Intelligent edge-based recommender system for internet of energy
applications
- URL: http://arxiv.org/abs/2111.13272v1
- Date: Thu, 25 Nov 2021 23:28:14 GMT
- Title: Intelligent edge-based recommender system for internet of energy
applications
- Authors: Aya Sayed, Yassine Himeur, Abdullah Alsalemi, Faycal Bensaali and
Abbes Amira
- Abstract summary: This paper presents the full integration of a proposed energy efficiency framework into the Home-Assistant platform using an edge-based architecture.
End-users can visualize their consumption patterns as well as ambient environmental data using the Home-Assistant user interface.
More notably, explainable energy-saving recommendations are delivered to end-users in the form of notifications via the mobile application.
- Score: 2.1874189959020423
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Preserving energy in households and office buildings is a significant
challenge, mainly due to the recent shortage of energy resources, the uprising
of the current environmental problems, and the global lack of utilizing
energy-saving technologies. Not to mention, within some regions, COVID-19
social distancing measures have led to a temporary transfer of energy demand
from commercial and urban centers to residential areas, causing an increased
use and higher charges, and in turn, creating economic impacts on customers.
Therefore, the marketplace could benefit from developing an internet of things
(IoT) ecosystem that monitors energy consumption habits and promptly recommends
action to facilitate energy efficiency. This paper aims to present the full
integration of a proposed energy efficiency framework into the Home-Assistant
platform using an edge-based architecture. End-users can visualize their
consumption patterns as well as ambient environmental data using the
Home-Assistant user interface. More notably, explainable energy-saving
recommendations are delivered to end-users in the form of notifications via the
mobile application to facilitate habit change. In this context, to the best of
the authors' knowledge, this is the first attempt to develop and implement an
energy-saving recommender system on edge devices. Thus, ensuring better privacy
preservation since data are processed locally on the edge, without the need to
transmit them to remote servers, as is the case with cloudlet platforms.
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