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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Main Authors: Carlos A. Oroza, Roger C. Bales, Erin M. Stacy, Zeshi Zheng, Steven D. Glaser
Format: Article
Language:English
Published: Wiley 2018-07-01
Series:Vadose Zone Journal
Online Access:https://dl.sciencesocieties.org/publications/vzj/articles/17/1/170178
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spelling 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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