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Erschienen in: Engineering with Computers 3/2021

08.01.2020 | Original Article

Long short-term memory for predicting daily suspended sediment concentration

verfasst von: Keivan Kaveh, Hamid Kaveh, Minh Duc Bui, Peter Rutschmann

Erschienen in: Engineering with Computers | Ausgabe 3/2021

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Abstract

Frequent and accurate estimation of suspended sediment concentration (SSC) in surface waters and hydraulic schemes is of prime importance for proper design, operation and management of many hydraulic projects. in the present study, a long short-term memory (LSTM) was considered for predicting daily suspended sediment concentration in a river. The LSTM extends recurrent neural network with memory cells, instead of recurrent units, to store and output information, easing the learning of temporal relationships on long time scales. To build the model, daily observed time series of river discharge (Q) and SSC in the Schuylkill River in the United States were used. The results of the proposed model were evaluated and compared with the feedforward neural network and the adaptive neuro fuzzy inference system models which were trained using three different learning algorithms and widely used in the literature for prediction of daily SSC. The comparison of prediction accuracy of the models demonstrated that the LSTM model could satisfactory predict SSC time series, and adequately estimate cumulative suspended sediment load (SSL).

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Metadaten
Titel
Long short-term memory for predicting daily suspended sediment concentration
verfasst von
Keivan Kaveh
Hamid Kaveh
Minh Duc Bui
Peter Rutschmann
Publikationsdatum
08.01.2020
Verlag
Springer London
Erschienen in
Engineering with Computers / Ausgabe 3/2021
Print ISSN: 0177-0667
Elektronische ISSN: 1435-5663
DOI
https://doi.org/10.1007/s00366-019-00921-y

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