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Hybrid TDR-MI Based Wireless Sensor Network for Underground Water Pipeline Leakage Detection and Localization Using Pressure Residuals and Classifiers
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Abstract
The pipeline leakage detection and leak localization trouble is a highly demanding and dangerous issue. Underground pipelines are critical for transporting enormous fluid volumes (e.g., water) across extended distances. Not only would solving this issue save the nation a great deal of money and resources, but it will also save the environment. However, because of the harsh climatic conditions below earth, current leak detection systems are not enough for monitoring subterranean pipelines. To address these issues, this study suggests a hybrid wireless sensor network for monitoring subterranean pipelines that is based on magnetic induction and time domain reflectometry (TDR). TDR is installed in this instance below a wireless sensor network that is based on MI. TDR significantly reduces the time needed for inspection while accurately locating the leak. Based on MI technology, we provide a wireless sensor network for inexpensive, real-time leak detection in subterranean pipelines. Through the integration of data from several sensor types located within and around subterranean pipes, MISE-PIPE detects leaks. Ad-hoc WSNs are employed in pressure measurement. (WDNs) is a popular subject that has drawn attention from scholars lately. Since leak localisation has a significant influence on the human population and the economy, time and accuracy are essential components. A broad leak localisation technique is proposed using statistical classifiers operating in the residual space. Classifiers are trained using leak data from every node in the network, accounting for demand uncertainty, noise from sensor preservatives, and leak size. After localising and identifying leaks, all monitoring data is sent to the CH using the K-means clustering technique, which performs two vital tasks: optimum clustering, extending the Network Lifetime, and maintaining Quality of Service. The K-Means technique is used to optimise the clustering process. The K-means clustering technique is used to transfer all monitoring data to the CH for the purpose of pipeline leak identification and localisation. Unlike the current underground pipeline monitoring system, our proposed Hybrid TDR-MI-based wireless sensor network allows precise real-time leak identification and localisation.
Springer Science and Business Media LLC
Title: Hybrid TDR-MI Based Wireless Sensor Network for Underground Water Pipeline Leakage Detection and Localization Using Pressure Residuals and Classifiers
Description:
Abstract
The pipeline leakage detection and leak localization trouble is a highly demanding and dangerous issue.
Underground pipelines are critical for transporting enormous fluid volumes (e.
g.
, water) across extended distances.
Not only would solving this issue save the nation a great deal of money and resources, but it will also save the environment.
However, because of the harsh climatic conditions below earth, current leak detection systems are not enough for monitoring subterranean pipelines.
To address these issues, this study suggests a hybrid wireless sensor network for monitoring subterranean pipelines that is based on magnetic induction and time domain reflectometry (TDR).
TDR is installed in this instance below a wireless sensor network that is based on MI.
TDR significantly reduces the time needed for inspection while accurately locating the leak.
Based on MI technology, we provide a wireless sensor network for inexpensive, real-time leak detection in subterranean pipelines.
Through the integration of data from several sensor types located within and around subterranean pipes, MISE-PIPE detects leaks.
Ad-hoc WSNs are employed in pressure measurement.
(WDNs) is a popular subject that has drawn attention from scholars lately.
Since leak localisation has a significant influence on the human population and the economy, time and accuracy are essential components.
A broad leak localisation technique is proposed using statistical classifiers operating in the residual space.
Classifiers are trained using leak data from every node in the network, accounting for demand uncertainty, noise from sensor preservatives, and leak size.
After localising and identifying leaks, all monitoring data is sent to the CH using the K-means clustering technique, which performs two vital tasks: optimum clustering, extending the Network Lifetime, and maintaining Quality of Service.
The K-Means technique is used to optimise the clustering process.
The K-means clustering technique is used to transfer all monitoring data to the CH for the purpose of pipeline leak identification and localisation.
Unlike the current underground pipeline monitoring system, our proposed Hybrid TDR-MI-based wireless sensor network allows precise real-time leak identification and localisation.
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Hybrid TDR-MI Based Wireless Sensor Network for Underground Water Pipeline Leakage Detection and Localization Using Pressure Residuals and Classifiers.
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