonalized / Lowpass Filtered Column Water

Historic Run Control Run (fixed)

1.12 ± 0.17 mm/decade

0.55 ± 0.09 mm/decade

0.03 ± 0.12 mm/decade

-0.01 ± 0.08 mm/decade

Page 13: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Conclusions- Observations and GISS historic run

- Recycling rate has increased in the ITCZ and decreased in the neighboring regions over the past two decades- Temporal variation is stronger in precipitation than in water vapor, which results to the positive (negative) trend of recycling rate in the high (low) precipitation region - GISS model captures the observed precipitation, water vapor, and recycling rate trends qualitatively

- Historic and control run comparison- suggests that the increasing greenhouse gas forcing affects the temporal variation of precipitation, contributing to precipitation extremes

Page 14: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Acknowledgments

• NASA ROSES-2010 NEWS grant NNX13AC04G

• Eric J Fetzer (JPL), Moustafa T Chahine (JPL), Edward T Olsen (JPL), Luke Chen (JPL)

Thank You!!

Page 15: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston
Page 16: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

16

Spatial Pattern of the Mean Precipitation for 1988-2008

Page 17: 1  Department of Earth & Atmospheric Sciences, Univ. of Houston

Ensemble Runs

- 5 different colors represent 5 different initial conditions, all with the historic run forcing

- Black line is the control run

- Some weakness in the “dry” area