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BIM-Based Attention Class Indicators for Network-Scale Road Safety Barrier Asset Management

Academic Article
Publication Date:
2026
abstract:
Road safety barriers represent a core component of the road with relevant consequences on effective safety for users. Maintaining these components in adequate conditions, within the quality admissibility thresholds, in compliance with all economic and management constraints, is a primary need for road administrators. In this paper, the authors propose an original procedure to classify the state of efficiency of road safety barriers, at the network scale and relying on conventional administrative data, in an optimized BIM environment, to simplify evaluations and management procedures. Through purpose-built algorithms based on selected geometric and functional parameters of the different road barriers, the algorithm provides a preliminary classification of the various segments, evidencing attention class indicators, useful as preliminary alert signals and for anticipating detailed investigations that can ensure significant economic efficiencies. The method was tested on a 10 km long motorway segment in Italy, evidencing the potential advantages of such an innovative approach to support, as a final goal, a comprehensive infrastructure digital model for virtual inspections, evaluating road component “health” state and properly implementing maintenance strategies. This approach improves network-scale monitoring and maintenance-related activity prioritization phases for road safety barriers, leveraging administrative data. This methodology functions as a BIM-based asset screening tool, as it offers a digital decision support system that identifies critical segments, to optimize the allocation of physical resources and prioritize on-site inspections where they are most needed.
Iris type:
14.a.1 Articolo su rivista
Keywords:
road maintenance; road barriers; attention levels; road management systems (RMS); Building information modelling; I-BIM
List of contributors:
Bosurgi, Gaetano; Cantisani, Giuseppe; Pellegrino, Orazio; Sollazzo, Giuseppe
Authors of the University:
BOSURGI Gaetano
PELLEGRINO Orazio
SOLLAZZO Giuseppe
Handle:
https://iris.unime.it/handle/11570/3353630
Published in:
APPLIED SCIENCES
Journal
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URL

https://www.mdpi.com/2076-3417/16/9/4454
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