Summer Institute in Earth Sciences 2009 Comparison of GEOS-5 Model to MPLNET Aerosol Data Bryon J. Baumstarck Departments of Physics, Computer Science,

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Summer Institute in Earth Sciences 2009 Comparison of GEOS-5 Model to MPLNET Aerosol Data Bryon J. Baumstarck Departments of Physics, Computer Science, and Mathematics Rocky Mountain College, Billings, Montana Mentor: Dr. Peter Colarco Atmospheric Chemistry and Dynamics Branch Code NASA Goddard Space Flight Center, Greenbelt, Maryland

The properties of various aerosols in the atmosphere How aerosols interact with clouds The extent of the effects of aerosols on the environment Lack of data resulting in inaccuracies in models What are Aerosols and Why do We Care About Them? Used from the IPCC 4th Assessment Report, Working Group 1 Contribution: Climate Change 2007: The Physical Science Basis huge uncertainty Composed of one or more chemical components Mostly absorbing, mostly scattering, or both Course or fine Spherical or non-spherical An Aerosol is any particle in the air and can be many things. They can be; We care about studying aerosols because of their effects on climate; however, there are large uncertainties with measuring their effects such as;

What is MPLNET? A Federated Network of Micro-Pulse Lidar Systems A global network to continuously measure and monitor aerosol and cloud vertical structure Most MPLNET sites are co-located with the Aerosol Robotics Network (AERONET) sun photometer sites Micro-Pulse Lidar Network Site Locations Created by Bryon Baumstarck Using data from and programmed in IDLhttp://mplnet.gsfc.nasa.gov/data.html

What is a Micro-Pulse Lidar? A ground-based, compact, and eye safe laser system Uses a 523 nm Laser shot vertically through a telescope to measure the return time and attenuation of the laser Using algorithms created by Ellsworth J. Welton and others, one can get a large variety of products to analyze the information contained in the signal from the Laboratory for Atmospheres Instrument Systems Report, 2005 Level 0: Raw Data (Power, energy, etc.) Level 1: NRB Data (Shows overall vertical structure over time) Level 1.5a: Real Time Aerosol Properties (Backscatter, Extinction, Optical Depth, etc.) Level 1.5b: Real Time Height Information (Shows the height of various aerosol layers and is algorithm based) Level 1.5c: Real Time Cloud Properties (Developmental) Level 1.5d: Polar Stratospheric Clouds (Developmental) Kinds of Data Products one is able to get with the MPLNET Data;

What is Aerosol Optical Depth and How is it Measured? Aerosol Lidar +Aerosol +Cloud +Molecular Scattering Aerosol Optical Depth (AOD) is a measure of the amount of light that is extinguished from the sun to the surface. Column AOD is measured by sun photometers, such as those in AERONET, by measuring the total amount of light in the column that is blocked. This value is then used as a constraint on the data from MPLNET to get the backscatter, extinction, and lidar AOD. Distance

Difference between MPLNET Gridded AOD, AERONET time AOD, and GEOS-5 AOD at the Surface. April 16, 2008 Optical Depth Day of Year (April 1, 2008

The model that is being used is the GEOS-5 model which is comprised of various modules. The GEOS-5 model is an Atmospheric General Circulation Model. The model has a ½° by ⅔° grid resolution. The model is needed to fill in the gaps of missing data. This is needed because the data might have gaps due to restraints with the instrument, human mistakes with the instrument (like covering the signal), and movement, or decommissioning, of the instrument. What is the model and why is it needed? The model is also needed to show future predictions. This is critical in understanding and measuring the effects of climate change, and measuring effects of policy changes. Total AOD from GEOS-5 for April 16, 2008.

Normalized Relative Backscatter and Layer Height Information. April Lack of data Complete attenuation of Lidar signal at the surface Cloud GSFC, April 18 th, 2008 (day 109) GSFC, April 19 th, 2008 (day 110) GSFC, April 19 th, 2008 (day 111) True Color Visible Images from MODIS

MPLNET vs. GEOS-5: Aerosol Backscatter. April Possible correlation? Altitude (km) Day of year (April 1 st, 2008) MPLNET GEOS-5

MPLNET vs. GEOS-5: Aerosol Extinction. April MPLNET GEOS-5 Altitude (km) Day of year (April 1 st, 2008)

MPLNET vs. GEOS-5: Cumulative Aerosol Optical Depth. April 2008 Possible correlation? MPLNET GEOS-5 Altitude (km) Day of year (April 1 st, 2008)

In conclusion… The model is underestimating the MPLNET backscatter, extinction, and AOD values. Future projects… Connect individual site’s data into a mosaic to get a more accurate analysis of aerosol long-range transport. The model is overestimating the height of the aerosols. Little or no apparent visual correlation to the actual MPLNET data. Find error in correlation. This error could be due to many factors. 1.) The difference in temporal coverage, as the model is on a 6 hour average and MPLNET is on a 20 minute average. 2.) The difference in spatial coverage, as the model covers a grid area of approximately 50 km and MPLNET is a point. 3.) The problem might not even be related to the model at all, but to the uncertainty in aerosol data in general as discussed at the beginning of this presentation.

A HUGE thank you to Peter Colarco for being my mentor for this project. A special thank you to Ellsworth J. Welton, MPLNET Principle Investigator, for answering questions about MPLNET and for the data used in this project. A grateful thanks goes to Valerie Casasanto, and others, for coordinating the Internship program. And… THANK YOU NASA!!! Thank You’s