Estimation of fatigue lives of fly ash modified dense bituminous mixtures based on artificial neural networks

This study deals with estimation of fatigue lives of bituminous mixtures using artificial neural networks. Different types of fly ash were used as filler replacing agents in a dense bituminous mixture. Fatigue tests were performed using repeated load indirect tensile test apparatus under controlled...

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Main Author: Serkan Tapkin
Format: Article
Language:English
Published: Associação Brasileira de Metalurgia e Materiais (ABM); Associação Brasileira de Cerâmica (ABC); Associação Brasileira de Polímeros (ABPol) 2014-04-01
Series:Materials Research
Subjects:
Online Access:http://www.scielo.br/pdf/mr/v17n2/aop_matres_193213.pdf
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author Serkan Tapkin
author_facet Serkan Tapkin
author_sort Serkan Tapkin
collection DOAJ
description This study deals with estimation of fatigue lives of bituminous mixtures using artificial neural networks. Different types of fly ash were used as filler replacing agents in a dense bituminous mixture. Fatigue tests were performed using repeated load indirect tensile test apparatus under controlled stress conditions. For determination of fatigue life, the initiation of macro crack was accepted as the main criteria to terminate the test. The full-scale tests on asphalt pavement sections are very expensive and these tests require many years in order to be completed and sometimes do not end up with solid conclusions. Therefore, the determination of fatigue lives of bituminous mixtures in the laboratory environment is very important. This study used the experimental data as training set and, with proposed neural network architecture, very reasonable estimates of fatigue lives of bituminous mixtures have been obtained. The proposed approach provides real economy, time saving and allows observing the effect of fly ash replacement and composition on the mechanical properties of mixtures such as fatigue lives and their estimations without carrying out destructive tests.
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spelling doaj.art-15bd5a391637418685ebd3998ced8c972022-12-21T21:21:24ZengAssociação Brasileira de Metalurgia e Materiais (ABM); Associação Brasileira de Cerâmica (ABC); Associação Brasileira de Polímeros (ABPol)Materials Research1516-14392014-04-0117231632510.1590/S1516-14392014005000040Estimation of fatigue lives of fly ash modified dense bituminous mixtures based on artificial neural networksSerkan Tapkin0Bahçeehir UniversityThis study deals with estimation of fatigue lives of bituminous mixtures using artificial neural networks. Different types of fly ash were used as filler replacing agents in a dense bituminous mixture. Fatigue tests were performed using repeated load indirect tensile test apparatus under controlled stress conditions. For determination of fatigue life, the initiation of macro crack was accepted as the main criteria to terminate the test. The full-scale tests on asphalt pavement sections are very expensive and these tests require many years in order to be completed and sometimes do not end up with solid conclusions. Therefore, the determination of fatigue lives of bituminous mixtures in the laboratory environment is very important. This study used the experimental data as training set and, with proposed neural network architecture, very reasonable estimates of fatigue lives of bituminous mixtures have been obtained. The proposed approach provides real economy, time saving and allows observing the effect of fly ash replacement and composition on the mechanical properties of mixtures such as fatigue lives and their estimations without carrying out destructive tests.http://www.scielo.br/pdf/mr/v17n2/aop_matres_193213.pdffatigue life estimationfly ashuniversal testing machinedense bituminous mixturesrepeated load indirect tensile testneural networks
spellingShingle Serkan Tapkin
Estimation of fatigue lives of fly ash modified dense bituminous mixtures based on artificial neural networks
Materials Research
fatigue life estimation
fly ash
universal testing machine
dense bituminous mixtures
repeated load indirect tensile test
neural networks
title Estimation of fatigue lives of fly ash modified dense bituminous mixtures based on artificial neural networks
title_full Estimation of fatigue lives of fly ash modified dense bituminous mixtures based on artificial neural networks
title_fullStr Estimation of fatigue lives of fly ash modified dense bituminous mixtures based on artificial neural networks
title_full_unstemmed Estimation of fatigue lives of fly ash modified dense bituminous mixtures based on artificial neural networks
title_short Estimation of fatigue lives of fly ash modified dense bituminous mixtures based on artificial neural networks
title_sort estimation of fatigue lives of fly ash modified dense bituminous mixtures based on artificial neural networks
topic fatigue life estimation
fly ash
universal testing machine
dense bituminous mixtures
repeated load indirect tensile test
neural networks
url http://www.scielo.br/pdf/mr/v17n2/aop_matres_193213.pdf
work_keys_str_mv AT serkantapkin estimationoffatiguelivesofflyashmodifieddensebituminousmixturesbasedonartificialneuralnetworks