Detecting Anomalies within Smart Buildings using Do-It-Yourself Internet
of Things
- URL: http://arxiv.org/abs/2210.01840v1
- Date: Tue, 4 Oct 2022 18:16:36 GMT
- Title: Detecting Anomalies within Smart Buildings using Do-It-Yourself Internet
of Things
- Authors: Yasar Majib, Mahmoud Barhamgi, Behzad Momahed Heravi, Sharadha
Kariyawasam, Charith Perera
- Abstract summary: This paper discussed the various mechanisms to detect anomalies as soon as they occur.
We constructed and gathered data from multiple self-build (DIY) IoT devices with different in-situ sensors.
This paper also looks at the pros and cons of extracting sub-datasets based on environmental conditions.
- Score: 1.233704313688752
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Detecting anomalies at the time of happening is vital in environments like
buildings and homes to identify potential cyber-attacks. This paper discussed
the various mechanisms to detect anomalies as soon as they occur. We shed light
on crucial considerations when building machine learning models. We constructed
and gathered data from multiple self-build (DIY) IoT devices with different
in-situ sensors and found effective ways to find the point, contextual and
combine anomalies. We also discussed several challenges and potential solutions
when dealing with sensing devices that produce data at different sampling rates
and how we need to pre-process them in machine learning models. This paper also
looks at the pros and cons of extracting sub-datasets based on environmental
conditions.
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