Deterioration models for prediction of remaining useful life of timber and concrete bridges:A review
Deterioration models for prediction of remaining useful life of timber and concrete bridges:A review作者机构:Department of CivilEnvironmental and Geomatics EngineeringFlorida Atlantic UniversityBoca RatonFL 33431USA
出 版 物:《Journal of Traffic and Transportation Engineering(English Edition)》 (交通运输工程学报(英文版))
年 卷 期:2020年第7卷第2期
页 面:152-173页
核心收录:
学科分类:08[工学] 0805[工学-材料科学与工程(可授工学、理学学位)]
基 金:the support and facilities provided by the Department of Civil Environmental and Geomatics Engineering at Florida Atlantic University to carry out the research
主 题:Bridge engineering Timber and concrete bridge Deterioration model Markov chain Artificial Neural Network
摘 要:Bridge deterioration models are used for prioritization and maintenance of *** models can be broadly classified as deterministic and stochastic *** are mechanistic models(or physical models)as well as Artificial Intelligence(AI)-based models,each of which can be stochastic or deterministic in *** though there are several existing deterioration models,state-based stochastic Markov chain-based model is widely employed in bridge management *** paper presents a critical review of different bridge deterioration models highlighting the advantages and limitations of each *** models are applied to some case studies of timber superstructure and concrete bridge *** are illustrated for arriving at bridge deterioration models using deterministic,stochastic and Artificial Neural Network(ANN)-based models based on National Bridge Inventory(NBI)*** first example is based on deterministic model and the second on stochastic *** deterministic model uses the NBI records for the years 1992-2012,while the stochastic model uses the NBI records for one year(2011-2012).The stochastic model is state-based Markov chain model developed using Transition Probability Matrix(TPM)obtained by Percentage Prediction Method(PPM).The two deterioration models(i.e.,deterministic and stochastic models)are applied to timber highway bridge superstructure using NBI condition data for bridges in Florida,Georgia,South Carolina and North *** illustrated examples show that the deterministic model provides higher accuracy in the predicted condition value than the stochastic Markov chain-based *** the model is developed based on average of transition probabilities considering the data for the period 1992 to 2012,the prediction accuracy of stochastic model will *** data filtering of condition records aids in improving the accuracy of the deterministic *** third example illustrates the ANN-based deterioration model for r