Reservoir Sediment Management Using Artificial Neural Networks: A Case Study of the Lower Section of the Alpine Saalach River

Reservoir sedimentation is a critical issue worldwide, resulting in reduced storage volumes and, thus, reservoir efficiency. Moreover, sedimentation can also increase the flood risk at related facilities. In some cases, drawdown flushing of the reservoir is an appropriate management tool. However, t...

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Main Authors: Markus Reisenbüchler, Minh Duc Bui, Peter Rutschmann
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Water
Subjects:
ANN
Online Access:https://www.mdpi.com/2073-4441/13/6/818
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spelling doaj-7faf0cde0d7046fa83c5154f8e5955dc2021-03-17T00:06:58ZengMDPI AGWater2073-44412021-03-011381881810.3390/w13060818Reservoir Sediment Management Using Artificial Neural Networks: A Case Study of the Lower Section of the Alpine Saalach RiverMarkus Reisenbüchler0Minh Duc Bui1Peter Rutschmann2Chair of Hydraulic and Water Resources Engineering, Technical University Munich, 80333 Munich, GermanyChair of Hydraulic and Water Resources Engineering, Technical University Munich, 80333 Munich, GermanyChair of Hydraulic and Water Resources Engineering, Technical University Munich, 80333 Munich, GermanyReservoir sedimentation is a critical issue worldwide, resulting in reduced storage volumes and, thus, reservoir efficiency. Moreover, sedimentation can also increase the flood risk at related facilities. In some cases, drawdown flushing of the reservoir is an appropriate management tool. However, there are various options as to how and when to perform such flushing, which should be optimized in order to maximize its efficiency and effectiveness. This paper proposes an innovative concept, based on an artificial neural network (ANN), to predict the volume of sediment flushed from the reservoir given distinct input parameters. The results obtained from a real-world study area indicate that there is a close correlation between the inputs—including peak discharge and duration of flushing—and the output (i.e., the volume of sediment). The developed ANN can readily be applied at the real-world study site, as a decision-support system for hydropower operators.https://www.mdpi.com/2073-4441/13/6/818reservoir flushingsedimentationartificial neural networksANNSaalach
collection DOAJ
language English
format Article
sources DOAJ
author Markus Reisenbüchler
Minh Duc Bui
Peter Rutschmann
spellingShingle Markus Reisenbüchler
Minh Duc Bui
Peter Rutschmann
Reservoir Sediment Management Using Artificial Neural Networks: A Case Study of the Lower Section of the Alpine Saalach River
Water
reservoir flushing
sedimentation
artificial neural networks
ANN
Saalach
author_facet Markus Reisenbüchler
Minh Duc Bui
Peter Rutschmann
author_sort Markus Reisenbüchler
title Reservoir Sediment Management Using Artificial Neural Networks: A Case Study of the Lower Section of the Alpine Saalach River
title_short Reservoir Sediment Management Using Artificial Neural Networks: A Case Study of the Lower Section of the Alpine Saalach River
title_full Reservoir Sediment Management Using Artificial Neural Networks: A Case Study of the Lower Section of the Alpine Saalach River
title_fullStr Reservoir Sediment Management Using Artificial Neural Networks: A Case Study of the Lower Section of the Alpine Saalach River
title_full_unstemmed Reservoir Sediment Management Using Artificial Neural Networks: A Case Study of the Lower Section of the Alpine Saalach River
title_sort reservoir sediment management using artificial neural networks: a case study of the lower section of the alpine saalach river
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2021-03-01
description Reservoir sedimentation is a critical issue worldwide, resulting in reduced storage volumes and, thus, reservoir efficiency. Moreover, sedimentation can also increase the flood risk at related facilities. In some cases, drawdown flushing of the reservoir is an appropriate management tool. However, there are various options as to how and when to perform such flushing, which should be optimized in order to maximize its efficiency and effectiveness. This paper proposes an innovative concept, based on an artificial neural network (ANN), to predict the volume of sediment flushed from the reservoir given distinct input parameters. The results obtained from a real-world study area indicate that there is a close correlation between the inputs—including peak discharge and duration of flushing—and the output (i.e., the volume of sediment). The developed ANN can readily be applied at the real-world study site, as a decision-support system for hydropower operators.
topic reservoir flushing
sedimentation
artificial neural networks
ANN
Saalach
url https://www.mdpi.com/2073-4441/13/6/818
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AT peterrutschmann reservoirsedimentmanagementusingartificialneuralnetworksacasestudyofthelowersectionofthealpinesaalachriver
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