Assessment of Artificial Intelligence Models for Estimating Lengths of Gradually Varied Flow Profiles

The study of water surface profiles is beneficial to various applications in water resources management. In this study, two artificial intelligence (AI) models named the artificial neural network (ANN) and genetic programming (GP) were employed to estimate the length of six steady GVF profiles for t...

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Main Authors: Majid Niazkar, Farshad Hajizadeh mishi, Gökçen Eryılmaz Türkkan
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/5547889
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spelling doaj-59df3c5f9276413398b34eec4ee950232021-03-22T00:04:38ZengHindawi-WileyComplexity1099-05262021-01-01202110.1155/2021/5547889Assessment of Artificial Intelligence Models for Estimating Lengths of Gradually Varied Flow ProfilesMajid Niazkar0Farshad Hajizadeh mishi1Gökçen Eryılmaz Türkkan2Department of Civil and Environmental EngineeringDepartment of Civil and Environmental EngineeringDepartment of Civil EngineeringThe study of water surface profiles is beneficial to various applications in water resources management. In this study, two artificial intelligence (AI) models named the artificial neural network (ANN) and genetic programming (GP) were employed to estimate the length of six steady GVF profiles for the first time. The AI models were trained using a database consisting of 5154 dimensionless cases. A comparison was carried out to assess the performances of the AI techniques for estimating lengths of 330 GVF profiles in both mild and steep slopes in trapezoidal channels. The corresponding GVF lengths were also calculated by 1-step, 3-step, and 5-step direct step methods for comparison purposes. Based on six metrics used for the comparative analysis, GP and the ANN improve five out of six metrics computed by the 1-step direct step method for both mild and steep slopes. Moreover, GP enhanced GVF lengths estimated by the 3-step direct step method based on three out of six accuracy indices when the channel slope is higher and lower than the critical slope. Additionally, the performances of the AI techniques were also investigated depending on comparing the water depth of each case and the corresponding normal and critical grade lines. Furthermore, the results show that the more the number of subreaches considered in the direct method, the better the results will be achieved with the compensation of much more computational efforts. The achieved improvements can be used in further studies to improve modeling water surface profiles in channel networks and hydraulic structure designs.http://dx.doi.org/10.1155/2021/5547889
collection DOAJ
language English
format Article
sources DOAJ
author Majid Niazkar
Farshad Hajizadeh mishi
Gökçen Eryılmaz Türkkan
spellingShingle Majid Niazkar
Farshad Hajizadeh mishi
Gökçen Eryılmaz Türkkan
Assessment of Artificial Intelligence Models for Estimating Lengths of Gradually Varied Flow Profiles
Complexity
author_facet Majid Niazkar
Farshad Hajizadeh mishi
Gökçen Eryılmaz Türkkan
author_sort Majid Niazkar
title Assessment of Artificial Intelligence Models for Estimating Lengths of Gradually Varied Flow Profiles
title_short Assessment of Artificial Intelligence Models for Estimating Lengths of Gradually Varied Flow Profiles
title_full Assessment of Artificial Intelligence Models for Estimating Lengths of Gradually Varied Flow Profiles
title_fullStr Assessment of Artificial Intelligence Models for Estimating Lengths of Gradually Varied Flow Profiles
title_full_unstemmed Assessment of Artificial Intelligence Models for Estimating Lengths of Gradually Varied Flow Profiles
title_sort assessment of artificial intelligence models for estimating lengths of gradually varied flow profiles
publisher Hindawi-Wiley
series Complexity
issn 1099-0526
publishDate 2021-01-01
description The study of water surface profiles is beneficial to various applications in water resources management. In this study, two artificial intelligence (AI) models named the artificial neural network (ANN) and genetic programming (GP) were employed to estimate the length of six steady GVF profiles for the first time. The AI models were trained using a database consisting of 5154 dimensionless cases. A comparison was carried out to assess the performances of the AI techniques for estimating lengths of 330 GVF profiles in both mild and steep slopes in trapezoidal channels. The corresponding GVF lengths were also calculated by 1-step, 3-step, and 5-step direct step methods for comparison purposes. Based on six metrics used for the comparative analysis, GP and the ANN improve five out of six metrics computed by the 1-step direct step method for both mild and steep slopes. Moreover, GP enhanced GVF lengths estimated by the 3-step direct step method based on three out of six accuracy indices when the channel slope is higher and lower than the critical slope. Additionally, the performances of the AI techniques were also investigated depending on comparing the water depth of each case and the corresponding normal and critical grade lines. Furthermore, the results show that the more the number of subreaches considered in the direct method, the better the results will be achieved with the compensation of much more computational efforts. The achieved improvements can be used in further studies to improve modeling water surface profiles in channel networks and hydraulic structure designs.
url http://dx.doi.org/10.1155/2021/5547889
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