The adoption of machine learning in transportation asset management is hindered by the perception of it being a black box, the natural resistance to change and the challenges of integration with existing management systems. This paper aims to enhance the understanding of machine learning and provide guidance for the development and implementation of machine learning to support decision making in the management of highway pavements and bridges. The paper identifies successful research efforts using machine learning, identifies opportunities and challenges in adopting machine learning and derives recommendations on when and how to apply different machine learning algorithms to support asset-management decisions. Four main challenges were identified: the trade-off between accuracy and interpretability, the shortage of machine learning engineers, data quality and the limitations of machine learning algorithms. Although the complexities associated with training machine learning algorithms challenge short-term implementation, machine learning offers a wide range of opportunities when compared with traditional approaches. The development of hybrid systems combining machine learning algorithms with expert opinions and traditional approaches seems a reasonable step forward to support agencies’ asset-management decisions.
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September 2024
Research Article|
September 13 2024
Machine learning to enhance the management of highway pavements and bridges Available to Purchase
Mohammad Z Bashar, PhD
;
Mohammad Z Bashar, PhD
Senior Consultant
US Advisory Services, WSP, Denver, CO, USA
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Cristina Torres-Machi, PhD
Cristina Torres-Machi, PhD
Assistant Professor
Department of Civil, Environmental, and Architectural Engineering, University of Colorado Boulder, Boulder, CO, USA (corresponding author: cristina.torresmachi@colorado.edu)
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Publisher: Emerald Publishing
Received:
September 23 2022
Accepted:
March 29 2023
Online ISSN: 2053-0250
Print ISSN: 2053-0242
Emerald Publishing Limited: All rights reserved
2024
Infrastructure Asset Management (2024) 11 (3): 119–127.
Article history
Received:
September 23 2022
Accepted:
March 29 2023
Citation
Bashar MZ, Torres-Machi C (2024), "Machine learning to enhance the management of highway pavements and bridges". Infrastructure Asset Management, Vol. 11 No. 3 pp. 119–127, doi: https://doi.org/10.1680/jinam.22.00031
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