Building a Neighborhood Resource Map for IoT and Cyber-Physical systems in Resource-Constrained Environments
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https://hdl.handle.net/10037/25931Åpne
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Extra material (source code and results) (Ukjent)
Dato
2022-05-12Type
Master thesisMastergradsoppgave
Forfatter
Sønvisen, SindreSammendrag
Creating and maintaining a shared resource map between observation nodes
that have a behavior where they are mostly sleeping, and have a wake up
schedule that are determined at each node locally is challenging. This thesis looks
at these challenges, and possible solutions have been proposed to overcome
them.
Previous research on the topic of constrained IoT networks have looked at the
network, energy, and human constraints separately. But no one has looked at
what is needed when all the limitations have to be accounted for simultaneously.
Three methods for exchanging resource descriptions are created in this
paper.
To evaluate the different exchange methods with different node behaviors, a
custom simulator is made. The simulator will simulate communication and
resource description exchanges between nodes.
The results show that different node behavior has a drastic affect on when each
of the exchange methods work best. The main contribution of this paper is to
guide designers of IoT and sensor networks, when they are choosing how the
nodes will behave in resource constrained environments.
And the main conclusion are that when there are complete overlap of node
behavior, the best method to spread resource descriptions is; to have everyone
just sharing description for its own resource. When the nodes are not guaranteed
to overlap, some other techniques for exchanging information must
be used, like SLM or SLMV that are presented in this paper. Also when there
is no overlap, the node behavior becomes even more important. Structuring
the wakeup schedules even a bit can help improve overall time to create the
resource map.
Forlag
UiT Norges arktiske universitetUiT The Arctic University of Norway
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