Abstract

Abstract. Excessive sediment discharge in karstic regions can be highly disruptive to water treatment plants. It is essential for catchment stakeholders and drinking water suppliers to limit the impact of high sediment loads 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 descriptions for the modelling process, and they can be particularly complex to predict due to the non-linearity of the processes generating sediment discharge. The aim of the study was to assess the sediment discharge variability at a water treatment plant according to multiple realistic land use scenarios. To reach that goal, we developed a new cascade modelling approach with an erosion-runoff geographic information system (GIS) model (WaterSed) and a deep neural network. The model was used in the Radicatel hydrogeological catchment (106 km2 in Normandy, France), where karstic spring water is extracted to a water treatment plant. The sediment discharge was simulated for five design storms under current land use and compared to four land use scenarios (baseline, ploughing up of grassland, eco-engineering, best farming practices, and coupling of eco-engineering/best farming practices). Daily rainfall time series and WaterSed modelling outputs extracted at connected sinkholes (positive dye tracing) were used as input data for the deep neural network model. The model structure was found by a classical trial-and-error procedure, and the model was trained on 2 significant hydrologic years. Evaluation on a test set showed a good performance of the model (NSE = 0.82), and the application of a monthly backward-chaining nested cross-validation revealed that the model is able to generalize on new datasets. Simulations made for the four land use scenarios suggested that ploughing up 33 % of grasslands would increase sediment discharge at the water treatment plant by 5 % on average. By contrast, eco-engineering and best farming practices will significantly reduce sediment discharge at the water treatment plant (respectively in the ranges of 10 %–44 % and 24 %–61 %). The coupling of these two strategies is the most efficient since it affects the hydro-sedimentary production and transfer processes (decreasing sediment discharge from 40 % to 80 %). The cascade modelling approach developed in this study offers interesting opportunities for sediment discharge prediction at karstic springs or water treatment plants under multiple land use scenarios. It also provides robust decision-making tools for land use planning and drinking water suppliers.

Highlights

  • In karstic environments, erosion and runoff can lead to a high load of sediments in surface and underground streams

  • A new cascade modelling approach was developed in order to help decision-makers choose an adapted erosion and runoff management strategy to reduce the impact of sediment discharge on drinking water supply

  • The cascade model was able to generalize on unknown datasets through an adapted monthly backward-chaining nested cross-validation procedure, and the cascade model was efficient at simulating extreme events

Read more

Summary

Introduction

Erosion and runoff can lead to a high load of sediments in surface and underground streams. As initiated by Mangin (1984), karst can be considered a system able to transform an input (rainfall) into an output (discharge), and the input–output relation can be evaluated using mathematical functions This approach can be considered a “blackbox” model to some extent, and recent research emphasized the advantages of using data-driven techniques, such as deep neural networks (DNNs) in similar situations (Yaseen et al, 2015; Kratzert et al, 2018, 2019). The main objectives of this study were (i) to develop a cascade modelling approach able to simulate hydro-sedimentary transfer at a WTP for specific daily rainfall events and (ii) to evaluate the impact of different land use scenarios on the SD variability. The cascade modelling approach was applied to multiple design storms (DS) under different scenarios in order to simulate hydro-sedimentary transfer in the hydrogeological catchment and evaluate the efficiency of different land use management strategies

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call