Numerical Prediction Uncertainty and Data Worth Analysis of Solute Transport in an Agricultural Clay Till Setting With Preferential Flow

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Numerical Prediction Uncertainty and Data Worth Analysis of Solute Transport in an Agricultural Clay Till Setting With Preferential Flow. / Karan, Sachin; Jensen, Karsten H.; Sonnenborg, Torben O.

In: Water Resources Research, Vol. 60, No. 5, e2023WR036557, 2024.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Karan, S, Jensen, KH & Sonnenborg, TO 2024, 'Numerical Prediction Uncertainty and Data Worth Analysis of Solute Transport in an Agricultural Clay Till Setting With Preferential Flow', Water Resources Research, vol. 60, no. 5, e2023WR036557. https://doi.org/10.1029/2023WR036557

APA

Karan, S., Jensen, K. H., & Sonnenborg, T. O. (2024). Numerical Prediction Uncertainty and Data Worth Analysis of Solute Transport in an Agricultural Clay Till Setting With Preferential Flow. Water Resources Research, 60(5), [e2023WR036557]. https://doi.org/10.1029/2023WR036557

Vancouver

Karan S, Jensen KH, Sonnenborg TO. Numerical Prediction Uncertainty and Data Worth Analysis of Solute Transport in an Agricultural Clay Till Setting With Preferential Flow. Water Resources Research. 2024;60(5). e2023WR036557. https://doi.org/10.1029/2023WR036557

Author

Karan, Sachin ; Jensen, Karsten H. ; Sonnenborg, Torben O. / Numerical Prediction Uncertainty and Data Worth Analysis of Solute Transport in an Agricultural Clay Till Setting With Preferential Flow. In: Water Resources Research. 2024 ; Vol. 60, No. 5.

Bibtex

@article{279f90f0aedf4da58f83ee5b49fa9f66,
title = "Numerical Prediction Uncertainty and Data Worth Analysis of Solute Transport in an Agricultural Clay Till Setting With Preferential Flow",
abstract = "With modern agricultural practices, it is essential to quantify flow and solute transport fluxes by numerical models and associated predictions. A major challenge in modeling preferential flow settings is the ability to constrain the often numerous parameters needed to physically represent these systems. Following this, there is a lack of understanding of what parameters and observations carry the most worth for a model to reduce its prediction uncertainty. Here, first-order second moment (FOSM) analyses were used for a heavily monitored clay till field with preferential flow to investigate which parameters and observation types contribute the most to reducing the uncertainty of bromide predictions at various depths. Using a multi-objective regularized optimization approach, a 1-D preferential flow model was calibrated and subjected to FOSM analyses. Key parameters contributing to the prediction uncertainty of bromide concentrations in 0.25–3 m were limited to the lower boundary condition, the mass transfer coefficient, the hydraulic conductivity of the micro- and macropore, the macropore porosity, and the water content at wilting point. The data with the largest worth and ability to reduce the pre-calibration prediction uncertainty were concentration observations closest to the sought prediction depth, drain concentrations, and averaged water table measurements from the entire field. The post-calibration prediction uncertainty was increased primarily by removing concentration observations closest to the prediction depths. While this study provided new insights into parameter importance and data worth further research is required to understand if these findings apply broadly to clay till settings (or any soil setting) with preferential flow.",
keywords = "data worth, FOSM, parameter contribution, preferential flow modeling, uncertainty, variably saturated zone modeling",
author = "Sachin Karan and Jensen, {Karsten H.} and Sonnenborg, {Torben O.}",
note = "Publisher Copyright: {\textcopyright} 2024. The Authors.",
year = "2024",
doi = "10.1029/2023WR036557",
language = "English",
volume = "60",
journal = "Water Resources Research",
issn = "0043-1397",
publisher = "Wiley-Blackwell",
number = "5",

}

RIS

TY - JOUR

T1 - Numerical Prediction Uncertainty and Data Worth Analysis of Solute Transport in an Agricultural Clay Till Setting With Preferential Flow

AU - Karan, Sachin

AU - Jensen, Karsten H.

AU - Sonnenborg, Torben O.

N1 - Publisher Copyright: © 2024. The Authors.

PY - 2024

Y1 - 2024

N2 - With modern agricultural practices, it is essential to quantify flow and solute transport fluxes by numerical models and associated predictions. A major challenge in modeling preferential flow settings is the ability to constrain the often numerous parameters needed to physically represent these systems. Following this, there is a lack of understanding of what parameters and observations carry the most worth for a model to reduce its prediction uncertainty. Here, first-order second moment (FOSM) analyses were used for a heavily monitored clay till field with preferential flow to investigate which parameters and observation types contribute the most to reducing the uncertainty of bromide predictions at various depths. Using a multi-objective regularized optimization approach, a 1-D preferential flow model was calibrated and subjected to FOSM analyses. Key parameters contributing to the prediction uncertainty of bromide concentrations in 0.25–3 m were limited to the lower boundary condition, the mass transfer coefficient, the hydraulic conductivity of the micro- and macropore, the macropore porosity, and the water content at wilting point. The data with the largest worth and ability to reduce the pre-calibration prediction uncertainty were concentration observations closest to the sought prediction depth, drain concentrations, and averaged water table measurements from the entire field. The post-calibration prediction uncertainty was increased primarily by removing concentration observations closest to the prediction depths. While this study provided new insights into parameter importance and data worth further research is required to understand if these findings apply broadly to clay till settings (or any soil setting) with preferential flow.

AB - With modern agricultural practices, it is essential to quantify flow and solute transport fluxes by numerical models and associated predictions. A major challenge in modeling preferential flow settings is the ability to constrain the often numerous parameters needed to physically represent these systems. Following this, there is a lack of understanding of what parameters and observations carry the most worth for a model to reduce its prediction uncertainty. Here, first-order second moment (FOSM) analyses were used for a heavily monitored clay till field with preferential flow to investigate which parameters and observation types contribute the most to reducing the uncertainty of bromide predictions at various depths. Using a multi-objective regularized optimization approach, a 1-D preferential flow model was calibrated and subjected to FOSM analyses. Key parameters contributing to the prediction uncertainty of bromide concentrations in 0.25–3 m were limited to the lower boundary condition, the mass transfer coefficient, the hydraulic conductivity of the micro- and macropore, the macropore porosity, and the water content at wilting point. The data with the largest worth and ability to reduce the pre-calibration prediction uncertainty were concentration observations closest to the sought prediction depth, drain concentrations, and averaged water table measurements from the entire field. The post-calibration prediction uncertainty was increased primarily by removing concentration observations closest to the prediction depths. While this study provided new insights into parameter importance and data worth further research is required to understand if these findings apply broadly to clay till settings (or any soil setting) with preferential flow.

KW - data worth

KW - FOSM

KW - parameter contribution

KW - preferential flow modeling

KW - uncertainty

KW - variably saturated zone modeling

U2 - 10.1029/2023WR036557

DO - 10.1029/2023WR036557

M3 - Journal article

AN - SCOPUS:85191740765

VL - 60

JO - Water Resources Research

JF - Water Resources Research

SN - 0043-1397

IS - 5

M1 - e2023WR036557

ER -

ID: 395026195