Abstract
Glacier surface temperature (GST) is influenced by both the energy flux from the atmosphere above and the thermal dynamics at the ice-water-debris interfaces. However, previous studies on GST are inadequate in time series research and mountain glacier surface temperature retrieval. We evaluate the GST variability at Hailuogou glacier, a temperate glacier located in Southeastern Tibetan Plateau, from 1990 to 2018. We utilized a modified mono-window algorithm to calculate the GST using the Landsat 8 thermal infrared sensor (TIRS) band 10 data and Landsat 5 thematic mapper (TM) band 6 data. Three essential parameters, including the emissivity of ice and snow, atmospheric transmittance, and effective mean atmospheric temperature, were employed in the GST algorithm. The remotely-sensed temperatures were compared with two other singlechannel algorithms to validate GST algorithm's accuracy. Results from different algorithms showed a good agreement, with a mean difference of about 0.6 °C. Our results showed that the GST of the Hailuogou glacier, both in the upper debris-free part and the lower debris-covered tongue, has experienced a slightly increasing trend at a rate of 0.054 °C a-1 during the past decades. Atmospheric warming, expanding debris cover in the lower part, and a darkening debris-free accumulation area are the main causes of the warming of the glacier surface.
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Liao, H., Liu, Q., Zhong, Y., & Lu, X. (2020). Landsat-based estimation of the glacier surface temperature of Hailuogou glacier, Southeastern Tibetan Plateau, between 1990 and 2018. Remote Sensing, 12(13). https://doi.org/10.3390/rs12132105
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