Long-Term Variability of Soil Moisture in the Southern Sierra: Measurement and Prediction
Using 6 yr (Water Year [WY] 2009–WY 2014) of hourly in situ measurements from a spatially distributed water-balance cluster, we quantified the long-term accuracy of an algorithm used to predict spatial patterns of depth-integrated soil-water storage within the rain–snow transition zone of the southe...
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Series: | Vadose Zone Journal |
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doaj-3bcaf71627564b4db72fd230f1533e9f2020-11-25T03:10:12ZengWileyVadose Zone Journal1539-16632018-07-0117110.2136/vzj2017.10.0178Long-Term Variability of Soil Moisture in the Southern Sierra: Measurement and PredictionCarlos A. OrozaRoger C. BalesErin M. StacyZeshi ZhengSteven D. GlaserUsing 6 yr (Water Year [WY] 2009–WY 2014) of hourly in situ measurements from a spatially distributed water-balance cluster, we quantified the long-term accuracy of an algorithm used to predict spatial patterns of depth-integrated soil-water storage within the rain–snow transition zone of the southern Sierra Nevada. The algorithm—the multivariate, non-parametric regression-tree estimator Random Forest—was used to predict soil-water storage based on a combination of attributes at each instrument cluster (soil texture, topographic wetness index, elevation, northness, and canopy cover). Out-of-bag (similar to cross-validation for Random Forest) was used to quantify the accuracy of the estimator for unobserved data. Accuracy was consistently high during the wet-up, snow-cover, and early recession periods of average and wet years. The accuracy declined at the end of a 3-yr dry period, and the relative rank of the independent variables in the model shifted. Soil texture was the highest-ranked independent variable across all years, followed by elevation and northness. Topographic wetness increased in importance during dry periods. Northness exhibited high importance during the wet-up and early recession periods of most water years. During dry years, the importance of elevation declined. In dry years, notable differences in soil-water storage at each depth include lower-than-average storage in the deeper regolith at the beginning of the water year and lower storage in near-surface layers during the winter resulting from transient snow cover.https://dl.sciencesocieties.org/publications/vzj/articles/17/1/170178 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Carlos A. Oroza Roger C. Bales Erin M. Stacy Zeshi Zheng Steven D. Glaser |
spellingShingle |
Carlos A. Oroza Roger C. Bales Erin M. Stacy Zeshi Zheng Steven D. Glaser Long-Term Variability of Soil Moisture in the Southern Sierra: Measurement and Prediction Vadose Zone Journal |
author_facet |
Carlos A. Oroza Roger C. Bales Erin M. Stacy Zeshi Zheng Steven D. Glaser |
author_sort |
Carlos A. Oroza |
title |
Long-Term Variability of Soil Moisture in the Southern Sierra: Measurement and Prediction |
title_short |
Long-Term Variability of Soil Moisture in the Southern Sierra: Measurement and Prediction |
title_full |
Long-Term Variability of Soil Moisture in the Southern Sierra: Measurement and Prediction |
title_fullStr |
Long-Term Variability of Soil Moisture in the Southern Sierra: Measurement and Prediction |
title_full_unstemmed |
Long-Term Variability of Soil Moisture in the Southern Sierra: Measurement and Prediction |
title_sort |
long-term variability of soil moisture in the southern sierra: measurement and prediction |
publisher |
Wiley |
series |
Vadose Zone Journal |
issn |
1539-1663 |
publishDate |
2018-07-01 |
description |
Using 6 yr (Water Year [WY] 2009–WY 2014) of hourly in situ measurements from a spatially distributed water-balance cluster, we quantified the long-term accuracy of an algorithm used to predict spatial patterns of depth-integrated soil-water storage within the rain–snow transition zone of the southern Sierra Nevada. The algorithm—the multivariate, non-parametric regression-tree estimator Random Forest—was used to predict soil-water storage based on a combination of attributes at each instrument cluster (soil texture, topographic wetness index, elevation, northness, and canopy cover). Out-of-bag (similar to cross-validation for Random Forest) was used to quantify the accuracy of the estimator for unobserved data. Accuracy was consistently high during the wet-up, snow-cover, and early recession periods of average and wet years. The accuracy declined at the end of a 3-yr dry period, and the relative rank of the independent variables in the model shifted. Soil texture was the highest-ranked independent variable across all years, followed by elevation and northness. Topographic wetness increased in importance during dry periods. Northness exhibited high importance during the wet-up and early recession periods of most water years. During dry years, the importance of elevation declined. In dry years, notable differences in soil-water storage at each depth include lower-than-average storage in the deeper regolith at the beginning of the water year and lower storage in near-surface layers during the winter resulting from transient snow cover. |
url |
https://dl.sciencesocieties.org/publications/vzj/articles/17/1/170178 |
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