A semantic web approach to uplift decentralized household energy data
- URL: http://arxiv.org/abs/2208.10265v1
- Date: Thu, 18 Aug 2022 17:21:18 GMT
- Title: A semantic web approach to uplift decentralized household energy data
- Authors: Jiantao Wu, Fabrizio Orlandi, Tarek AlSkaif, Declan O'Sullivan, and
Soumyabrata Dev
- Abstract summary: Many databases in this field are siloed from other domains, including solely information pertaining to energy.
This may result in the loss of information (textite.g. weather) on each device's energy use.
This article tackles the data isolation issue in the field of smart energy systems by examining Semantic Web methods on top of a household energy system.
- Score: 4.233200689119682
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In a decentralized household energy system comprised of various devices such
as home appliances, electric vehicles, and solar panels, end-users are able to
dig deeper into the system's details and further achieve energy sustainability
if they are presented with data on the electric energy consumption and
production at the granularity of the device. However, many databases in this
field are siloed from other domains, including solely information pertaining to
energy. This may result in the loss of information (\textit{e.g.} weather) on
each device's energy use. Meanwhile, a large number of these datasets have been
extensively used in computational modeling techniques such as machine learning
models. While such computational approaches achieve great accuracy and
performance by concentrating only on a local view of datasets, model
reliability cannot be guaranteed since such models are very vulnerable to data
input fluctuations when information omission is taken into account. This
article tackles the data isolation issue in the field of smart energy systems
by examining Semantic Web methods on top of a household energy system. We offer
an ontology-based approach for managing decentralized data at the device-level
resolution in a system. As a consequence, the scope of the data associated with
each device may easily be expanded in an interoperable manner throughout the
Web, and additional information, such as weather, can be obtained from the Web,
provided that the data is organized according to W3C standards.
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