ENCOVIZ: An open-source, secure and multi-role energy consumption
visualisation platform
- URL: http://arxiv.org/abs/2305.05303v1
- Date: Tue, 9 May 2023 09:48:09 GMT
- Title: ENCOVIZ: An open-source, secure and multi-role energy consumption
visualisation platform
- Authors: Efstratios Voulgaris, Ilias Dimitriadis, Dimitrios P. Giakatos, Athena
Vakali, Athanasios Papakonstantinou, Dimitris Chatzigiannis
- Abstract summary: We present the ENCOVIZ platform, a multi-role, secure, energy consumption visualization platform with built-in analytics.
ENCOVIZ has been built in accordance with the best visualisation practices, on top of open source technologies.
- Score: 1.181393338951936
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The need for a more energy efficient future is now more evident than ever and
has led to the continuous growth of sectors with greater potential for energy
savings, such as smart buildings, energy consumption meters, etc. The large
volume of energy related data produced is a huge advantage but, at the same
time, it creates a new problem; The need to structure, organize and efficiently
present this meaningful information. In this context, we present the ENCOVIZ
platform, a multi-role, extensible, secure, energy consumption visualization
platform with built-in analytics. ENCOVIZ has been built in accordance with the
best visualisation practices, on top of open source technologies and includes
(i) multi-role functionalities, (ii) the automated ingestion of energy
consumption data and (iii) proper visualisations and information to support
effective decision making both for energy providers and consumers.
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