Quantifying the impact of uncertain material parameters on pavement response using an Inverse modeling technique
Abstract
Accurate modeling of pavement response
plays a critical role in the effective design, analysis, and
maintenance of road infrastructure. However, the presence
of uncertainty in material parameters can significantly
compromise the reliability and accuracy of such models.
This study focuses on investigating the impact of uncertain
material parameters on pavement response by employing an
inverse modeling technique. The objective of this research
is to utilize an inverse modeling approach to assess the
influence of uncertain material parameters on Uzan’s model,
a commonly used model for pavement response. The
study considers measured stress and strain values obtained
from tyre and Falling Weight Deflectometer (FWD) load
conditions applied to granular materials. The inverse model
is formulated as a nonlinear least squares minimization
problem, in conjunction with a finite element model that
analyzes the deformation of flexible pavements. Through
the application of the inverse modeling technique, this study
aims to determine the extent to which uncertain material
parameters affect the accuracy of pavement response
predictions. By comparing the predicted pavement behavior
derived from the inverse model with actual measured data,
the influence of uncertain parameters can be quantified.
The outcomes of this research contribute to advancing the
understanding of the complex interplay between material
parameter uncertainties and pavement response.
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