4.6 Article

Spatiotemporal Variation of Land Surface Temperature and Vegetation in Response to Climate Change Based on NOAA-AVHRR Data over China

期刊

SUSTAINABILITY
卷 12, 期 9, 页码 -

出版社

MDPI
DOI: 10.3390/su12093601

关键词

land surface temperature; split-window algorithm; advanced very high-resolution radiometer; remote sensing

资金

  1. Scientific Research Training program of the College of Agriculture and animal husbandry, Qinghai University [NKX201923]
  2. Trend of grassland and its uncertainty in the Qinghai-Tibet Plateau under global climate change [NKX201918]

向作者/读者索取更多资源

The dynamics of land surface temperature (LST) and its correlation with vegetation are crucial to understanding the effects of global climate change. This study intended to retrieve the LST of China, based on the NOAA-AVHRR images, by using a split-window algorithm. The spatiotemporal variation of LST, Normalized difference vegetation index (NDVI), and the correlation between the two was investigated in China from 1982-2016. Moreover, eight scenarios were established to explore the driving forces in vegetation variation. Results indicated that the LST increased by 0.06 degrees C/year in nearly 81.1% of the study areas. The NDVI with an increasing rate of 0.1%/year and occupied 58.6% of the study areas. By contrast, 41.4% of the study areas with a decreasing rate of 0.7 x 10(-3)/year, was mainly observed in northern China. The correlation coefficients between NDVI and LST were higher than that between NDVI and precipitation, and the increase in LST could stimulate vegetation growth. Most regions of China have experienced significant warming over the past decades, specifically, desertification happens in northern China, because it is getting drier. The synergy of LST and precipitation is the primary cause of vegetation dynamics. Therefore, long-term monitoring of LST and NDVI is necessary to better understand the adaptation of the terrestrial ecosystem to global climate change.

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