محفوظ في:
التفاصيل البيبلوغرافية
المؤلفون الرئيسيون: Jourdain, Natoya O. A. S., Steinsland, Ingelin, Birkhez-Shami, Mamoona, Vedvik, Emil, Olsen, William, Gryteselv, Dagfin, Siebert, Doreen, Klein-Paste, Alex
التنسيق: Preprint
منشور في: 2024
الموضوعات:
الوصول للمادة أونلاين:https://arxiv.org/abs/2401.03633
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author Jourdain, Natoya O. A. S.
Steinsland, Ingelin
Birkhez-Shami, Mamoona
Vedvik, Emil
Olsen, William
Gryteselv, Dagfin
Siebert, Doreen
Klein-Paste, Alex
author_facet Jourdain, Natoya O. A. S.
Steinsland, Ingelin
Birkhez-Shami, Mamoona
Vedvik, Emil
Olsen, William
Gryteselv, Dagfin
Siebert, Doreen
Klein-Paste, Alex
contents Pavement rutting poses a significant challenge in flexible pavements, necessitating costly asphalt resurfacing. To address this issue comprehensively, we propose an advanced Bayesian hierarchical framework of latent Gaussian models with spatial components. Our model provides a thorough diagnostic analysis, pinpointing areas exhibiting unexpectedly high rutting rates. Incorporating spatial and random components, and important explanatory variables like annual average daily traffic (traffic intensity), asphalt type, rut depth and lane width, our proposed models account for and estimate the influence of these variables on rutting. This approach not only quantifies uncertainties and discerns locations at the highest risk of requiring maintenance, but also uncover spatial dependencies in rutting (millimetre/year). We apply our models to a data set spanning eleven years (2010-2020). Our findings emphasise the systematic unexplained spatial rutting effect, where some of the rutting variability is accounted for by spatial components, asphalt type, in conjunction with traffic intensity, is also found to be the primary driver of rutting. Furthermore, the spatial dependencies uncovered reveal road sections experiencing more than 1 millimeter of rutting beyond annual expectations. This leads to a halving of the expected pavement lifespan in these areas. Our study offers valuable insights, presenting maps indicating expected rutting, and identifying locations with accelerated rutting rates, resulting in a reduction in pavement life expectancy of at least 10 years.
format Preprint
id arxiv_https___arxiv_org_abs_2401_03633
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Spatial-statistical model to analyse historical rutting data
Jourdain, Natoya O. A. S.
Steinsland, Ingelin
Birkhez-Shami, Mamoona
Vedvik, Emil
Olsen, William
Gryteselv, Dagfin
Siebert, Doreen
Klein-Paste, Alex
Applications
Computation
Methodology
62P30
Pavement rutting poses a significant challenge in flexible pavements, necessitating costly asphalt resurfacing. To address this issue comprehensively, we propose an advanced Bayesian hierarchical framework of latent Gaussian models with spatial components. Our model provides a thorough diagnostic analysis, pinpointing areas exhibiting unexpectedly high rutting rates. Incorporating spatial and random components, and important explanatory variables like annual average daily traffic (traffic intensity), asphalt type, rut depth and lane width, our proposed models account for and estimate the influence of these variables on rutting. This approach not only quantifies uncertainties and discerns locations at the highest risk of requiring maintenance, but also uncover spatial dependencies in rutting (millimetre/year). We apply our models to a data set spanning eleven years (2010-2020). Our findings emphasise the systematic unexplained spatial rutting effect, where some of the rutting variability is accounted for by spatial components, asphalt type, in conjunction with traffic intensity, is also found to be the primary driver of rutting. Furthermore, the spatial dependencies uncovered reveal road sections experiencing more than 1 millimeter of rutting beyond annual expectations. This leads to a halving of the expected pavement lifespan in these areas. Our study offers valuable insights, presenting maps indicating expected rutting, and identifying locations with accelerated rutting rates, resulting in a reduction in pavement life expectancy of at least 10 years.
title A Spatial-statistical model to analyse historical rutting data
topic Applications
Computation
Methodology
62P30
url https://arxiv.org/abs/2401.03633