2021
DOI: 10.5194/agile-giss-2-9-2021
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Prophet model for forecasting occupancy presence in indoor spaces using non-intrusive sensors

Abstract: Abstract. The Internet of Things is a multi-sensor technology with the unique advantage of supporting non-intrusive and non-device occupancy detection, while also allowing us to explore new forecasting occupancy models. However, forecasting occupancy presence is not a trivial task, since it is still unknown the main criteria in selecting a forecasting modelling approach according to a non-intrusive sensing strategy. Towards this challenge, this paper proposes an analytical workflow developed to support the Pro… Show more

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“…Indeed, our approach resembles geo-fencing approaches which have been proposed by Parise, for instance, in [ 3 ] and [ 4 ]; however, it is a slightly different in terms of positioning. Indeed, although based on zones (or surfaces), our approach uses all the available measurements of the modules and elaborates a surface with the highest probability of presence (a geometry algorithm is then applied).…”
Section: Introduction and Literature Reviewmentioning
confidence: 99%
“…Indeed, our approach resembles geo-fencing approaches which have been proposed by Parise, for instance, in [ 3 ] and [ 4 ]; however, it is a slightly different in terms of positioning. Indeed, although based on zones (or surfaces), our approach uses all the available measurements of the modules and elaborates a surface with the highest probability of presence (a geometry algorithm is then applied).…”
Section: Introduction and Literature Reviewmentioning
confidence: 99%