Technical Papers
Jun 22, 2023

Comparative Analysis of Machine Learning and Deep Learning Based Water Pipeline Leak Detection Using EDFL Sensor

Publication: Journal of Pipeline Systems Engineering and Practice
Volume 14, Issue 4

Abstract

A pipeline is the most efficient way to transport water from one place to another. Due to aging, corrosion, and external factors, the pipeline is prone to damage, which causes leaks. Many machine learning (ML) and deep learning (DL) methods are available to address this issue. This paper does an experimental study on available methods in ML and DL for leak detection for the collected data using an acousto-optic sensor. The experimental setup comprises of an acousto-optic sensor made of an erbium-doped fiber laser (EDFL), galvanized iron pipeline, a tank, a pump, and a data acquisition unit. The dimensions of the galvanized pipeline looped with the water tank are a length of 40 m, an inner diameter of 89 mm, and an outer diameter of 90 mm. The diameter of the simulated leak aperture is 5 mm. The methods analyzed in this study are k-means, k-medoids, Naive Bayes (NB), support vector machines (SVM), k-nearest neighbor (KNN), decision tree (DT), categorical boosting (CatBoost), random forest (RF), XGBoost, AdaBoost, and one-dimensional convolutional neural network (1DCNN). ML algorithms need a feature extraction technique because the data collected from the experiment is too large and contains redundant information. Feature extraction reduces the data size by extracting essential information. This paper extracts ten features from raw data. Among the ML algorithms, AdaBoost gives the highest prediction accuracy of 98.02%. This paper also implements eight models of 1DCNN, and Model 1 shows the best prediction accuracy of 98.16%, which is the highest compared with all the other classifiers in ML and DL for one-dimensional time series acousto-optic sensor data.

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Data Availability Statement

Some or all data, models, or codes that support the findings of this study are available from the corresponding author upon reasonable request.

Acknowledgments

The authors would like to thank the research project funded by TRGS Project Ref. TRGS/1/2016/UTAR/01/2/2 under Universiti Tunku Abdul Rahman, Sungai Long Campus, Kajang, Selangor, Malaysia.

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Go to Journal of Pipeline Systems Engineering and Practice
Journal of Pipeline Systems Engineering and Practice
Volume 14Issue 4November 2023

History

Received: Sep 22, 2022
Accepted: Apr 26, 2023
Published online: Jun 22, 2023
Published in print: Nov 1, 2023
Discussion open until: Nov 22, 2023

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Authors

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Research Scholar, School of Electronics Engineering (SENSE), Vellore Institute of Technology (VIT) Univ., Chennai, Tamil Nadu 600127, India. ORCID: https://orcid.org/0000-0002-3344-9854. Email: [email protected]
Associate Professor, School of Electronics Engineering (SENSE), Vellore Institute of Technology (VIT) Univ., Chennai, Tamil Nadu 600127, India (corresponding author). ORCID: https://orcid.org/0000-0003-3938-7495. Email: [email protected]

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  • A Survey and Study of Signal and Data-Driven Approaches for Pipeline Leak Detection and Localization, Journal of Pipeline Systems Engineering and Practice, 10.1061/JPSEA2.PSENG-1611, 15, 2, (2024).

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