Long-term series of daily snow depth dataset over the Northern Hemisphere based on machine learning (1980-2019)
The daily snow depth data is a matrix with 1440 columns and 360 rows, and the spatial resolution of the data is 0.25 °, NoData_Value is represented by - 9999. The snow depth datasets are stored according to the natural year folder by folder, the folder of each year contains the daily fused gridded snow depth dataset of that year. The data format of fused snow depth dataset is stored in GeoTiff format, the unit of snow depth data is centimeter, and the projection is WGS84. Among these years, the daily fused snow depth dataset from September 1, 1980 to December 31 of that year were contained in folder of 1980, and the folder of 2019 contains the daily fused snow depth dataset from 1 January 1, 2019 to May 31 of that year. Except for these two years, al folders contain the fused snow depth dataset from January 1 to May 31 and September 1 to December 31. Because of the quality of the original gridded snow depth datasets, daily snow depth datasets from June 1 to August 31 were not considered in our study. The file name is "ML_NHSD_YYYY-MM-DD.tif", where ML stands for machine learning, NHSD stands for Northern Hemisphere Snow Depth, YYYY stands for the natural years from 1980 to 2019, MM stands for January to December (except June to August), and DD stands for the date. The file can be viewed with software such as ArcMAP or QGIS and processed accordingly.
The original gridded snow depth datasets of NHSD and GlobSnow were produced with the passive microwave brightness temperature from SMMR sensor in 1980 to 1987. The SMMR dataset was the other day dataset and with large missing bands. Snow depth dataset of NHSD and GlobSnow were also inevitably have a large number of missing data, and the fused snow depth dataset have a similar situation. The fused snow depth is as complete as possible for the land area of the Northern Hemisphere, there are minor missing data on some days, and the coastal areas such as Greenland and Iceland are not within the scope of the study.
Che, T., Hu, Y., Dai, L., Xiao, L. (2021). Long-term series of daily snow depth dataset over the Northern Hemisphere based on machine learning (1980-2019). A Big Earth Data Platform for Three Poles, DOI: 10.11888/Snow.tpdc.271701. CSTR: 18406.11.Snow.tpdc.271701. (Download the reference: RIS | Bibtex )
Related Literatures:1. Hu,Y.X., Che, T., Dai, L.Y., & Xiao, L. (2021). Snow depth fusion based on machine learning methods for the Northern Hemisphere. Remote Sensing, 13,1250.( View Details | Bibtex)
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CASEarth:Big Earth Data for Three Poles(grant No. XDA19070000) (No:XDA19000000)
Strategic Priority Research Program of the Chinese Academy of Sciences (No:XDA19070100) [XDA19070100]
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