European Commission, Joint Research Centre, Directorate D-Sustainable Resources, Bio-Economy Unit, Ispra (VA) I-21027, Italy.
Sci Data. 2018 Nov 6;5:180246. doi: 10.1038/sdata.2018.246.
Air temperature at 2 m above the land surface is a key variable used to assess climate change. However, observations of air temperature are typically only available from a limited number of weather stations distributed mainly in developed countries, which in turn may often report time series with missing values. As a consequence, the record of air temperature observations is patchy in both space and time. Satellites, on the other hand, measure land surface temperature continuously in both space and time. In order to combine the relative strengths of surface and satellite temperature records, we develop a dataset in which monthly air temperature is predicted from monthly land surface temperature for the years 2003 to 2016, using a statistical model that incorporates information on geographic and climatic similarity. We expect this dataset to be useful for various applications involving climate monitoring and land-climate interactions.
离地 2 米处的空气温度是评估气候变化的关键变量。然而,空气温度的观测通常仅来自主要分布在发达国家的有限数量的气象站,这些气象站的时间序列报告往往存在缺失值。因此,空气温度观测记录在空间和时间上都不完整。卫星则可以连续地在空间和时间上测量地表温度。为了结合地表和卫星温度记录的相对优势,我们开发了一个数据集,该数据集使用包含地理和气候相似性信息的统计模型,根据 2003 年至 2016 年的月地表温度来预测每月的空气温度。我们预计这个数据集将在涉及气候监测和陆地-气候相互作用的各种应用中很有用。