Advancing cyanobacteria biomass estimation from hyperspectral observations: Demonstrations with HICO and PRISMA imagery

被引:48
|
作者
O'Shea, Ryan E. [1 ,2 ]
Pahlevan, Nima [1 ,2 ]
Smith, Brandon [1 ,2 ]
Bresciani, Mariano [3 ]
Egerton, Todd [4 ]
Giardino, Claudia [3 ]
Li, Lin [5 ]
Moore, Tim [6 ]
Ruiz-Verdu, Antonio [7 ]
Ruberg, Steve [8 ]
Simis, Stefan G. H. [9 ]
Stumpf, Richard [10 ]
Vaiciute, Diana [11 ]
机构
[1] NASA Goddard Space Flight Ctr, Greenbelt, MD 20771 USA
[2] Sci Syst & Applicat Inc SSAI, Lanham, MD USA
[3] Natl Res Council Italy CNR, Inst Electromagnet Sensing Environm IREA, Milan, Italy
[4] Virginia Dept Hlth, Norfolk, VA USA
[5] Indiana Univ Purdue Univ, Dept Earth Sci, Indianapolis, IN 46202 USA
[6] Florida Atlantic Univ, Harbor Branch Oceanog Inst, Boca Raton, FL 33431 USA
[7] Univ Valencia, Lab Earth Observat, Valencia, Spain
[8] NOAA, Great Lakes Environm Res Lab, 2205 Commonwealth Blvd, Ann Arbor, MI 48105 USA
[9] Plymouth Marine Lab, Plymouth, Devon, England
[10] NOAA, Natl Ctr Coastal Sci Studies, Silver Spring, MD USA
[11] Klaipeda Univ, Marine Res Inst, Klaipeda, Lithuania
关键词
Cyanobacteria; Phycocyanin; Machine learning; Mixture density network; Aquatic remote sensing; cyanoHABs; HICO; PRISMA; WESTERN LAKE-ERIE; PREDICTING PHYCOCYANIN CONCENTRATIONS; REMOTE-SENSING REFLECTANCE; POTABLE WATER SOURCES; ABSORPTION-COEFFICIENT; EXTRACTION METHODS; INLAND WATERS; CHLOROPHYLL-A; ALGORITHM; RETRIEVAL;
D O I
10.1016/j.rse.2021.112693
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Retrieval of the phycocyanin concentration (PC), a characteristic pigment of, and proxy for, cyanobacteria biomass, from hyperspectral satellite remote sensing measurements is challenging due to uncertainties in the remote sensing reflectance (increment Rrs) resulting from atmospheric correction and instrument radiometric noise. Although several individual algorithms have been proven to capture local variations in cyanobacteria biomass in specific regions, their performance has not been assessed on hyperspectral images from satellite sensors. Our work leverages a machine-learning model, Mixture Density Networks (MDNs), trained on a large (N = 939) dataset of collocated in situ chlorophyll-a concentrations (Chla), PCs, and remote sensing reflectance (Rrs) measurements to estimate PC from all relevant spectral bands. The performance of the developed model is demonstrated via PC maps produced from select images of the Hyperspectral Imager for the Coastal Ocean (HICO) and Italian Space Agency's PRecursore IperSpettrale della Missione Applicativa (PRISMA) using a matchup dataset. As input to the MDN, we incorporate a combination of widely used band ratios (BRs) and line heights (LHs) taken from existing multispectral algorithms, that have been proven for both Chla and PC esti-mation, as well as novel BRs and LHs to increase the overall cyanobacteria biomass estimation accuracy and reduce the sensitivity to increment Rrs. When trained on a random half of the dataset, the MDN achieves uncertainties of 44.3%, which is less than half of the uncertainties of all viable optimized multispectral PC algorithms. The MDN is notably better than multispectral algorithms at preventing overestimation on low (<10 mg m(-3)) PC. Visibly, HICO and PRISMA PC maps show the wider dynamic range that can be represented by the MDN. The available in situ and satellite-derived Rrs matchups and measured in situ PC demonstrate the robustness of the MDN for estimating low (<10 mg m(-3)) PC and the reduced impact of increment Rrs on medium-to-high in situ PC (>10 mg m(-3)). According to our extensive assessments, the developed model is anticipated to enable practical PC products from PRISMA and HICO, therefore the model is promising for planned hyperspectral missions, such as the Plankton Aerosol and Cloud Ecosystem (PACE). This advancement will enhance the complementary roles of hyperspectral radiometry from satellite and low-altitude platforms for quantifying and monitoring cyanobacteria harmful algal blooms at both large and local spatial scales.
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页数:19
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