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Zeng, Linglin; Wardlow, Brian D.; Tadesse, Tsegaye; Shan, Jie; Hayes, Michael J.; Li, Deren; Xiang, Daxiang (2015). Estimation of Daily Air Temperature Based on MODIS Land Surface Temperature Products over the Corn Belt in the US. REMOTE SENSING, 7(1), 951-970.

Abstract
Air temperature (Ta) is a key input in a wide range of agroclimatic applications. Moderate Resolution Imaging Spectroradiometer (MODIS) Ts (Land Surface Temperature (LST)) products are widely used to estimate daily Ta. However, only daytime LST (Ts-day) or nighttime LST (Ts-night) data have been used to estimate Tmax/Tmin (daily maximum or minimum air temperature), respectively. The relationship between Tmax and Ts-night, and the one between Tmin and Ts-day has not been studied. In this study, both the ability of Ts-night data to estimate Tmax and the ability of Ts-day data to estimate Tmin were tested and studied in the Corn Belt during the growing season (May-September) from 2008 to 2012, using MODIS daily LST products from both Terra and Aqua. The results show that using Ts-night for estimating Tmax could result in a higher accuracy than using Ts-day for a similar estimate. Combining Ts-day and Ts-night, the estimation of Tmax was improved by 0.19-1.85, 0.37-1.12 and 0.26-0.93 degrees C for crops, deciduous forest and developed areas, respectively, when compared with using only Ts-day or Ts-night data. The main factors influencing the Ta estimation errors spatially and temporally were analyzed and discussed, such as satellite overpassing time, air masses, irrigation, etc.

DOI:
10.3390/rs70100951

ISSN:
2072-4292

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