A Data-Driven Surrogate Approach for the Temporal Stability Forecasting of Vegetation Covered Dikes
Climatic conditions and vegetation cover influence water flux in a dike, and potentially the dike stability. A comprehensive numerical simulation is computationally too expensive to be used for the near real-time analysis of a dike network. Therefore, this study investigates a random forest (RF) reg...
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doaj-eec1d693111541f1ae657cb46167e3962021-01-06T00:03:14ZengMDPI AGWater2073-44412021-01-011310710710.3390/w13010107A Data-Driven Surrogate Approach for the Temporal Stability Forecasting of Vegetation Covered DikesElahe Jamalinia0Faraz S. Tehrani1Susan C. Steele-Dunne2Philip J. Vardon3Geoscience & Engineering Department, Faculty of Civil Engineering and Geosciences, Delft University of Technology, 2628 CN Delft, The NetherlandsUnit Geo-Engineering, Deltares, 2629 HV Delft, The NetherlandsGeoscience & Remote Sensing Department, Faculty of Civil Engineering and Geosciences, Delft University of Technology, 2628 CN Delft, The NetherlandsGeoscience & Engineering Department, Faculty of Civil Engineering and Geosciences, Delft University of Technology, 2628 CN Delft, The NetherlandsClimatic conditions and vegetation cover influence water flux in a dike, and potentially the dike stability. A comprehensive numerical simulation is computationally too expensive to be used for the near real-time analysis of a dike network. Therefore, this study investigates a random forest (RF) regressor to build a data-driven surrogate for a numerical model to forecast the temporal macro-stability of dikes. To that end, daily inputs and outputs of a ten-year coupled numerical simulation of an idealised dike (2009–2019) are used to create a synthetic data set, comprising features that can be observed from a dike surface, with the calculated factor of safety (FoS) as the target variable. The data set before 2018 is split into training and testing sets to build and train the RF. The predicted FoS is strongly correlated with the numerical FoS for data that belong to the test set (before 2018). However, the trained model shows lower performance for data in the evaluation set (after 2018) if further surface cracking occurs. This proof-of-concept shows that a data-driven surrogate can be used to determine dike stability for conditions similar to the training data, which could be used to identify vulnerable locations in a dike network for further examination.https://www.mdpi.com/2073-4441/13/1/107machine learningrandom forestslope stabilitynumerical simulationclimatevegetation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Elahe Jamalinia Faraz S. Tehrani Susan C. Steele-Dunne Philip J. Vardon |
spellingShingle |
Elahe Jamalinia Faraz S. Tehrani Susan C. Steele-Dunne Philip J. Vardon A Data-Driven Surrogate Approach for the Temporal Stability Forecasting of Vegetation Covered Dikes Water machine learning random forest slope stability numerical simulation climate vegetation |
author_facet |
Elahe Jamalinia Faraz S. Tehrani Susan C. Steele-Dunne Philip J. Vardon |
author_sort |
Elahe Jamalinia |
title |
A Data-Driven Surrogate Approach for the Temporal Stability Forecasting of Vegetation Covered Dikes |
title_short |
A Data-Driven Surrogate Approach for the Temporal Stability Forecasting of Vegetation Covered Dikes |
title_full |
A Data-Driven Surrogate Approach for the Temporal Stability Forecasting of Vegetation Covered Dikes |
title_fullStr |
A Data-Driven Surrogate Approach for the Temporal Stability Forecasting of Vegetation Covered Dikes |
title_full_unstemmed |
A Data-Driven Surrogate Approach for the Temporal Stability Forecasting of Vegetation Covered Dikes |
title_sort |
data-driven surrogate approach for the temporal stability forecasting of vegetation covered dikes |
publisher |
MDPI AG |
series |
Water |
issn |
2073-4441 |
publishDate |
2021-01-01 |
description |
Climatic conditions and vegetation cover influence water flux in a dike, and potentially the dike stability. A comprehensive numerical simulation is computationally too expensive to be used for the near real-time analysis of a dike network. Therefore, this study investigates a random forest (RF) regressor to build a data-driven surrogate for a numerical model to forecast the temporal macro-stability of dikes. To that end, daily inputs and outputs of a ten-year coupled numerical simulation of an idealised dike (2009–2019) are used to create a synthetic data set, comprising features that can be observed from a dike surface, with the calculated factor of safety (FoS) as the target variable. The data set before 2018 is split into training and testing sets to build and train the RF. The predicted FoS is strongly correlated with the numerical FoS for data that belong to the test set (before 2018). However, the trained model shows lower performance for data in the evaluation set (after 2018) if further surface cracking occurs. This proof-of-concept shows that a data-driven surrogate can be used to determine dike stability for conditions similar to the training data, which could be used to identify vulnerable locations in a dike network for further examination. |
topic |
machine learning random forest slope stability numerical simulation climate vegetation |
url |
https://www.mdpi.com/2073-4441/13/1/107 |
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