Aarhus Universitets segl

Use of machine learning for drain flows predictions in tile-drained agricultural areas

Publikation: KonferencebidragKonferenceabstrakt til konferenceForskningpeer review

Standard

Use of machine learning for drain flows predictions in tile-drained agricultural areas. / Mahmood, Hafsa; Ferre, Ty; Frederiksen, Rasmus Rumph et al.
2023. Abstract fra European Geosciences Union EGU2023, General Assembly 2023, Wien, Østrig.

Publikation: KonferencebidragKonferenceabstrakt til konferenceForskningpeer review

Harvard

Mahmood, H, Ferre, T, Frederiksen, RR, Schneider, R, Stisen, S & Christiansen, AV 2023, 'Use of machine learning for drain flows predictions in tile-drained agricultural areas', European Geosciences Union EGU2023, General Assembly 2023, Wien, Østrig, 23/04/2023 - 28/04/2023. <https://doi.org/10.5194/egusphere-egu23-8608, 2023.>

APA

Mahmood, H., Ferre, T., Frederiksen, R. R., Schneider, R., Stisen, S., & Christiansen, A. V. (2023). Use of machine learning for drain flows predictions in tile-drained agricultural areas. Abstract fra European Geosciences Union EGU2023, General Assembly 2023, Wien, Østrig. https://doi.org/10.5194/egusphere-egu23-8608, 2023.

CBE

Mahmood H, Ferre T, Frederiksen RR, Schneider R, Stisen S, Christiansen AV. 2023. Use of machine learning for drain flows predictions in tile-drained agricultural areas. Abstract fra European Geosciences Union EGU2023, General Assembly 2023, Wien, Østrig.

MLA

Mahmood, Hafsa et al. Use of machine learning for drain flows predictions in tile-drained agricultural areas. European Geosciences Union EGU2023, General Assembly 2023, 23 apr. 2023, Wien, Østrig, Konferenceabstrakt til konference, 2023.

Vancouver

Mahmood H, Ferre T, Frederiksen RR, Schneider R, Stisen S, Christiansen AV. Use of machine learning for drain flows predictions in tile-drained agricultural areas. 2023. Abstract fra European Geosciences Union EGU2023, General Assembly 2023, Wien, Østrig.

Author

Mahmood, Hafsa ; Ferre, Ty ; Frederiksen, Rasmus Rumph et al. / Use of machine learning for drain flows predictions in tile-drained agricultural areas. Abstract fra European Geosciences Union EGU2023, General Assembly 2023, Wien, Østrig.

Bibtex

@conference{c21df72c1eee4097a9407898cbdf85a8,
title = "Use of machine learning for drain flows predictions in tile-drained agricultural areas",
abstract = "Temporal drain flow dynamics and their underlying controlling factors are important for understanding the needs for water resource management in tile drained agricultural areas. The use of physics-based water flow models to understand tile drained systems is quite common. These physics-based models are complex and have high computational demand due to the high spatial and temporal dimensionality of the problem. We examine whether machine learning (ML) models can offer a simpler tool for water management. The main aim of our study is to assess the potential of ML tools for predicting drain flow with varying climate parameters and hydrogeological properties in different catchments in Denmark. We rely on unique data containing time series of daily drain flow in 26 field-scale tile drained catchments in Denmark: climate data (precipitation, potential evapotranspiration, temperature); geological properties (clay fraction, first sand layer thickness, first clay layer thickness); and topographical indexes (curvature, topographical wetness indexes, topographical position index, elevation etc.). The ML algorithm XGBoost is used to predict drain flow in the 26 drain catchments based on both static and dynamic variables. This algorithm also provides an independent measure of the value of information contained in variables related to climate, geology and topography for the prediction of tile drain flows. The ML approach examined could provide a more transferable, faster, and less computationally expensive tool to predict drain flow dynamics. Simultaneously, the results of the study offer insight into the underlying factors that control drain flow, allowing for improved data collection and physics-based model development",
author = "Hafsa Mahmood and Ty Ferre and Frederiksen, {Rasmus Rumph} and Raphael Schneider and Simon Stisen and Christiansen, {Anders Vest}",
year = "2023",
month = apr,
day = "26",
language = "English",
note = "European Geosciences Union EGU2023, General Assembly 2023 ; Conference date: 23-04-2023 Through 28-04-2023",
url = "https://egu23.eu/about/general_information.html",

}

RIS

TY - ABST

T1 - Use of machine learning for drain flows predictions in tile-drained agricultural areas

AU - Mahmood, Hafsa

AU - Ferre, Ty

AU - Frederiksen, Rasmus Rumph

AU - Schneider, Raphael

AU - Stisen, Simon

AU - Christiansen, Anders Vest

PY - 2023/4/26

Y1 - 2023/4/26

N2 - Temporal drain flow dynamics and their underlying controlling factors are important for understanding the needs for water resource management in tile drained agricultural areas. The use of physics-based water flow models to understand tile drained systems is quite common. These physics-based models are complex and have high computational demand due to the high spatial and temporal dimensionality of the problem. We examine whether machine learning (ML) models can offer a simpler tool for water management. The main aim of our study is to assess the potential of ML tools for predicting drain flow with varying climate parameters and hydrogeological properties in different catchments in Denmark. We rely on unique data containing time series of daily drain flow in 26 field-scale tile drained catchments in Denmark: climate data (precipitation, potential evapotranspiration, temperature); geological properties (clay fraction, first sand layer thickness, first clay layer thickness); and topographical indexes (curvature, topographical wetness indexes, topographical position index, elevation etc.). The ML algorithm XGBoost is used to predict drain flow in the 26 drain catchments based on both static and dynamic variables. This algorithm also provides an independent measure of the value of information contained in variables related to climate, geology and topography for the prediction of tile drain flows. The ML approach examined could provide a more transferable, faster, and less computationally expensive tool to predict drain flow dynamics. Simultaneously, the results of the study offer insight into the underlying factors that control drain flow, allowing for improved data collection and physics-based model development

AB - Temporal drain flow dynamics and their underlying controlling factors are important for understanding the needs for water resource management in tile drained agricultural areas. The use of physics-based water flow models to understand tile drained systems is quite common. These physics-based models are complex and have high computational demand due to the high spatial and temporal dimensionality of the problem. We examine whether machine learning (ML) models can offer a simpler tool for water management. The main aim of our study is to assess the potential of ML tools for predicting drain flow with varying climate parameters and hydrogeological properties in different catchments in Denmark. We rely on unique data containing time series of daily drain flow in 26 field-scale tile drained catchments in Denmark: climate data (precipitation, potential evapotranspiration, temperature); geological properties (clay fraction, first sand layer thickness, first clay layer thickness); and topographical indexes (curvature, topographical wetness indexes, topographical position index, elevation etc.). The ML algorithm XGBoost is used to predict drain flow in the 26 drain catchments based on both static and dynamic variables. This algorithm also provides an independent measure of the value of information contained in variables related to climate, geology and topography for the prediction of tile drain flows. The ML approach examined could provide a more transferable, faster, and less computationally expensive tool to predict drain flow dynamics. Simultaneously, the results of the study offer insight into the underlying factors that control drain flow, allowing for improved data collection and physics-based model development

M3 - Conference abstract for conference

T2 - European Geosciences Union EGU2023, General Assembly 2023

Y2 - 23 April 2023 through 28 April 2023

ER -