David Nowicki - June 15

School of Meteorology MS Thesis Defense   INFORMATION CONTENT ANALYSIS OF COMBINED LIDAR-POLARIMETER RETRIEVALS TO IMPROVE AEROSOL REMOTE SENSING ACCURACY David Nowicki Tuesday, June 15th 10:00am   Join Google Meet: https://meet.google.com/hfk-xbvs-qmk   Or dial: ‪(US) +1 484-998-0415 PIN: ‪813 374 113# Aerosols are small particles suspended in the atmosphere which

Start

June 15, 2021 - 10:00 am

End

June 15, 2021 - 11:00 am

School of Meteorology MS Thesis Defense

 

INFORMATION CONTENT ANALYSIS OF COMBINED LIDAR-POLARIMETER RETRIEVALS TO IMPROVE AEROSOL REMOTE SENSING ACCURACY

David Nowicki

Tuesday, June 15th

10:00am

 

Join Google Meet:

https://meet.google.com/hfk-xbvs-qmk

 

Or dial: ‪(US) +1 484-998-0415

PIN: ‪813 374 113#

Aerosols are small particles suspended in the atmosphere which affect global climate change via scattering and absorbing sunlight and serving as cloud condensation nuclei. Moreover, the prevalence of some anthropogenic and toxic aerosols has a direct adverse impact on public health. At present, aerosols remain the greatest source of uncertainty for radiative forcing. Though accurate characterization of spatially and temporally varying aerosols is difficult, two powerful remote sensing techniques, polarimetric and lidar measurements, have the complementary strengths of resolving column-effective and vertical distributions of aerosol properties, respectively. Vigorous development of these instruments has sparked our interest in 1) their collocation on ground-based, airborne, and space-borne platforms and 2) developing more efficient, versatile forward and inverse models that make use of combined lidar and polarimetric data to enhance aerosol remote sensing accuracy. In our effort to address target 2, the information content analysis (ICA) model is adopted in this study. It uses a priori information of speciated aerosol characteristics and various assumptions of measurement uncertainties as input. Combined with the use of a light scattering model and a radiative transfer model, lidar and polarimetric signals are simulated. The retrieval uncertainties of a suite of aerosol-related geophysical variables (GVs) are output by ICA, which allows us to explore the dependence of GV retrieval capabilities on a priori knowledge of aerosol properties and instrument accuracy. We analyze results to 1) check whether aerosol GV uncertainty thresholds established by NASA’s Aerosol and Cloud, Convection and Precipitation (ACCP) mission are met by different lidar and polarimetric instrument configurations and 2) identify a cost-effective, yet accurate, instrument combination for future missions. Five different methods are used to perturb a priori knowledge of state vector and measurement uncertainties across seven different lidar and/or polarimeter instrument configurations. Results show clear impact of a priori knowledge on retrieval capabilities as well as the importance of specific measurements to accurate retrievals of the GVs considered. Across results, the 2 2 1 lidar and polarimeter (L6+POL) instrument combination consistently showed superior abilities of retrieving the GVs considered within SATM-prescribed uncertainty ranges.