SMAP soil moisture and vegetation optical depth product using MCCA (2015-2022)
Data file naming method:
<MCCA_SMAP_xxKM_CCFP_VSM_VOD_YYYY_V0.nc>, MCCA represents the multi-channel collaborative algorithm, SMAP represents the SMAP satellite, <xxKM> represents the grid size of ease grid 2.0 projection, <CCFP> indicates F-band (F is frequency) brightness temperature of P polarization was used as the core channel in MCCA, VSM_VOD is the product of soil moisture and vegetation optical thickness, <YYYY> is the year of the data, and V1 represents the data version, which will be updated according to your valuable suggestions.
usage method:
Data can be read in various programming languages such as MATLAB, Python and IDL, and can also be visualized in hdfview and panoply. Please refer to the description document for details. We provide Python and Matlab code to read and plot data.
Zhao, T., Peng, Z., Yao, P., Shi, J. (2022). SMAP soil moisture and vegetation optical depth product using MCCA (2015-2022). A Big Earth Data Platform for Three Poles, DOI: 10.11888/Terre.tpdc.272088. CSTR: 18406.11.Terre.tpdc.272088. (Download the reference: RIS | Bibtex )
Related Literatures:1. Zhao, T.J., Shi, J.C., Entekhabi, D., Jackson, T.J., Hu, L., Peng, Z.Q., Yao, P.P., Li, S.N., & Kang, C.S. (2021). Retrievals of soil moisture and vegetation optical depth using a multi-channel collaborative algorithm. Remote Sensing of Environment, 257, 112321.( View Details | Bibtex)
Using this data, the data citation is required to be referenced and the related literatures are suggested to be cited.
Second Tibetan Plateau Scientific Expedition Program
To respect the intellectual property rights, protect the rights of data authors, expand services of the data center, and evaluate the application potential of data, data users should clearly indicate the source of the data and the author of the data in the research results generated by using the data (including published papers, articles, data products, and unpublished research reports, data products and other results). For re-posting (second or multiple releases) data, the author must also indicate the source of the original data.
License: This work is licensed under an Attribution 4.0 International (CC BY 4.0)
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