Document Type
Article
Title
Robust algorithm for estimating total suspended solids (TSS) in inland and nearshore coastal waters
Publication Title
Remote Sensing of Environment
Rights and Access Note
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Publication Date
9-1-2020
Volume Number
246
Abstract/ Summary
One of the challenging tasks in modern aquatic remote sensing is the retrieval of near-surface concentrations of Total Suspended Solids (TSS). This study aims to present a Statistical, inherent Optical property (IOP) -based, and muLti-conditional Inversion proceDure (SOLID) for enhanced retrievals of satellite-derived TSS under a wide range of in-water bio-optical conditions in rivers, lakes, estuaries, and coastal waters. In this study, using a large in situ database (N > 3500), the SOLID model is devised using a three-step procedure: (a) water-type classification of the input remote sensing reflectance (Rrs), (b) retrieval of particulate backscattering (bbp) in the red or near-infrared (NIR) regions using semi-analytical, machine-learning, and empirical models, and (c) estimation of TSS from bbp via water-type-specific empirical models. Using an independent subset of our in situ data (N = 2729) with TSS ranging from 0.1 to 2626.8 [g/m3], the SOLID model is thoroughly examined and compared against several state-of-the-art algorithms (Miller and McKee, 2004; Nechad et al., 2010; Novoa et al., 2017; Ondrusek et al., 2012; Petus et al., 2010). We show that SOLID outperforms all the other models to varying degrees, i.e.,from 10 to >100%, depending on the statistical attributes (e.g., global versus water-type-specific metrics). For demonstration purposes, the model is implemented for images acquired by the MultiSpectral Imager aboard Sentinel-2A/B over the Chesapeake Bay, San-Francisco-Bay-Delta Estuary, Lake Okeechobee, and Lake Taihu. To enable generating consistent, multimission TSS products, its performance is further extended to, and evaluated for, other missions, such as the Ocean and Land Color Instrument (OLCI), Moderate Resolution Imaging Spectroradiometer (MODIS), Visible Infrared Imaging Radiometer Suite (VIIRS), and Operational Land Imager (OLI). Sensitivity analyses on uncertainties induced by the atmospheric correction indicate that 10% uncertainty in Rrs leads to <20% uncertainty in TSS retrievals from SOLID. While this study suggests that SOLID has a potential for producing TSS products in global coastal and inland waters, our statistical analysis certainly verifies that there is still a need for improving retrievals across a wide spectrum of particle loads.
Repository Citation
Balasubramanian, Sundarabalan V.; Pahlevan, Nima; Smith, Brandon; Binding, Caren; Schalles, John; Loisel, Hubert; Gurlin, Daniela; Greb, Steven; Alikas, Krista; Randla, Mirjam; Bunkei, Matsushita; Moses, Wesley; Nguyễn, Hà; Lehmann, Moritz K.; O'Donnell, David; Ondrusek, Michael; Han, Tai Hyun; Fichot, Cédric G.; Moore, Tim; and Boss, Emmanuel, "Robust algorithm for estimating total suspended solids (TSS) in inland and nearshore coastal waters" (2020). Marine Sciences Faculty Scholarship. 236.
https://digitalcommons.library.umaine.edu/sms_facpub/236
Citation/Publisher Attribution
Balasubramanian, S. V, Pahlevan, N., Smith, B., Binding, C., Schalles, J., Loisel, H., Gurlin, D., Greb, S., Alikas, K., Randla, M., Bunkei, M., Moses, W., Nguyễn, H., Lehmann, M. K, O'Donnell, D., Ondrusek, M., Han, T., Fichot, C. G, Moore, T., & Boss, E. (2020). Robust algorithm for estimating total suspended solids (TSS) in inland and nearshore coastal waters. Remote sensing of environment, doi: 10.1016/j.rse.2020.111768
Publisher Statement
©2020 The Authors
DOI
10.1016/j.rse.2020.111768
Version
publisher's version of the published document