Minimising coverage holes for prediction-based mobile object target tracking in wireless sensor networks
The use of small, cheap, networked devices to perform a collaborative task presents an attractive opportunity in many scenarios. One such scenario is tracking the coverage hole in sensing area and tracking an object moving through the region of interest in Wireless Sensor Network (WSN). This thes...
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Main Author: | |
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Format: | Thesis |
Language: | English |
Published: |
2017
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Subjects: | |
Online Access: | http://psasir.upm.edu.my/id/eprint/89865/1/FK%202020%201%20ir.pdf http://psasir.upm.edu.my/id/eprint/89865/ |
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Summary: | The use of small, cheap, networked devices to perform a collaborative task presents
an attractive opportunity in many scenarios. One such scenario is tracking the
coverage hole in sensing area and tracking an object moving through the region of
interest in Wireless Sensor Network (WSN). This thesis presents a new framework for
tracking coverage hole and mobile object in wireless sensor network. Existing
algorithms have been integrated and extended with this framework to perform target
tracking for coverage hole in the Region of Interest (ROI) and tracking mobile object
whilst managing accuracy of tracking and energy usage, in order to increase the
lifetime of a sensor network. The node dies after energy depletion, and such
consequence causes holes in the coverage area to be created. In a sensor network with
movement capabilities, nodes can be moved to make redeployment. Hence, work
presented in this thesis could be useful to WSN algorithms developers, and also to
people who plan the deployment of nodes in a region of interest.
This thesis focuses on tracking moving objects scenarios, but the research presented
is not limited to this. The aim is to increase the coverage environment through smaller
mobility of sensor nodes, such that mobility distance is limited to 1-hop, and coverage
of the nodes are not increased. By securing full coverage with no coverage
hole, accuracy of target tracking can be improved. Novel improvement is presented
here in performing target tracking of mobile objects where the target moves in a linear
fashion. This thesis proposes a prediction-based scheme called Face-based Target
Tracking Technique (FTTT) to minimize energy depletion and prolong the lifetime
for sensor node while accurately tracking mobile objects. This strategy of tracking
mobile objects will influence accuracy of mobile objects tracking. In addition, we
also introduce schemes for object tracking recovery to figure out the problem of object
tracking loss. Through analysis from the simulation results, our presented prediction based scheme for tracking movable object can efficiently preserve energy and
perfectly attain the aim of tracking mobile objects concurrently and accurately.
From the simulation results, the proposed coverage hole algorithm shows a coverage
gain of up to 14%. However, on average, the proposed vector space algorithm shows
3% to 4% improvement in the percentage coverage, as compared to the previous algorithm.
In the scenario of target tracking, the proposed prediction-based scheme for
tracking mobile object can efficiently preserve energy and perfectly attain the aim of
tracking moving mobile object concurrently. The proposed prediction-based optimistic
object tracking scheme can save up to 24% energy consumption as compared
to the related works. The accuracy of FTTT is still higher than 98%, which shows that
optimistic design does not influence the tracking accuracy. Thus, FTTT appear to
successfully conserve energy and accomplish the objective of moving objects
tracking. |
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