2017
DOI: 10.5194/essd-9-529-2017
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A global data set of soil hydraulic properties and sub-grid variability of soil water retention and hydraulic conductivity curves

Abstract: Abstract. Agroecosystem models, regional and global climate models, and numerical weather prediction models require adequate parameterization of soil hydraulic properties. These properties are fundamental for describing and predicting water and energy exchange processes at the transition zone between solid earth and atmosphere, and regulate evapotranspiration, infiltration and runoff generation. Hydraulic parameters describing the soil water retention (WRC) and hydraulic conductivity (HCC) curves are typically… Show more

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Cited by 123 publications
(97 citation statements)
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“…These general patterns intensify with increasing θ. The overall patterns of sub-grid soil moisture standard deviation shown in Figure 3 are well-comparable with the results of other methods to identify sub-grid variability, such as the Miller-Miller scaling approach of Montzka et al [118].…”
Section: Discussion Of Global Heterogeneity Mapssupporting
confidence: 81%
“…These general patterns intensify with increasing θ. The overall patterns of sub-grid soil moisture standard deviation shown in Figure 3 are well-comparable with the results of other methods to identify sub-grid variability, such as the Miller-Miller scaling approach of Montzka et al [118].…”
Section: Discussion Of Global Heterogeneity Mapssupporting
confidence: 81%
“…Second, to implement this SSM model for irrigation scheduling whereby SSM measurements from sparse soil moisture measurements are available in the field (e.g., [65]), process models are required to forecast soil water storage and movement within the root-zone (e.g., [66,67]). This can be achieved by assimilating VWC measurements at multiple depths from soil moisture probes with mechanistic models using ensemble Kalman filtering (e.g., [68,69]).…”
Section: Limitations Of the Empirical Ssm Retrieval Modelsmentioning
confidence: 99%
“…Using Markov chain Monte Carlo techniques, the BNN provides a distribution of the output parameter instead of a single deterministic value. Recently, Montzka et al (2017) used PTFs to derive the effective spatial distribution of scaling factors and the mean soil hydraulic properties that can be used in LSMs to quantify the effect of spatial variability on infiltration fluxes.…”
Section: Machine Learning Based Upscalingmentioning
confidence: 99%