River Flow Estimation from Upstream Flow Records Using Support Vector Machines
A novel architecture for flood routing model has been proposed and its efficiency is validated on several problems by employing support vector machines. The architecture is designed by including the inputs and observed and calculated outflows from the previous time step output. Whole observed data h...
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Series: | Journal of Applied Mathematics |
Online Access: | http://dx.doi.org/10.1155/2014/714213 |
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doaj-7d5861e26a4d4163bc5fbf3ca7556dbb2020-11-24T22:07:40ZengHindawi LimitedJournal of Applied Mathematics1110-757X1687-00422014-01-01201410.1155/2014/714213714213River Flow Estimation from Upstream Flow Records Using Support Vector MachinesHalil Karahan0Serdar Iplikci1Mutlu Yasar2Gurhan Gurarslan3Department of Civil Engineering, Faculty of Engineering, Pamukkale University, 20070 Denizli, TurkeyDepartment of Electrical and Electronics Engineering, Faculty of Engineering, Pamukkale University, 20070 Denizli, TurkeyDepartment of Civil Engineering, Faculty of Engineering, Pamukkale University, 20070 Denizli, TurkeyDepartment of Civil Engineering, Faculty of Engineering, Pamukkale University, 20070 Denizli, TurkeyA novel architecture for flood routing model has been proposed and its efficiency is validated on several problems by employing support vector machines. The architecture is designed by including the inputs and observed and calculated outflows from the previous time step output. Whole observed data have been used for determining the model parameters in the heuristic methods given in the literature, which constitutes the major disadvantage of the existing approaches. Moreover, using the whole data for training may lead to overtraining problem that causes overfitting of estimations and data. Therefore, in this study, 60–90% of the data are randomly selected for training and then the remaining data are used for validation. In order to take the effects of the measurement errors into consideration, the data are corrupted by some additive noise. The results show that the proposed architecture improves the model performance under noisy and missing data conditions and that support vector machines can be powerful alternative in flood routing modeling.http://dx.doi.org/10.1155/2014/714213 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Halil Karahan Serdar Iplikci Mutlu Yasar Gurhan Gurarslan |
spellingShingle |
Halil Karahan Serdar Iplikci Mutlu Yasar Gurhan Gurarslan River Flow Estimation from Upstream Flow Records Using Support Vector Machines Journal of Applied Mathematics |
author_facet |
Halil Karahan Serdar Iplikci Mutlu Yasar Gurhan Gurarslan |
author_sort |
Halil Karahan |
title |
River Flow Estimation from Upstream Flow Records Using Support Vector Machines |
title_short |
River Flow Estimation from Upstream Flow Records Using Support Vector Machines |
title_full |
River Flow Estimation from Upstream Flow Records Using Support Vector Machines |
title_fullStr |
River Flow Estimation from Upstream Flow Records Using Support Vector Machines |
title_full_unstemmed |
River Flow Estimation from Upstream Flow Records Using Support Vector Machines |
title_sort |
river flow estimation from upstream flow records using support vector machines |
publisher |
Hindawi Limited |
series |
Journal of Applied Mathematics |
issn |
1110-757X 1687-0042 |
publishDate |
2014-01-01 |
description |
A novel architecture for flood routing model has been proposed and its efficiency is validated on several problems by employing support vector machines. The architecture is designed by including the inputs and observed and calculated outflows from the previous time step output. Whole observed data have been used for determining the model parameters in the heuristic methods given in the literature, which constitutes the major disadvantage of the existing approaches. Moreover, using the whole data for training may lead to overtraining problem that causes overfitting of estimations and data. Therefore, in this study, 60–90% of the data are randomly selected for training and then the remaining data are used for validation. In order to take the effects of the measurement errors into consideration, the data are corrupted by some additive noise. The results show that the proposed architecture improves the model performance under noisy and missing data conditions and that support vector machines can be powerful alternative in flood routing modeling. |
url |
http://dx.doi.org/10.1155/2014/714213 |
work_keys_str_mv |
AT halilkarahan riverflowestimationfromupstreamflowrecordsusingsupportvectormachines AT serdariplikci riverflowestimationfromupstreamflowrecordsusingsupportvectormachines AT mutluyasar riverflowestimationfromupstreamflowrecordsusingsupportvectormachines AT gurhangurarslan riverflowestimationfromupstreamflowrecordsusingsupportvectormachines |
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