Prediction of local scour around bridge piers: artificial-intelligence-based modeling versus conventional regression methods

Abstract This paper presents the use of two artificial intelligence modeling methods, namely genetic programming (GP) and adaptive neuro-fuzzy inference system (ANFIS), to predict pier scour depth based on clear water conditions of 320 data sets of laboratory and field data measurements. The scour d...

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Main Author: Reda Abd El-Hady Rady
Format: Article
Language:English
Published: SpringerOpen 2020-01-01
Series:Applied Water Science
Subjects:
Online Access:https://doi.org/10.1007/s13201-020-1140-4
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spelling doaj-188d7e1a1ca249d48204abf11ecca1f92021-01-17T12:54:52ZengSpringerOpenApplied Water Science2190-54872190-54952020-01-0110211110.1007/s13201-020-1140-4Prediction of local scour around bridge piers: artificial-intelligence-based modeling versus conventional regression methodsReda Abd El-Hady Rady0Hydraulics Research Institute, National Water Research CenterAbstract This paper presents the use of two artificial intelligence modeling methods, namely genetic programming (GP) and adaptive neuro-fuzzy inference system (ANFIS), to predict pier scour depth based on clear water conditions of 320 data sets of laboratory and field data measurements. The scour depth was modeled as a function of five main dimensionless parameters: pier width, approaching flow depth, Froude number, standard deviation of grain size distribution, and channel open ratio. A functional relationship was established using the trained GP model, and its performance was verified by comparing the results with those obtained by the ANFIS model and seven conventional regression-based formulas. Numerical tests indicated that the GP model yielded much superior agreement than the ANFIS model or any other empirical equation. The advantage of the GP model was confirmed by applying the derived GP equation to predict the scour depth around the piers of Imbaba Bridge, Egypt.https://doi.org/10.1007/s13201-020-1140-4Local scour depthGenetic programmingAdaptive neuro-fuzzyRegression methodsBridge piers
collection DOAJ
language English
format Article
sources DOAJ
author Reda Abd El-Hady Rady
spellingShingle Reda Abd El-Hady Rady
Prediction of local scour around bridge piers: artificial-intelligence-based modeling versus conventional regression methods
Applied Water Science
Local scour depth
Genetic programming
Adaptive neuro-fuzzy
Regression methods
Bridge piers
author_facet Reda Abd El-Hady Rady
author_sort Reda Abd El-Hady Rady
title Prediction of local scour around bridge piers: artificial-intelligence-based modeling versus conventional regression methods
title_short Prediction of local scour around bridge piers: artificial-intelligence-based modeling versus conventional regression methods
title_full Prediction of local scour around bridge piers: artificial-intelligence-based modeling versus conventional regression methods
title_fullStr Prediction of local scour around bridge piers: artificial-intelligence-based modeling versus conventional regression methods
title_full_unstemmed Prediction of local scour around bridge piers: artificial-intelligence-based modeling versus conventional regression methods
title_sort prediction of local scour around bridge piers: artificial-intelligence-based modeling versus conventional regression methods
publisher SpringerOpen
series Applied Water Science
issn 2190-5487
2190-5495
publishDate 2020-01-01
description Abstract This paper presents the use of two artificial intelligence modeling methods, namely genetic programming (GP) and adaptive neuro-fuzzy inference system (ANFIS), to predict pier scour depth based on clear water conditions of 320 data sets of laboratory and field data measurements. The scour depth was modeled as a function of five main dimensionless parameters: pier width, approaching flow depth, Froude number, standard deviation of grain size distribution, and channel open ratio. A functional relationship was established using the trained GP model, and its performance was verified by comparing the results with those obtained by the ANFIS model and seven conventional regression-based formulas. Numerical tests indicated that the GP model yielded much superior agreement than the ANFIS model or any other empirical equation. The advantage of the GP model was confirmed by applying the derived GP equation to predict the scour depth around the piers of Imbaba Bridge, Egypt.
topic Local scour depth
Genetic programming
Adaptive neuro-fuzzy
Regression methods
Bridge piers
url https://doi.org/10.1007/s13201-020-1140-4
work_keys_str_mv AT redaabdelhadyrady predictionoflocalscouraroundbridgepiersartificialintelligencebasedmodelingversusconventionalregressionmethods
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