An image classification approach for hole detection in wireless sensor networks
Se-Hang Cheong, Kim-Hou Ng, Yain-Whar Si

TL;DR
This paper introduces FD-CNN, a novel centralized method combining force-directed algorithms and CNNs for hole detection in wireless sensor networks without requiring sensor location data, improving efficiency and accuracy.
Contribution
The paper presents a new centralized hole detection approach using FD algorithms and CNNs that does not depend on sensor location information, reducing computational complexity.
Findings
Achieves 80% sensitivity in hole detection
Attains 93% specificity in identifying holes
Detects holes in less than 2 minutes
Abstract
Hole detection is a crucial task for monitoring the status of wireless sensor networks (WSN) which often consist of low-capability sensors. Holes can form in WSNs due to the problems during placement of the sensors or power/hardware failure. In these situations, sensing or transmitting data could be affected and can interrupt the normal operation of the WSNs. It may also decrease the lifetime of the network and sensing coverage of the sensors. The problem of hole detection is especially challenging in WSNs since the exact location of the sensors is often unknown. In this paper, we propose a novel hole detection approach called FD-CNN which is based on Force-directed (FD) Algorithm and Convolutional Neural Network (CNN). In contrast to existing approaches, FD-CNN is a centralized approach and is able to detect holes from WSNs without relying on the information related to the location of…
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Taxonomy
TopicsInfrastructure Maintenance and Monitoring · Advanced Fiber Optic Sensors · Structural Health Monitoring Techniques
