Abstract

Abstract. Surface air temperature (Ta), as an important climate variable, has been used in a wide range of fields such as ecology, hydrology, climatology, epidemiology, and environmental science. However, ground measurements are limited by poor spatial representation and inconsistency, and reanalysis and meteorological forcing datasets suffer from coarse spatial resolution and inaccuracy. Previous studies using satellite data have mainly estimated Ta under clear-sky conditions or with limited temporal and spatial coverage. In this study, an all-sky daily mean land Ta product at a 1 km spatial resolution over mainland China for 2003–2019 has been generated mainly from the Moderate Resolution Imaging Spectroradiometer (MODIS) products and the Global Land Data Assimilation System (GLDAS) dataset. Three Ta estimation models based on random forest were trained using ground measurements from 2384 stations for three different clear-sky and cloudy-sky conditions. The random sample validation results showed that the R2 and root-mean-square error (RMSE) values of the three models ranged from 0.984 to 0.986 and from 1.342 to 1.440 K, respectively. We examined the spatiotemporal patterns and land cover type dependences of model accuracy. Two cross-validation (CV) strategies of leave-time-out (LTO) CV and leave-location-out (LLO) CV were also used to evaluate the models. Finally, we developed the all-sky Ta dataset from 2003 to 2009 and compared it with the China Land Data Assimilation System (CLDAS) dataset at a 0.0625∘ spatial resolution, the China Meteorological Forcing Data (CMFD) dataset at a 0.1∘ spatial resolution, and the GLDAS dataset at a 0.25∘ spatial resolution. Validation accuracy of our product in 2010 was significantly better than other datasets, with R2 and RMSE values of 0.992 and 1.010 K, respectively. In summary, the developed all-sky daily mean land Ta dataset has achieved satisfactory accuracy and high spatial resolution simultaneously, which fills the current dataset gap in this field and plays an important role in the studies of climate change and the hydrological cycle. This dataset is currently freely available at https://doi.org/10.5281/zenodo.4399453 (Chen et al., 2021b) and the University of Maryland (http://glass.umd.edu/Ta_China/, last access: 24 August 2021). A sub-dataset that covers Beijing generated from this dataset is also publicly available at https://doi.org/10.5281/zenodo.4405123 (Chen et al., 2021a).

Highlights

  • Surface air temperature (Ta) is one of the most important variables in a wide range of fields including ecology, hydrology, climatology, epidemiology, and environmental science (Goetz et al, 2000; Stisen et al, 2007; Vancutsem et al, 2010; Zhang et al, 2018)

  • According to the research conducted by Kilibarda et al (2014), the 8 d composite land surface temperature (LST) was interpolated into a daily dataset and combined with topographic layers and a geometric temperature trend to interpolate the all-sky daily Ta, and the results reported that the root-mean-square error (RMSE) values were between 2 and 4 ◦C for daily mean, maximum, and minimum Ta

  • We filled the gaps of Moderate Resolution Imaging Spectroradiometer (MODIS) LSTs and divided all data pairs into three weather conditions according to the gap-filling results

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Summary

Introduction

Surface air temperature (Ta) is one of the most important variables in a wide range of fields including ecology, hydrology, climatology, epidemiology, and environmental science (Goetz et al, 2000; Stisen et al, 2007; Vancutsem et al, 2010; Zhang et al, 2018). Ta refers to the atmospheric temperature 1.5–2 m above the surface, which represents the thermal state information of the surface and the lower atmosphere. It influences the carbon cycle through the biophysical effects of vegetation and regulates many surface processes such as photosynthesis, respiration, and evaporation (Khesali and Mobasheri, 2020). Reliable estimates of Ta at fine spatiotemporal resolution are important to better understand and simulate complex surface processes and reveal changes due to climate change or local disturbances (Guan et al, 2013). A deep understanding of the spatiotemporal patterns of Ta is of great guiding significance for disaster prevention and reduction

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