A Novel Decision Support System for Long-Term Management of Bridge Networks
Abstract
:1. Introduction
1.1. State of Practice in Bridge Management
- Technical aspects in the decision making such as condition assessment and performance assessment are mainly held in BMS rather than economic and social analyses that involve life cycle cost analysis, social impact analysis, etc.;
- The decision making based on BMS output is generally for short-term rather than long-term purposes, and the recommended actions are not proactive of future predicted conditions by lacking predictive models and scenario analysis;
- The decision-making models usually do not recommend multiple action strategies with a comparative analysis.
1.2. Long-Term Decision Making
2. Materials and Methods
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- Processing the bridge inventory data of both public and private agencies to retrieve necessary bridge information used in decision support components (e.g., bridge condition, historical data, geolocation);
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- Retrieving local element inspection data directly from NDEs such as Infrared Thermography (IRT), Ground Penetration Radar (GPR), laser scanning, remote sensing, and drone inspections;
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- Element condition assessment based on the quantified damage information and Health index (HI) calculation of the structure. Analysis of historical element condition states to predict the future condition using a time series forecasting model that estimates the damage growth;
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- A novel, adaptive decision ranking implementation for bridge maintenance decisions using bridge appraisals and a deep learning-based ranking algorithm;
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- Adapting the infrastructure owner’s maintenance practice through periodic model updates to fine-tune the decision ranking weights using automatically generated data from users’ decision actions;
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- Decision tree implementation to produce maintenance/repair strategies with alternative actions and associated cost calculation;
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- Damage visualization on realistic 3D bridge model with a timeline feature demonstration of both past and future conditions;
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- Data exchange and synchronization with infrastructure owner’s bridge management software and the NBI database.
2.1. Integration of Nondestructive Evaluation Data
2.2. Deep Learning-Based Prediction of Deterioration Growth
2.3. Adaptive Bridge Decision Ranking
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- Critical condition and worse (r < 2) → CR = 55;
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- Serious condition (r = 3) → CR = 40;
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- Poor condition (r = 4) → CR = 25;
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- Fair condition (r = 5) → CR = 10.
2.4. Decision Strategy Generation
3. Results
4. Discussions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
References
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District | Intersected Feature | Type | Structural Adequacy | Serviceability | Bridge Importance | Value Index | Available Fund | Decision Ranking |
---|---|---|---|---|---|---|---|---|
FL-2 | Brown Creek | Prestressed | 37% | 20% | 10% | 14.8 | $18.3M | 40 |
FL-4 | Palm Avenue | Prestressed | 45% | 25% | 12% | 15.4 | $15.9M | 42 |
FL-5 | Lake Jesup | Prestressed | 54% | 29% | 18% | 20.1 | $9.2M | 38 |
FL-1 | Gum Creek | Concrete | 55% | 30% | 15% | 17.8 | $10.3M | 45 |
... |
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Karaaslan, E.; Bagci, U.; Catbas, N. A Novel Decision Support System for Long-Term Management of Bridge Networks. Appl. Sci. 2021, 11, 5928. https://doi.org/10.3390/app11135928
Karaaslan E, Bagci U, Catbas N. A Novel Decision Support System for Long-Term Management of Bridge Networks. Applied Sciences. 2021; 11(13):5928. https://doi.org/10.3390/app11135928
Chicago/Turabian StyleKaraaslan, Enes, Ulas Bagci, and Necati Catbas. 2021. "A Novel Decision Support System for Long-Term Management of Bridge Networks" Applied Sciences 11, no. 13: 5928. https://doi.org/10.3390/app11135928
APA StyleKaraaslan, E., Bagci, U., & Catbas, N. (2021). A Novel Decision Support System for Long-Term Management of Bridge Networks. Applied Sciences, 11(13), 5928. https://doi.org/10.3390/app11135928