Determination Of Flow Resistance Coefficient Using Multiple Linear Regression And Genetic Expression Programming

The use of the accurate value of the roughness coefficient for flow resistance in the open channel is a necessity in computation. The engineers have used a number of flow resistance equations involving grain roughness, form roughness and a combination of both. However, Manning’s equation has been wi...

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Main Author: Abdul Ghaffar, Ahmad Bakri
Format: Thesis
Language:English
Published: 2019
Subjects:
Online Access:http://eprints.usm.my/48561/
http://eprints.usm.my/48561/1/Determination%20Of%20Flow%20Resistance%20Coefficient%20Using%20Multiple%20Linear%20Regression%20And%20Genetic%20Expression%20Programming.pdf
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author Abdul Ghaffar, Ahmad Bakri
author_facet Abdul Ghaffar, Ahmad Bakri
author_sort Abdul Ghaffar, Ahmad Bakri
building USM Institutional Repository
collection Online Access
description The use of the accurate value of the roughness coefficient for flow resistance in the open channel is a necessity in computation. The engineers have used a number of flow resistance equations involving grain roughness, form roughness and a combination of both. However, Manning’s equation has been widely used internationally for predicting roughness values in natural channels. In river engineering, Manning’s roughness coefficient, n, has been used widely in river hydraulic models. The procedure for selecting n is subjective and requires judgment and skill that is developed primarily through experience apart from knowing the factors which affect the values of n. Since flow and boundary roughness vary with existing river conditions, a model of some form must be developed to evaluate n for rivers in Malaysia. This research has been carried out on four rivers namely the river basins of Kinta River, Langat River, Muda River, and Kurau River. A total of 501 data have been collected at the four-river basin. Assessment of the existing equations i.e. Strickler, Limerinos, Bruschin, Griffith, Bray, Jarrett, Julien, and Ab. Ghani was carried out. Based on the evaluation of the selected equations, Jarret (1984) and Ab Ghani et al. (2007) equation are recommended to predict flow discharge for the sandy rivers such as Kinta River and Langat River. For gravel rivers such as Muda River and Kurau River, Jarret (1984), Bruschin (1985) and Limerinos (1970) equation are recommended to predict flow discharge. The development of new equations was carried out in the present study using Multiple Linear Regression (MLR) and Genetic. Expression Programming (GEP). The MLR-based equation (Equation 4.4) is recommended while GEP-based equation (Equation 4.6) is greatly recommended. The development of flow rating curve for the rivers in the present study (Figures 4.16 to 4.19) validate the applicability of Equations 4.4 and 4.6 in calculating the flow discharge which can be used to predict low and high flows for rivers in Malaysia.
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spelling usm-485612021-11-17T03:42:11Z http://eprints.usm.my/48561/ Determination Of Flow Resistance Coefficient Using Multiple Linear Regression And Genetic Expression Programming Abdul Ghaffar, Ahmad Bakri T Technology TC401-506 River, lake, and water-supply engineering (General) The use of the accurate value of the roughness coefficient for flow resistance in the open channel is a necessity in computation. The engineers have used a number of flow resistance equations involving grain roughness, form roughness and a combination of both. However, Manning’s equation has been widely used internationally for predicting roughness values in natural channels. In river engineering, Manning’s roughness coefficient, n, has been used widely in river hydraulic models. The procedure for selecting n is subjective and requires judgment and skill that is developed primarily through experience apart from knowing the factors which affect the values of n. Since flow and boundary roughness vary with existing river conditions, a model of some form must be developed to evaluate n for rivers in Malaysia. This research has been carried out on four rivers namely the river basins of Kinta River, Langat River, Muda River, and Kurau River. A total of 501 data have been collected at the four-river basin. Assessment of the existing equations i.e. Strickler, Limerinos, Bruschin, Griffith, Bray, Jarrett, Julien, and Ab. Ghani was carried out. Based on the evaluation of the selected equations, Jarret (1984) and Ab Ghani et al. (2007) equation are recommended to predict flow discharge for the sandy rivers such as Kinta River and Langat River. For gravel rivers such as Muda River and Kurau River, Jarret (1984), Bruschin (1985) and Limerinos (1970) equation are recommended to predict flow discharge. The development of new equations was carried out in the present study using Multiple Linear Regression (MLR) and Genetic. Expression Programming (GEP). The MLR-based equation (Equation 4.4) is recommended while GEP-based equation (Equation 4.6) is greatly recommended. The development of flow rating curve for the rivers in the present study (Figures 4.16 to 4.19) validate the applicability of Equations 4.4 and 4.6 in calculating the flow discharge which can be used to predict low and high flows for rivers in Malaysia. 2019-07-01 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/48561/1/Determination%20Of%20Flow%20Resistance%20Coefficient%20Using%20Multiple%20Linear%20Regression%20And%20Genetic%20Expression%20Programming.pdf Abdul Ghaffar, Ahmad Bakri (2019) Determination Of Flow Resistance Coefficient Using Multiple Linear Regression And Genetic Expression Programming. PhD thesis, Universiti Sains Malaysia.
spellingShingle T Technology
TC401-506 River, lake, and water-supply engineering (General)
Abdul Ghaffar, Ahmad Bakri
Determination Of Flow Resistance Coefficient Using Multiple Linear Regression And Genetic Expression Programming
title Determination Of Flow Resistance Coefficient Using Multiple Linear Regression And Genetic Expression Programming
title_full Determination Of Flow Resistance Coefficient Using Multiple Linear Regression And Genetic Expression Programming
title_fullStr Determination Of Flow Resistance Coefficient Using Multiple Linear Regression And Genetic Expression Programming
title_full_unstemmed Determination Of Flow Resistance Coefficient Using Multiple Linear Regression And Genetic Expression Programming
title_short Determination Of Flow Resistance Coefficient Using Multiple Linear Regression And Genetic Expression Programming
title_sort determination of flow resistance coefficient using multiple linear regression and genetic expression programming
topic T Technology
TC401-506 River, lake, and water-supply engineering (General)
url http://eprints.usm.my/48561/
http://eprints.usm.my/48561/1/Determination%20Of%20Flow%20Resistance%20Coefficient%20Using%20Multiple%20Linear%20Regression%20And%20Genetic%20Expression%20Programming.pdf