Title of article
A Bayesian approach for improved pavement performance prediction
Author/Authors
Eun Sug Park، نويسنده , , Roger E. Smith، نويسنده , , Thomas J. Freeman & Clifford H. Spiegelman، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
20
From page
1219
To page
1238
Abstract
We present a method for predicting future pavement distresses such as longitudinal cracking. These predicted
distress values are used to plan road repairs. Large inherent variability in measured cracking and
an extremely small number of observations are the nature of the pavement cracking data, which calls for
a parametric Bayesian approach. We model theoretical pavement distress with a sigmoidal equation with
coefficients based on prior engineering knowledge.We show that a Bayesian formulation akin to Kalman
filtering gives sensible predictions and provides defendable uncertainty statements for predictions. The
method is demonstrated on data collected by the Texas Transportation Institute at several sites in Texas.
The predictions behave in a reasonable and statistically valid manner.
Keywords
State-space models , pavement management information system , Kalman filtering , Markov chain Monte Carlo , Bayesian adjustment
Journal title
JOURNAL OF APPLIED STATISTICS
Serial Year
2008
Journal title
JOURNAL OF APPLIED STATISTICS
Record number
712261
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