Mapping soil hydraulic properties using random-forest-based pedotransfer functions and geostatistics
-
Published:2019-06-18
Issue:6
Volume:23
Page:2615-2635
-
ISSN:1607-7938
-
Container-title:Hydrology and Earth System Sciences
-
language:en
-
Short-container-title:Hydrol. Earth Syst. Sci.
Author:
Szabó BrigittaORCID, Szatmári GáborORCID, Takács KatalinORCID, Laborczi Annamária, Makó András, Rajkai Kálmán, Pásztor LászlóORCID
Abstract
Abstract. Spatial 3-D information on soil hydraulic properties for
areas larger than plot scale is usually derived using indirect methods such
as pedotransfer functions (PTFs) due to the lack of measured information on
them. PTFs describe the relationship between the desired soil hydraulic
parameter and easily available soil properties based on a soil hydraulic
reference dataset. Soil hydraulic properties of a catchment or region can be
calculated by applying PTFs on available soil maps. Our aim was to analyse
the performance of (i) indirect (using PTFs) and (ii) direct
(geostatistical) mapping methods to derive 3-D soil hydraulic properties. The
study was performed on the Balaton catchment area in Hungary, where density
of measured soil hydraulic data fulfils the requirements of geostatistical
methods. Maps of saturated water content (0 cm matric potential), field
capacity (−330 cm matric potential) and wilting point (−15 000 cm matric
potential) for 0–30, 30–60 and 60–90 cm soil depth were prepared. PTFs were
derived using the random forest method on the whole Hungarian soil hydraulic
dataset, which includes soil chemical, physical, taxonomical and hydraulic
properties of some 12 000 samples complemented with information on
topography, climate, parent material, vegetation and land use. As a direct and thus geostatistical method, random forest combined with kriging (RFK) was
applied to 359 soil profiles located in the Balaton catchment area. There
were no significant differences between the direct and indirect methods in
six out of nine maps having root-mean-square-error values between 0.052 and
0.074 cm3 cm−3, which is in accordance with the internationally
accepted performance of hydraulic PTFs. The PTF-based mapping method
performed significantly better than the RFK for the saturated water content
at 30–60 and 60–90 cm soil depth; in the case of wilting point the RFK
outperformed the PTFs at 60–90 cm depth. Differences between the PTF-based
and RFK mapped values are less than 0.025 cm3 cm−3 for 65 %–86 %
of the catchment. In RFK, the uncertainty of input environmental covariate
layers is less influential on the mapped values, which is preferable. In the
PTF-based method the uncertainty of mapping soil hydraulic properties is
less computationally intensive. Detailed comparisons of maps derived from the
PTF-based method and the RFK are presented in this paper.
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences,General Engineering,General Environmental Science
Reference93 articles.
1. Adhikari, K., Hartemink, A. E., Minasny, B., Bou Kheir, R., Greve, M. B., and
Greve, M. H.: Digital mapping of soil organic carbon contents and stocks in
Denmark, PLoS One, 9, e105519, https://doi.org/10.1371/journal.pone.0105519, 2014. 2. Ahuja, L. R., Naney, J. W., and Williams, R. D.: Estimating soil water
characteristics from simpler properties or limited data, Soil Sci. Soc. Am.
J., 49, 1100–1105, https://doi.org/10.2136/sssaj1985.03615995004900050005x, 1985. 3. Baker, L. and Ellison, D.: Optimisation of pedotransfer functions using an
artificial neural network ensemble method, Geoderma, 144, 212–224,
https://doi.org/10.1016/j.geoderma.2007.11.016, 2008. 4. Bashfield, A. and Keim, A.: Continent-wide DEM Creation for the European
Union, in 34th International Symposium on Remote Sensing of Environment –
The GEOSS Era: Towards Operational Environmental Monitoring, available at: http://www.isprs.org/proceedings/2011/isrse-34/211104015Final00143.pdf (last access: 27 September 2018),
2011. 5. Behrens, T., Schmidt, K., Viscarra Rossel, R. A., Gries, P., Scholten, T.,
and MacMillan, R. A.: Spatial modelling with Euclidean distance fields and
machine learning, Eur. J. Soil Sci., 69, 757–770,
https://doi.org/10.1111/ejss.12687, 2018.
Cited by
73 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
|
|