For decades, the single most pressing issue for water utilities has been the health of buried water pipes. Water loss from pipe failure is a significant challenge for all utilities. Every year, utilities lose between 20% to 60%, and that loss occurs after the expense of sourcing, treating, and distributing the water. The cost doesn’t stop at the water itself. Burst pipes damage property and roads, disrupt neighborhoods, contribute to unnecessary greenhouse gas emissions, and tarnish public trust.
With limited budgets and failing infrastructure, utility leaders must make difficult choices about where to act first. That’s where risk prediction comes in. Utilities employ a variety of approaches to prioritize asset management based on predicted risk. These approaches are outlined below with their respective strengths and weaknesses.
See other case studies from utilities using AI in the field →
Method:
Strengths:
Weaknesses:
Best for: Smaller to mid-size utilities or as a first step toward predictive modeling.
Method:
Strengths:
Weaknesses:
Best for: Utilities with a decade+ of work orders and failure history.
Method:
Strengths:
Weaknesses:
Best for: Utilities with technology-forward leadership.
Method:
Strengths:
Weaknesses:
Best for: Utilities wanting to prioritize based on service-criticality rather than just likelihood of failure.
Method:
Strengths:
Weaknesses:
Best for: Communicating risk to stakeholders and identifying priority areas.
Method |
Data Requirements |
Accuracy |
Cost |
Practicality |
Typical Utility Size |
Asset Condition + LoF/CoF |
Low |
Low–Medium |
Low |
High |
Small–Medium |
Statistical Analysis |
Medium |
Medium |
Medium |
Medium–High |
Medium–Large |
AI /Machine Learning |
Medium–High |
High |
Medium–High |
Medium |
All sizes |
Hydraulic Impact Modeling |
Medium–High |
Medium |
Medium–High |
Medium |
Medium–Large |
GIS Risk Mapping |
Medium |
Medium |
Medium |
High |
All sizes |
Side-by-Side Comparison
Every utility operates with limited resources, and every utility deals with infrastructure failures. But not every utility predicts it well. The better you can predict risk to prioritize resources, the better you can prevent damage, reduce cost, and preserve trust.
Among all five risk prediction methods – Machine learning provides the highest accuracy for predicting failures. It works by applying multiple algorithms to lots of data. If you are ready to get more out of your data, start the process by improving its quality and quantity. Then, partner with experts like VODA.ai to unlock the best insights that help you stay ahead of failure.
This is the second article in our AI for Utilities series – where we break down what AI and machine learning really means, how it works, how it helps, and what results utilities are seeing. We also bust the myths around this often mystified technology.
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