An In-Pipe Leak Detection Robot With a Neural-Network-Based Leak Verification System

Title

An In-Pipe Leak Detection Robot With a Neural-Network-Based Leak Verification System

Subject

Inspection
Leak detection
neural network
Neural networks
Pipeline inspection
Pipelines
pressure sensor
robot
Robot sensing systems

Description

This paper presents a custom designed in-pipe inspection robot that is developed for a pipe of diameter 0.203 m, commonly found in the oil and gas industry. Several pressure sensors are incorporated on board the robot that are used for detecting leaks. The robot has a propeller arrangement that not only drives the robot forward but also helps simulate a flow in an empty pipe, and thus aids the detection of leaks. Furthermore, the leak detection system is augmented by a neural network-based verification framework that improves the robustness of leak detection by allowing the operator to check their identification of a leak by passing it through a neural network-based system. This paper presents the details of the construction of the actual robot and presents experimental data, which show successful neural-networks-based detection of leaks in various scenarios.
1153-1165

Creator

D. Waleed
S. H. Mustafa
S. Mukhopadhyay
M. F. Abdel-Hafez
M. A. K. Jaradat
K. R. Dias
F. Arif
J. I. Ahmed

Publisher

IEEE Sensors Journal

Date

2019

Type

journalArticle

Citation

D. Waleed et al., “An In-Pipe Leak Detection Robot With a Neural-Network-Based Leak Verification System,” Lamar University Midstream Center Research, accessed May 14, 2024, https://lumc.omeka.net/items/show/27240.

Output Formats