典型文献
Detection of critical road roughness sections by trend analysis and investigation of driver speed interaction
文献摘要:
Pavement roughness(IRI—International Roughness Index values)influence the stability of traffic movements both on intercity roads and urban roads.This study is to determine the exact locations of critical pavement roughness values that affect traffic motion stability and comfort in city centre highway arteries.Roughness data with 10 m intervals were collected on a 3140 m divided road containing three consecutive signalized intersections in the city centre arterial.These data were analysed using the distance-dependent Mann-Kendall trend analysis method and checkerboard model.The sections where roughness is important were determined at a 95%confidence interval.The results will show where future pavement improvements should be prioritized for municipalities and road maintenance engineers and will form a basis for the urban road management system.
文献关键词:
中图分类号:
作者姓名:
Meltem SAPLIOGLU;Ayse UNAL;Melek BOCEK
作者机构:
Department of Civil Engineering,Suleyman Demirel University,Isparta 32260,Turkey;Department of Civil Engineering,Siirt University,Siirt 56100,Turkey
文献出处:
引用格式:
[1]Meltem SAPLIOGLU;Ayse UNAL;Melek BOCEK-.Detection of critical road roughness sections by trend analysis and investigation of driver speed interaction)[J].结构与土木工程前沿,2022(04):515-532
A类:
signalized
B类:
Detection,critical,roughness,by,trend,analysis,investigation,driver,speed,interaction,Pavement,IRI,International,Roughness,Index,values,influence,stability,traffic,movements,both,intercity,roads,urban,This,study,exact,locations,pavement,that,affect,motion,comfort,centre,highway,arteries,data,intervals,were,collected,divided,containing,three,consecutive,intersections,arterial,These,analysed,using,distance,dependent,Mann,Kendall,method,checkerboard,model,where,important,determined,confidence,results,will,show,future,improvements,should,be,prioritized,municipalities,maintenance,engineers,form,basis,management,system
AB值:
0.621629
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