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Pavement degradation: A city-scale model for San Francisco, USA

Accepted version
Peer-reviewed

Type

Article

Change log

Abstract

jats:pData from long-term systematic pavement condition surveys provide opportunities to understand better the pavement degradation process. To provide more accurate predictions on future pavement conditions, spatial conditions are incorporated into degradation models of pavements in this paper. Long-term, city-scale pavement condition data from the San Francisco open data portal in USA are used to test and guide model development. Spatial and non-spatial degradation models are developed and compared with parameter estimations carried out using the Bayesian approach. Specifically, the integrated nested Laplace approximation method is used for the Bayesian regression. It was found that (a) the non-spatial model including only coarse categories of pavement types is too simple to provide a good fit to the data; (b) for models with fine categories (individual street segments), the spatial model is more preferable than the non-spatial model due to its lower deviance information criterion and slightly smaller fitting and testing errors; and (c) only the spatial model can reveal the spatial clustering of streets where high/low degradation rates concentrate.</jats:p>

Description

Keywords

37 Earth Sciences, 33 Built Environment and Design, 3704 Geoinformatics

Journal Title

Proceedings of the Institution of Civil Engineers: Smart Infrastructure and Construction

Conference Name

Journal ISSN

2397-8759
2397-8759

Volume Title

171

Publisher

Thomas Telford Ltd.
Sponsorship
Cambridge Trust, the Alan Turing Institute