4.7 Article

A quasi-physical sea surface temperature method for the split-window data from the Second-generation Global Imager (SGLI) onboard the Global Change Observation Mission-Climate (GCOM-C) satellite

Journal

REMOTE SENSING OF ENVIRONMENT
Volume 257, Issue -, Pages -

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.rse.2021.112347

Keywords

SST; Q-method; SGLI; GCOM-C; AHI; Himawari

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The study describes a quasi-physical method for determining sea surface temperatures, showing biases of -0.097 K and 0.28 K during the day and -0.18 K and 0.28 K at night. High biases of nearly -0.5 K were calculated for SSTs around 305 K. Residual analysis suggests that the high negative bias is due to insufficient information on atmospheric correction brought by split-window data.
This paper describes a quasi-physical method (the Q-method) for determining the sea surface temperatures (SSTs). The Q-method is a coefficient-based technique developed for processing the multiband infrared (IR) data of the geostationary Himawari-8 satellite. We applied the Q-method to the split-window data from the Second generation Global Imager (SGLI) onboard the Global Change Observation Mission-Climate (GCOM-C) satellite. A comparison of the determined SGLI SSTs and buoy data shows a bias with a robust standard deviation of-0.097 K and 0.28 K in the daytime and-0.18 K and 0.28 K at night, respectively. Meanwhile, high biases of nearly-0.5 K were calculated for SSTs at and around 305 K. A residuals analysis suggests that the high negative bias is caused by insufficient information on the atmospheric correction brought by split-window data. This paper discusses the physical and mathematical background of the Q-method and compares it with another coefficient based physical scheme.

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