Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Machine Learning-Assisted Optimal Schedule of Underground Water Pipe Inspection

View through CrossRef
Abstract There are over 2.2 million miles of underground water pipes serving the cities in the United States. Many are in poor conditions and deteriorate rapidly. Failures of these pipes could cause enormous financial losses to the customers and communities. Inspection provides crucial information for pipe condition assessment and maintenance plan; it, however, is very expensive for underground pipes due to accessibility issues. Therefore, water agencies commonly face the challenge to 1) decide whether it is worthwhile to schedule expensive water pipe inspections under financial constraints, and 2) if so, how to optimize the inspection schedule to maximize its value. This study leverages the physical model and data-based machine learning (ML) models for underground water pipe failure prediction to shed light on these two important questions for decision making. Analyses are firstly conducted to assess the value of water pipe inspection. Results by use of a physical-based failure model and Monte Carlo simulations indicate that by inspecting pipe’s condition, i.e., assessment of pipe’s erosion depth, the uncertainty of water pipe failure prediction can be narrowed down by 51%. For optimal inspection schedule, an artificial neural network (ANN) model, trained with historical inspection data, is evaluated for its performance in forecasting the future pipe failure probability. The results showed that a biased pipe failure prediction can occur under limited rounds of inspection. However, incorporating more rounds of inspection allows to predict the pipe failure conditions over its life cycle. From this, an optimal inspection plan can be proposed to achieve the maximum benefits of inspection in uncertainty reduction. A few salient results from the analyses include 1) the optimal schedule for inspection is not necessarily equal in the time interval, 2) by setting the goal of uncertainty reduction, an optimal inspection schedule can be obtained, where machine learning (ML) model augmented by continuously training with inspection data allows to reliably predict water pipe failure conditions over its life cycle. While this study focuses on underground pipe inspection, the general observations and methodology are applicable to optimize the inspection of other types of infrastructure as well.
Research Square Platform LLC
Title: Machine Learning-Assisted Optimal Schedule of Underground Water Pipe Inspection
Description:
Abstract There are over 2.
2 million miles of underground water pipes serving the cities in the United States.
Many are in poor conditions and deteriorate rapidly.
Failures of these pipes could cause enormous financial losses to the customers and communities.
Inspection provides crucial information for pipe condition assessment and maintenance plan; it, however, is very expensive for underground pipes due to accessibility issues.
Therefore, water agencies commonly face the challenge to 1) decide whether it is worthwhile to schedule expensive water pipe inspections under financial constraints, and 2) if so, how to optimize the inspection schedule to maximize its value.
This study leverages the physical model and data-based machine learning (ML) models for underground water pipe failure prediction to shed light on these two important questions for decision making.
Analyses are firstly conducted to assess the value of water pipe inspection.
Results by use of a physical-based failure model and Monte Carlo simulations indicate that by inspecting pipe’s condition, i.
e.
, assessment of pipe’s erosion depth, the uncertainty of water pipe failure prediction can be narrowed down by 51%.
For optimal inspection schedule, an artificial neural network (ANN) model, trained with historical inspection data, is evaluated for its performance in forecasting the future pipe failure probability.
The results showed that a biased pipe failure prediction can occur under limited rounds of inspection.
However, incorporating more rounds of inspection allows to predict the pipe failure conditions over its life cycle.
From this, an optimal inspection plan can be proposed to achieve the maximum benefits of inspection in uncertainty reduction.
A few salient results from the analyses include 1) the optimal schedule for inspection is not necessarily equal in the time interval, 2) by setting the goal of uncertainty reduction, an optimal inspection schedule can be obtained, where machine learning (ML) model augmented by continuously training with inspection data allows to reliably predict water pipe failure conditions over its life cycle.
While this study focuses on underground pipe inspection, the general observations and methodology are applicable to optimize the inspection of other types of infrastructure as well.

Related Results

Optimized Design of Pipe-in-Pipe Systems
Optimized Design of Pipe-in-Pipe Systems
Abstract Deepwater subsea developments must address the flow assurance issues and increasingly these are forming a more critical part of the design. Pipe-in-pipe ...
Alternative Entrances: Phillip Noyce and Sydney’s Counterculture
Alternative Entrances: Phillip Noyce and Sydney’s Counterculture
Phillip Noyce is one of Australia’s most prominent film makers—a successful feature film director with both iconic Australian narratives and many a Hollywood blockbuster under his ...
Pipe-in-Pipe Swaged Field Joint for Reel Lay
Pipe-in-Pipe Swaged Field Joint for Reel Lay
Abstract Subsea 7 and ITP InTerPipe (ITP) have developed a highly efficient Pipe in Pipe technology to be installed by the Reel-Lay method. This solution is based...
Eyes on Air
Eyes on Air
Abstract We at ADNOC Logistics & Services have identified the need for a Fully Integrated Inspection and Monitoring Solution to meet our operational, safety and ...
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
Empowering Underground Laboratories Network Usage in the Baltic Sea Region
Empowering Underground Laboratories Network Usage in the Baltic Sea Region
<p>In the Baltic Sea region, there are world leading science organisations and industrial companies specialised in geophysics, geology and underground construction. T...
Dynamics of a Near- Surface Pipeline Tow
Dynamics of a Near- Surface Pipeline Tow
1. Introduction This project arose from a series of experiments carried out by the Melbourne node of the Australian Maritime Engineering Cooperative Research Cent...

Back to Top