AUTHOR=Montes Martin , Pahlevan Nima , Giles David M. , Roger Jean-Claude , Zhai Peng-wang , Smith Brandon , Levy Robert , Werdell P. Jeremy , Smirnov Alexander TITLE=Augmenting Heritage Ocean-Color Aerosol Models for Enhanced Remote Sensing of Inland and Nearshore Coastal Waters JOURNAL=Frontiers in Remote Sensing VOLUME=Volume 3 - 2022 YEAR=2022 URL=https://www.frontiersin.org/journals/remote-sensing/articles/10.3389/frsen.2022.860816 DOI=10.3389/frsen.2022.860816 ISSN=2673-6187 ABSTRACT=Satellite remote sensing of near-surface water composition in terrestrial and coastal regions is challenging largely due to uncertainties linked to a lack of representative continental aerosols in the atmospheric correction (AC) framework. A comprehensive family of absorbing aerosols is proposed by analyzing global AERONET measurements using the Partition Around Medoids (PAM) classifier. The input to the classifier is composed of Version 3, Level 2.0 daily average aerosol properties (i.e., single scattering albedo) and the Angstrom exponents for extinction and absorption (AEe and AEa, respectively) from observations from June 1993 to September 2019. The PAM classification based on low daily aerosol optical depth (AOD(0.44) 0.4) suggested 27 distinct aerosol clusters encompassing five major absorbing aerosol types (Dust (DU), Marine (MAR), Mixed (MIX), Urban/Industrial (U/I), and Biomass Burning (BB)). Seasonal patterns of dominant PAM-derived clusters at three AERONET sites (GSFC, Kanpur, and Banizoumbou) strongly influenced by U/I, DU, and BB types, respectively, showed a satisfactory agreement with variations of aerosol mixtures reported in the literature. The PAM-derived models augment aerosol mixtures defined in Ahmad et al. [1] (A2010) and used in NASA’s standard AC algorithm [2]. To demonstrate the validity and complementary nature of our models, a coupled ocean-atmosphere radiative transfer code is employed to develop two experimental machine-learning AC processors. These two processors differ only in their aerosol models incorporated in training: a) a processor trained with the A2010 aerosol models (ACI) and b) a processor trained with both PAM and A2010 aerosol models (ACII). These processors are applied to Landsat-8 Operational Land Imager (OLI) matchups (N=173) from selected AERONET sites equipped with ocean color radiometers (AERONET-OC). Our assessments showed improvements of up to 30% in retrieving remote sensing reflectance (Rrs) in the blue bands. In general, our empirically derived PAM aerosol models complement A2010 models (designed for regions strongly influenced by marine conditions) over continental and coastal waters where absorbing aerosols are present (e.g., urban environments, areas impacted by dust, or wildfire events). With the expected geographic expansion of in situ aquatic validation networks, the advantages of our models will be accentuated, particularly in the ultraviolet and short blue bands.