Evaluating the portability of satellite derived chlorophyll-a algorithms for temperate inland lakes using airborne hyperspectral imagery and dense surface observations

•Twenty-nine chlorophyll-a algorithms are evaluated using airborne hyperspectral imagery and coincident surface measurements.•The Sentinel-2 and CASI algorithms exhibited the highest performance for chlorophyll-a detection in turbid inland lakes.•Image and data processing has been automated in an at...

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Published inHarmful algae Vol. 76; pp. 35 - 46
Main Authors Johansen, Richard, Beck, Richard, Nowosad, Jakub, Nietch, Christopher, Xu, Min, Shu, Song, Yang, Bo, Liu, Hongxing, Emery, Erich, Reif, Molly, Harwood, Joseph, Young, Jade, Macke, Dana, Martin, Mark, Stillings, Garrett, Stumpf, Richard, Su, Haibin
Format Journal Article
LanguageEnglish
Published Netherlands Elsevier B.V 01.06.2018
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Summary:•Twenty-nine chlorophyll-a algorithms are evaluated using airborne hyperspectral imagery and coincident surface measurements.•The Sentinel-2 and CASI algorithms exhibited the highest performance for chlorophyll-a detection in turbid inland lakes.•Image and data processing has been automated in an attempt to further the goal of near real-time monitoring of algal blooms. This study evaluated the performances of twenty-nine algorithms that use satellite-based spectral imager data to derive estimates of chlorophyll-a concentrations that, in turn, can be used as an indicator of the general status of algal cell densities and the potential for a harmful algal bloom (HAB). The performance assessment was based on making relative comparisons between two temperate inland lakes: Harsha Lake (7.99 km2) in Southwest Ohio and Taylorsville Lake (11.88 km2) in central Kentucky. Of interest was identifying algorithm-imager combinations that had high correlation with coincident chlorophyll-a surface observations for both lakes, as this suggests portability for regional HAB monitoring. The spectral data utilized to estimate surface water chlorophyll-a concentrations were derived from the airborne Compact Airborne Spectral Imager (CASI) 1500 hyperspectral imager, that was then used to derive synthetic versions of currently operational satellite-based imagers using spatial resampling and spectral binning. The synthetic data mimics the configurations of spectral imagers on current satellites in earth’s orbit including, WorldView-2/3, Sentinel-2, Landsat-8, Moderate-resolution Imaging Spectroradiometer (MODIS), and Medium Resolution Imaging Spectrometer (MERIS). High correlations were found between the direct measurement and the imagery-estimated chlorophyll-a concentrations at both lakes. The results determined that eleven out of the twenty-nine algorithms were considered portable, with r2 values greater than 0.5 for both lakes. Even though the two lakes are different in terms of background water quality, size and shape, with Taylorsville being generally less impaired, larger, but much narrower throughout, the results support the portability of utilizing a suite of certain algorithms across multiple sensors to detect potential algal blooms through the use of chlorophyll-a as a proxy. Furthermore, the strong performance of the Sentinel-2 algorithms is exceptionally promising, due to the recent launch of the second satellite in the constellation, which will provide higher temporal resolution for temperate inland water bodies. Additionally, scripts were written for the open-source statistical software R that automate much of the spectral data processing steps. This allows for the simultaneous consideration of numerous algorithms across multiple imagers over an expedited time frame for the near real-time monitoring required for detecting algal blooms and mitigating their adverse impacts.
Bibliography:All authors played major roles in one of the most extensive coincident aircraft imaging, coincident surface observation and biogeochemical analysis campaigns for the evaluation of remote sensing algorithms for the estimation of water quality to date.
Author contributions
ISSN:1568-9883
1878-1470
DOI:10.1016/j.hal.2018.05.001