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A Machine-Learning-Based and IoT-Enabled Robot Swarm System for Pipeline Crack Detection †.

Authors :
Kandil, Ayman
Khanafer, Mounib
Darwiche, Ali
Kassem, Reem
Matook, Fatima
Younis, Ahmad
Badran, Habib
Bin-Jassem, Maryam
Ahmed, Ossama
Behiry, Ali
El-Abd, Mohammed
Source :
Internet of Things (IoT); Dec2024, Vol. 5 Issue 4, p951-969, 19p
Publication Year :
2024

Abstract

In today's expanding cities, pipeline networks are becoming an essential part of the industrial infrastructure. Monitoring these pipelines autonomously is becoming increasingly important. Inspecting pipelines for cracks is one specific task that poses a huge burden on humans. Undetected cracks may pose multi-dimensional risks. In this paper, we introduce the Pipeline Leak Identification Emergency Robot Swarm (PLIERS) system, an industrial system that deploys Internet-of-Things (IoT), robotics, and neural network technologies to detect cracks in emptied water and sewage pipelines. In PLIERS, a swarm of robots inspect emptied pipelines from the inside to detect cracks, collect images of them, and register their locations. When the images are taken, they are fed into a cloud-based module for analysis by a convolutional neural network (CNN). The CNN is used to detect cracks and identify their severity. Through extensive training and testing, the CNN model performance showed promising scores for accuracy (between 80% and 90%), recall (at least 95%), precision (at least 95%), and F1 (at least 96%). Additionally, through the careful design of a prototype for a water/sewage pipeline structure with several types of cracks, the robots used managed to exchange information among themselves and convey crack images to the cloud-based server for further analysis. PLIERS is a system that deploys modern technologies to detect and recognize cracks in pipeline grids. It adds to the efforts of improving instrumentation and measurement approaches by using robots, sensory, IoT principles, and the efficient analysis of CNNs. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
2624831X
Volume :
5
Issue :
4
Database :
Complementary Index
Journal :
Internet of Things (IoT)
Publication Type :
Academic Journal
Accession number :
181940304
Full Text :
https://doi.org/10.3390/iot5040043