2020
DOI: 10.5194/hess-2020-363
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Predicting Sediment Discharge at Water Treatment Plant Under Different Land Use Scenarios Coupling Expert-Based GIS Model and Deep Neural Network

Abstract: Abstract. Excessive sediment discharge at karstic springs and thus, water treatment plants, can be highly disruptive. It is essential for catchment stakeholders and drinking water supplier to reduce the impact of sediment on potable water supply, but their strategic choices must be based on simulations, integrating surface and groundwater transfers, and taking into account possible changes in land use. Karstic environments are particularly challenging as they face a lack of accurate physical description for th… Show more

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“…The goal of this approach was to parameterize an erosion model, that considers soil surface and land use characteristics, to provide a dynamic indicative of the catchments' erosion sensitivity in response to a storm rainfall event. Therefore, we chose the raster-based, spatially distributed and event-based WaterSed model (Patault et al 2020;Grangeon et al 2021). It was developed to model the spatial distribution of runoff and erosion from field to catchment scale.…”
Section: Soil Erosion Modelingmentioning
confidence: 99%
“…The goal of this approach was to parameterize an erosion model, that considers soil surface and land use characteristics, to provide a dynamic indicative of the catchments' erosion sensitivity in response to a storm rainfall event. Therefore, we chose the raster-based, spatially distributed and event-based WaterSed model (Patault et al 2020;Grangeon et al 2021). It was developed to model the spatial distribution of runoff and erosion from field to catchment scale.…”
Section: Soil Erosion Modelingmentioning
confidence: 99%