Statistical spatial repeatability (SSR) is an extension to the well known concept of spatial repeatability. SSR states that the mean of many patterns of dynamic tyre force applied to a pavement surface is similar for a fleet of trucks of a given type. A model which can accurately predict patterns of SSR could subsequently be used in whole-life pavement deterioration models as a means of describing pavement loading due to a fleet of vehicles. This paper presents a method for predicting patterns of SSR, through the use of a truck fleet model inferred from measurements of dynamic tyre forces. A Bayesian statistical inference algorithm is used to determine the distributions of multiple parameters of a fleet of quarter-car heavy vehicle ride mod...
This paper describes a stochastic approach to vehicle mobility prediction over large spatial regions...
International audienceTo adapt their products to the durability requirements, car manufacturers must...
Traditional pavement deterioration modeling is normally based on historical condition data alone wit...
Statistical spatial repeatability (SSR) is an extension to the well known concept of spatial repeata...
3rd European Pavement and Asset Management Conference (EPAM3), Coimbra, Portugal, 7-9 July 2008This ...
6th International Conference on Computational Stochastic Mechanics (CSM-6), Rhodos, Greece, June 13...
The mechanistic empirical method of flexible pavement design/assessment uses a large number of numer...
This paper proposes a mechanistic-empirical pavement damage model to predict changes in 3D road prof...
Load data representing severe customer usage is needed throughout a chassis development program; the...
textA challenge currently faced by local, state and federal transportation agencies is the constantl...
This study develops a Bayesian spatial random parameters Tobit model to analyze crash rates on road ...
This study investigates the effect of spatial correlation using a Bayesian spatial framework to mode...
Highway infrastructure systems provide a crucial service to society and constitute a major asset wit...
This paper proposes the use of multi-level Bayesian modeling for calibrating mechanistic model param...
This report describes the development of a data-driven methodology for estimating the mean daily tra...
This paper describes a stochastic approach to vehicle mobility prediction over large spatial regions...
International audienceTo adapt their products to the durability requirements, car manufacturers must...
Traditional pavement deterioration modeling is normally based on historical condition data alone wit...
Statistical spatial repeatability (SSR) is an extension to the well known concept of spatial repeata...
3rd European Pavement and Asset Management Conference (EPAM3), Coimbra, Portugal, 7-9 July 2008This ...
6th International Conference on Computational Stochastic Mechanics (CSM-6), Rhodos, Greece, June 13...
The mechanistic empirical method of flexible pavement design/assessment uses a large number of numer...
This paper proposes a mechanistic-empirical pavement damage model to predict changes in 3D road prof...
Load data representing severe customer usage is needed throughout a chassis development program; the...
textA challenge currently faced by local, state and federal transportation agencies is the constantl...
This study develops a Bayesian spatial random parameters Tobit model to analyze crash rates on road ...
This study investigates the effect of spatial correlation using a Bayesian spatial framework to mode...
Highway infrastructure systems provide a crucial service to society and constitute a major asset wit...
This paper proposes the use of multi-level Bayesian modeling for calibrating mechanistic model param...
This report describes the development of a data-driven methodology for estimating the mean daily tra...
This paper describes a stochastic approach to vehicle mobility prediction over large spatial regions...
International audienceTo adapt their products to the durability requirements, car manufacturers must...
Traditional pavement deterioration modeling is normally based on historical condition data alone wit...