Risk-based Renewal Prioritization Models (RPM) for Potable Water Pipeline Infrastructure Systems
| dc.contributor.author | Vishwakarma, Anmol | en |
| dc.contributor.committeechair | Sinha, Sunil Kumar | en |
| dc.contributor.committeemember | Ramakrishnan, Narendran | en |
| dc.contributor.committeemember | Edwards, Marc A. | en |
| dc.contributor.committeemember | Deane, Jason K. | en |
| dc.contributor.department | Civil and Environmental Engineering | en |
| dc.date.accessioned | 2025-12-23T09:01:57Z | en |
| dc.date.available | 2025-12-23T09:01:57Z | en |
| dc.date.issued | 2025-12-22 | en |
| dc.description.abstract | Water pipelines are critical infrastructure assets buried across the United States, responsible for delivering safe drinking water at adequate pressures from source to customers. A majority of these pipelines were installed in the mid-twentieth century without adequate financial planning for future renewal, creating a growing renewal backlog under tight budget and operational constraints. Decades of utility data and practice-based knowledge, combined with advances in Artificial Intelligence (AI) and computational resources, now make it possible to revisit how renewal decisions are made. A review of current water pipeline renewal methods reveals major gaps, including weak integration of risk with decision criteria, ad hoc selection of modeling algorithms without strategic foresight, and limited, often internal-only, real-world validation. This dissertation addresses these gaps by developing and testing an AI-enabled framework for risk-based renewal prioritization of water pipelines. The work has four main goals: (1) developing an AI model to predict the performance and Likelihood of Failure (LOF) of any water pipeline segment on a 0–5 scale, (2) creating an AI model to predict the Consequence of Failure (COF) of any segment on a 0–5 scale, spanning economic, en-vironmental, and social/service impacts, (3) building a multi-criteria optimization model to generate prioritized renewal portfolios that incorporate risk, cost, equity, and delivery con-straints within budget limits, and (4) establishing experimental protocols to evaluate, veri-fy, and validate model results against field inspections, retrospective failures, and expert judgement across multiple utilities. Applied to several U.S. utilities, the integrated LOF, COF, and portfolio models outperform age-based and heuristic baselines on predictive accuracy, calibration, and risk-reduction-per-dollar, while producing more spatially coherent and operationally feasible renewal programs in retrospective tests. Finally, this research evaluates whether the additional effort required for data collection, model interpretation, and governance is justified relative to current utility practices, with tradeoffs assessed in terms of reduced emergency failures and costs, enhanced transparency and accountability in decision-making, and improved public trust. In the short term, the proposed framework supports more cost-effective and defensible capital improvement planning; in the long term, it provides a template for shifting water utilities from reactive, break-driven repairs to proactive, data-informed management of buried pipeline infrastructure using explainable AI models with characterized uncertainties. | en |
| dc.description.abstractgeneral | Water pipelines are the hidden backbone of modern life, carrying clean water from treatment plants to homes and businesses. Many of these pipes in the United States were installed more than 50 years ago and are now aging, often without sufficient planning for their renewal. As these systems deteriorate, unexpected pipe breaks can flood streets, disrupt traffic, waste treated water, and create costly emergencies that are difficult for utilities and communities to absorb. Advances in data, Artificial Intelligence (AI), and computing power now offer a chance to help utilities make more proactive and informed decisions about which pipes to renew and when. However, many current renewal practices still oversimplify risk, ignore real-world construction and budget constraints, and rarely undergo rigorous testing against observed failures and field inspections. This research develops and tests AI-based tools that (1) estimate how likely each pipe is to fail, (2) estimate what would happen if it fails, including economic, environmental, and social impacts, (3) create a decision model that balances cost, risk, equity, and practical construction constraints within budget lim-its, and (4) establish practical procedures to scientifically test these models against real failures, inspection data, and expert assessments from multiple water utilities. When applied to several U.S. systems, these tools perform better than existing methods at identifying which pipes should be renewed and assembling renewal plans that achieve greater risk reduction for each dollar spent, with fewer construction conflicts and neighborhood disruptions in planning scenarios. The study also examines whether the added effort of using AI models is justified by benefits such as fewer emergencies, reduced costs, and greater transparency for customers, regulators, and decision-makers. In the short term, the methods support more cost-effective and accountable planning; in the long term, they aim to help water utilities move away from crisis-driven repairs toward proactive, data-driven management of the buried infrastructure that supports everyday life. | en |
| dc.description.degree | Doctor of Philosophy | en |
| dc.format.medium | ETD | en |
| dc.identifier.other | vt_gsexam:45226 | en |
| dc.identifier.uri | https://hdl.handle.net/10919/140553 | en |
| dc.language.iso | en | en |
| dc.publisher | Virginia Tech | en |
| dc.rights | In Copyright | en |
| dc.rights.uri | http://rightsstatements.org/vocab/InC/1.0/ | en |
| dc.subject | water pipeline infrastructure asset management | en |
| dc.subject | likelihood of failure | en |
| dc.subject | consequence of fail-ure | en |
| dc.subject | risk analysis | en |
| dc.subject | model validation | en |
| dc.subject | renewal prioritization | en |
| dc.subject | expert systems | en |
| dc.subject | machine learn-ing | en |
| dc.title | Risk-based Renewal Prioritization Models (RPM) for Potable Water Pipeline Infrastructure Systems | en |
| dc.type | Dissertation | en |
| thesis.degree.discipline | Civil Engineering | en |
| thesis.degree.grantor | Virginia Polytechnic Institute and State University | en |
| thesis.degree.level | doctoral | en |
| thesis.degree.name | Doctor of Philosophy | en |
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