Transportation Research Record, Volume (2589), No (1), Year (2016-8) , Pages (135-145)

Title : ( Prediction of Pavement Performance application of support v ector regression with different Kernel )

Authors: H. Ziari , Mojtaba Maghrebi , J. Ayoubinejad , S. Travis Waller ,

Citation: BibTeX | EndNote

Abstract

The pavement performance model is a basic part of the pavement management system. The prediction accuracy of the model depends on the number of effective variables and the type of mathematical method that is used for modeling the pavement performance. In this paper, the capability of the support vector machine (SVM) method is analyzed for predicting the future of the pavement condition. Five kernel types of SVM algorithm are formed and nine input variables of the proposed models are extracted from the range of effective variables on the pavement condition. The international roughness index is used as the pavement performance index. The results show that the Pearson VII Universal kernel can accurately predict pavement performance in its life cycle.

Keywords

, SVM, Pavement Performance Prediction, IRR
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@article{paperid:1060541,
author = {H. Ziari and Maghrebi, Mojtaba and J. Ayoubinejad and S. Travis Waller},
title = {Prediction of Pavement Performance application of support v ector regression with different Kernel},
journal = {Transportation Research Record},
year = {2016},
volume = {2589},
number = {1},
month = {August},
issn = {0361-1981},
pages = {135--145},
numpages = {10},
keywords = {SVM; Pavement Performance Prediction; IRR},
}

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%0 Journal Article
%T Prediction of Pavement Performance application of support v ector regression with different Kernel
%A H. Ziari
%A Maghrebi, Mojtaba
%A J. Ayoubinejad
%A S. Travis Waller
%J Transportation Research Record
%@ 0361-1981
%D 2016

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