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Using neural networks to predict soil water retention and soil hydraulic conductivity
Marcel G. Schaap
, Feike J. Leij
Research output
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Contribution to journal
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Article
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peer-review
208
Scopus citations
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Keyphrases
Hydraulic Properties
100%
Neural Network
100%
Soil Hydraulic Conductivity
100%
Soil Water Retention
100%
Pedotransfer Functions
66%
Prediction Accuracy
33%
Direct Measurement
33%
Soil Properties
33%
Bulk Density
33%
Experimental Error
33%
Soil Texture
33%
Bootstrap Method
33%
Uncertainty Estimation
33%
Soil Heterogeneity
33%
Unsaturated Hydraulic Properties
33%
Texture Density
33%
Surrogate Data
33%
Agricultural and Biological Sciences
Hydraulic Conductivity
100%
Neural Network
100%
Soil Water Retention
100%
Pedotransfer Function
66%
Bulk Density
33%
Soil Property
33%
Soil Texture
33%
Soil Heterogeneity
33%