Leveraging Infrastructure BIM for Life-Cycle-Based Sustainable Road Pavement Management
Abstract
:1. Introduction
- Definition of a decision support system oriented to reactive and predictive maintenance, which considers the variables related to economic and financial aspects up to the environmental and technical–operational ones related to the decay of specific status indicators; the framework must be compliant with ISO 19650 information management protocols (see Figure 1) and is aimed at automating the drafting of a multiyear maintenance plan for a road pavement section.
- The introduction of laboratory results related to road construction materials (i.e., composition of the mixtures and features of primary and secondary raw materials, as well as the physical, mechanical and performance-related attributes and predictive equations useful for designing and predicting the service life of asphalt pavement configurations) into a BIM workflow.
- Digitization of the road pavement management process through the definition of a pavement information model aimed at IBIM-based sustainable maintenance management. Integration is intended not only for the automation of data management but also for the definition of specific information exchange management protocols related to the life cycle of a road pavement.
2. Methodology
2.1. Condition Indicators and Alternative Maintenance Strategies
- Surface rehabilitation: it implies the milling and reconstruction of the wearing course and the assessment of the condition of the binder layer (i.e., extraction of core samples from the binder layer to test the stiffness modulus, in situ testing to measure the bearing capacity of the deeper layers, etc.);
- Deep rehabilitation: it consists of the milling and reconstruction of the wearing course and binder layer (and relative tests applied to measure the structural capacity of the base layer, i.e., coring of the base layer and stiffness measurement);
- Reconstruction: it involves the full reconstruction of the asphalt layers (wearing, binder and base layer) and subsequent control of the subbase bearing capacity.
- PCI values above 85 imply no maintenance interventions due to the good quality of the pavement surface.
2.2. Environmental and Economic Assessment of Alternatives
2.3. Decision Making
- Determining the weights of the attributes;
- Normalizing the attribute values for each alternative;
- Aggregating the normalized attribute values into an overall index to produce the ranking of the alternatives [47].
3. Results and Discussion
- Tables S1 and S2 collect the mix composition data of the asphalt mixtures under analysis, respectively, for the binder and base layers;
- Table S4 collects all the available data regarding the road category, the AADT and the expected number of ESALs in 20 y for the case study under analysis, on which pavement design was based;
- Table S5 summarizes the results in terms of the type of maintenance intervention, expected frequency of intervention and materials involved;
- Table S6 collects all the data sources and relative survey year of LCA data;
- Table S7 summarizes all the cost items of the alternative maintenance strategies;
- Table S8 reports the final decision matrix of the case study.
- Set up data templates (i.e., Excel spreadsheets) to import the needed information in the programming interface and speed up the informatization of the pavement information model;
- Informatize the IBIM of a road pavement through property sets definition;
- Run calculations and update the property sets with the outcome of the maintenance algorithm and decision-making framework.
- Input property: its value is assigned directly from the data template imported by the user and does not require additional calculations;
- Output property: its value is the result of the calculations of the analytic tools supporting the pavement IBIM.
- Pset_Pavement: the property set includes the current features of the asphalt pavement, such as the asphalt mixture identifiers of each layer and the coefficients of the PCI, FD and R decay curves;
- Pset_WearingCourse, Pset_BinderLayer, Pset_BaseLayer: the three input property sets, each one attached to the respective asphalt layer of the pavement structure, include all the necessary information that should be uploaded in the BIM environment before performing the LCA in absence of a specific EPD;
- Pset_MADM: the property set includes the input parameters that set up the boundary conditions for MADM (the weighting coefficients of each indicator and the maximum budget constraint in the analysis period);
- Pset_Maintenance: the property set includes both input (analysis period) and output parameters (type of maintenance strategy, number of years before next maintenance intervention, relative trigger condition and value of each condition indicator before next maintenance intervention) referred to the current pavement configuration;
- Pset_LCAindicators: the output property set includes the environmental impact categories that will be filled once the analysis tool is run on the current pavement configuration. In particular, hierarchical recipe midpoint impact assessment methodology [41] was chosen to address 18 different environmental problems through as many impact category indicators;
- Pset_LCCAindicators: the property set includes both input (discount rate) and output parameters (LCCA indicator and salvage value of the pavement at the end of the analysis period) used to characterize the life cycle cost dimension of the current pavement configuration.
- The PMS tool gathers the information (time series of PCI surveys, predictive rutting and fatigue accumulations laws, pavement solutions library, intervention thresholds, etc.) and calculates the type and timing of the maintenance interventions according to different maintenance approaches;
- The LCA/LCCA (see respectively Figure 5a,b) tool gathers the outputs of the PMS tool, as well as the libraries of unit costs and impact category indicators for each stage of the expected life cycle of the pavement, to calculate a set of life cycle indicators for each alternative pavement solution;
- The MADM (see Figure 5c) tool applies the budget constraints and performs the final decision making based on the decision matrix set up by the execution of the previous analysis tools. The MADM tool also updates the final values of the output properties, including the number of years before the next intervention, the condition indicator that triggers the need for maintenance, the cost and the environmental impact indicators of the life cycle of the optimal solution.
Application to a Case Study
- The performance indicators at the end of the analysis period, namely, FD, R and PCI (where available), make up the overall pavement condition (PC);
- The LCC indicator alone represents the costs incurred by the road managing agency in the analysis period (LCCA);
- The 18 indicators obtained by LCA analysis were collected to constitute the environmental and human health performance of the asphalt mixtures (EHP).
4. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Life Cycle Phase | Equations |
---|---|
General equation of LCA | |
Raw materials production | |
Asphalt mixture in-plant production | |
Road pavement construction | |
Road pavement maintenance | |
End-of-life |
Item | Equations |
---|---|
General equation of LCCA | |
Salvage Value | |
In-plant asphalt mixture production and supply, road pavement construction | |
Road pavement maintenance | |
End-of-life |
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Oreto, C.; Biancardo, S.A.; Abbondati, F.; Veropalumbo, R. Leveraging Infrastructure BIM for Life-Cycle-Based Sustainable Road Pavement Management. Materials 2023, 16, 1047. https://doi.org/10.3390/ma16031047
Oreto C, Biancardo SA, Abbondati F, Veropalumbo R. Leveraging Infrastructure BIM for Life-Cycle-Based Sustainable Road Pavement Management. Materials. 2023; 16(3):1047. https://doi.org/10.3390/ma16031047
Chicago/Turabian StyleOreto, Cristina, Salvatore Antonio Biancardo, Francesco Abbondati, and Rosa Veropalumbo. 2023. "Leveraging Infrastructure BIM for Life-Cycle-Based Sustainable Road Pavement Management" Materials 16, no. 3: 1047. https://doi.org/10.3390/ma16031047
APA StyleOreto, C., Biancardo, S. A., Abbondati, F., & Veropalumbo, R. (2023). Leveraging Infrastructure BIM for Life-Cycle-Based Sustainable Road Pavement Management. Materials, 16(3), 1047. https://doi.org/10.3390/ma16031047