Global Estimation of Suspended Particulate Matter From Satellite Ocean Color Imagery

利用卫星海洋水色图像估算全球悬浮颗粒物浓度

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Abstract

The suspended particulate matter (SPM) concentration (unit: mg l(-1)) in surface waters is an essential measure of water quality and clarity. Satellite remote sensing provides a powerful tool to derive the SPM with synoptic and repeat coverage. In this study, we developed a new global SPM algorithm utilizing the remote sensing reflectance (R (rs) (λ)) at near-infrared (NIR), red, green, and blue bands (NIR-RGB) as input. The evaluations showed that the NIR-RGB algorithm could predict SPM with the median absolute percentage difference of ∼35%-39% over a wide range from ∼0.01 to >2,000 mg l(-1). The uncertainty is smaller (29%-37%) for turbid waters where R (rs) (671) ≥ 0.0012 sr(-1) and slightly higher (41%-44%) for clear waters where R (rs) (671) < 0.0012 mg l(-1). The algorithm was implemented with the global R (rs) (λ) data from the Visible Infrared Imaging Radiometer Suite (VIIRS) onboard the Suomi National Polar-orbiting Partnership (SNPP) satellite. We provided a brief characterization of the spatial distribution and temporal trends of the SPM products in global waters based on the monthly SPM composites. Case studies of the SPM time series in coastal and inland waters suggest that the satellite SPM estimations registered spatial and seasonal variation and episodic events in regional scales as well. The VIIRS-generated global SPM maps provide a valuable addition to the existing ocean color products for environmental and climate applications.

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