Performance Evaluation of CFRP Reinforced Concrete Members Utilizing Fuzzy Technique

Abstract Aging and structural deterioration under severe environments are major causes of damage in reinforced concrete (RC) structures, such as buildings and bridges. Degradations such as concrete cracks, corrosion of steel, and deformation of structural members can significantly degrade the struct...

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Main Authors: Lan Chung, Moo-Won Hur, Taewon Park
Format: Article
Language:English
Published: SpringerOpen 2018-12-01
Series:International Journal of Concrete Structures and Materials
Subjects:
Online Access:http://link.springer.com/article/10.1186/s40069-018-0313-0
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spelling doaj-a7bf98328f2a45ceaad397d809e783e82020-11-25T03:30:34ZengSpringerOpenInternational Journal of Concrete Structures and Materials1976-04852234-13152018-12-0112111110.1186/s40069-018-0313-0Performance Evaluation of CFRP Reinforced Concrete Members Utilizing Fuzzy TechniqueLan Chung0Moo-Won Hur1Taewon Park2Department of Architectural Engineering, Dankook UniversityDepartment of Architectural Engineering, Dankook UniversityDepartment of Architectural Engineering, Dankook UniversityAbstract Aging and structural deterioration under severe environments are major causes of damage in reinforced concrete (RC) structures, such as buildings and bridges. Degradations such as concrete cracks, corrosion of steel, and deformation of structural members can significantly degrade the structural performance and safety. Therefore, effective and easy-to-use methods are desired for repairing and strengthening such concrete structures. Various methods for the strengthening and rehabilitation of RC structures have been developed over the past several decades. Recently, FRP composite materials have emerged as a cost-effective alternative to conventional materials for repairing, strengthening, and retrofitting deteriorating/deficient concrete structures, by externally bonding FRP laminates to concrete structural members. The main purpose of this study is to investigate the effectiveness of the FRP retrofit for circular type concrete columns under the framework of the  adaptive neuro-fuzzy inference system (ANFIS). Retrofit ratio, strength of existing concrete, thickness, number of layer, stiffness, ultimate strength of fiber, and size of specimens are used as input parameters to predict strength, strain, and stiffness of the post-yielding modulus. These proposed ANFIS models show reliable increased accuracy in predicting the constitutive properties of concrete retrofitted by FRP, compared to the constitutive models suggested by other researchers.http://link.springer.com/article/10.1186/s40069-018-0313-0adaptive neuro-fuzzy inference systemFRP retrofittingcompressive concrete strengthstrain2nd elastic modulus
collection DOAJ
language English
format Article
sources DOAJ
author Lan Chung
Moo-Won Hur
Taewon Park
spellingShingle Lan Chung
Moo-Won Hur
Taewon Park
Performance Evaluation of CFRP Reinforced Concrete Members Utilizing Fuzzy Technique
International Journal of Concrete Structures and Materials
adaptive neuro-fuzzy inference system
FRP retrofitting
compressive concrete strength
strain
2nd elastic modulus
author_facet Lan Chung
Moo-Won Hur
Taewon Park
author_sort Lan Chung
title Performance Evaluation of CFRP Reinforced Concrete Members Utilizing Fuzzy Technique
title_short Performance Evaluation of CFRP Reinforced Concrete Members Utilizing Fuzzy Technique
title_full Performance Evaluation of CFRP Reinforced Concrete Members Utilizing Fuzzy Technique
title_fullStr Performance Evaluation of CFRP Reinforced Concrete Members Utilizing Fuzzy Technique
title_full_unstemmed Performance Evaluation of CFRP Reinforced Concrete Members Utilizing Fuzzy Technique
title_sort performance evaluation of cfrp reinforced concrete members utilizing fuzzy technique
publisher SpringerOpen
series International Journal of Concrete Structures and Materials
issn 1976-0485
2234-1315
publishDate 2018-12-01
description Abstract Aging and structural deterioration under severe environments are major causes of damage in reinforced concrete (RC) structures, such as buildings and bridges. Degradations such as concrete cracks, corrosion of steel, and deformation of structural members can significantly degrade the structural performance and safety. Therefore, effective and easy-to-use methods are desired for repairing and strengthening such concrete structures. Various methods for the strengthening and rehabilitation of RC structures have been developed over the past several decades. Recently, FRP composite materials have emerged as a cost-effective alternative to conventional materials for repairing, strengthening, and retrofitting deteriorating/deficient concrete structures, by externally bonding FRP laminates to concrete structural members. The main purpose of this study is to investigate the effectiveness of the FRP retrofit for circular type concrete columns under the framework of the  adaptive neuro-fuzzy inference system (ANFIS). Retrofit ratio, strength of existing concrete, thickness, number of layer, stiffness, ultimate strength of fiber, and size of specimens are used as input parameters to predict strength, strain, and stiffness of the post-yielding modulus. These proposed ANFIS models show reliable increased accuracy in predicting the constitutive properties of concrete retrofitted by FRP, compared to the constitutive models suggested by other researchers.
topic adaptive neuro-fuzzy inference system
FRP retrofitting
compressive concrete strength
strain
2nd elastic modulus
url http://link.springer.com/article/10.1186/s40069-018-0313-0
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