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arxiv: 1905.05015 · v1 · pith:QM2TMUP4new · submitted 2019-05-13 · 💻 cs.CY · cs.NI

A resource-based rule engine for energy savings recommendations in educational buildings

classification 💻 cs.CY cs.NI
keywords energysavingsbuildingsengineachievingawarenessefficiencyrecommendations
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Raising awareness among young people on the relevance of behaviour change for achieving energy savings is widely considered as a key approach towards long-term and cost-effective energy efficiency policies. The GAIA Project aims to deliver a comprehensive solution for both increasing awareness on energy efficiency and achieving energy savings in school buildings. In this framework, we present a novel rule engine that, leveraging a resource-based graph model encoding relevant application domain knowledge, accesses IoT data for producing energy savings recommendations. The engine supports configurability, extensibility and ease-of-use requirements, to be easily applied and customized to different buildings. The paper introduces the main design and implementation details and presents a set of preliminary performance results.

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