A 1 km daily soil moisture dataset over China using in situ measurement and machine learning
-
Published:2022-11-30
Issue:12
Volume:14
Page:5267-5286
-
ISSN:1866-3516
-
Container-title:Earth System Science Data
-
language:en
-
Short-container-title:Earth Syst. Sci. Data
Author:
Li Qingliang, Shi Gaosong, Shangguan WeiORCID, Nourani Vahid, Li Jianduo, Li Lu, Huang FeiniORCID, Zhang Ye, Wang Chunyan, Wang DagangORCID, Qiu JianxiuORCID, Lu XingjieORCID, Dai Yongjiu
Abstract
Abstract. High-quality gridded soil moisture products are essential for many Earth system science applications, while the recent reanalysis and
remote sensing soil moisture data are often available at coarse resolution
and remote sensing data are only for the surface soil. Here, we present a 1 km resolution long-term dataset of soil moisture derived through machine
learning trained by the in situ measurements of 1789 stations over China, named SMCI1.0 (Soil Moisture of China by in situ data, version 1.0). Random forest is used as a robust machine learning approach to predict soil moisture using ERA5-Land time series, leaf area index, land
cover type, topography and soil properties as predictors. SMCI1.0 provides
10-layer soil moisture with 10 cm intervals up to 100 cm deep at daily
resolution over the period 2000–2020. Using in situ soil moisture as the benchmark, two independent experiments were conducted to evaluate the estimation
accuracy of SMCI1.0: year-to-year (ubRMSE ranges from 0.041 to 0.052 and R ranges from 0.883 to 0.919) and station-to-station experiments (ubRMSE ranges from 0.045 to 0.051 and R ranges from 0.866 to 0.893). SMCI1.0 generally has advantages over other gridded soil moisture products, including ERA5-Land, SMAP-L4, and SoMo.ml. However, the high errors of soil moisture are often located in the North China Monsoon Region. Overall, the highly accurate estimations of both the
year-to-year and station-to-station experiments ensure the applicability of
SMCI1.0 to study the spatial–temporal patterns. As SMCI1.0 is based on in situ data, it can be a useful complement to existing model-based and satellite-based soil moisture datasets for various hydrological,
meteorological, and ecological analyses and models. The DOI link for the dataset is http://dx.doi.org/10.11888/Terre.tpdc.272415 (Shangguan et al., 2022).
Funder
National Natural Science Foundation of China National Key Research and Development Program of China
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences
Reference76 articles.
1. Albertson, J. D. and Kiely, G.: On the structure of soil moisture time
series in the context of land surface models, J. Hydrol., 243,
101–119, https://doi.org/10.1016/S0022-1694(00)00405-4, 2001. 2. Balenović, I., Marjanović, H., Vuletić, D., Paladinić, E.,
and Indir, K.: Quality assessment of high density digital surface model over
different land cover classes, Period. Biol., 117, 459–470,
https://doi.org/10.18054/pb.2015.117.4.3452, 2016. 3. Balsamo, G., Albergel, C., Beljaars, A., Boussetta, S., Brun, E., Cloke, H., Dee, D., Dutra, E., Muñoz-Sabater, J., Pappenberger, F., de Rosnay, P., Stockdale, T., and Vitart, F.: ERA-Interim/Land: a global land surface reanalysis data set, Hydrol. Earth Syst. Sci., 19, 389–407, https://doi.org/10.5194/hess-19-389-2015, 2015. 4. Baroni, G., Ortuani, B., Facchi, A., and Gandolfi, C.: The role of
vegetation and soil properties on the spatio-temporal variability of the
surface soil moisture in a maize-cropped field, J. Hydrol., 489,
148–159, https://doi.org/10.1016/j.jhydrol.2013.03.007, 2013. 5. Breiman, L.: Random Forests, Machine Learning, 45, 5–32, https://doi.org/10.1023/A:1010933404324, 2001.
Cited by
60 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|