2017 14th International Symposium on Pervasive Systems, Algorithms and Networks &Amp; 2017 11th International Conference on Fro 2017
DOI: 10.1109/ispan-fcst-iscc.2017.60
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Smart Home Futures: Algorithmic Challenges and Opportunities

Abstract: Humans are increasingly spending their time indoors. This, along with higher wealth levels and rise of internet of things, has provided designers and planners the opportunity to reimagine living spaces. Smart homes come in many different shapes, but to gain widespread acceptance they have to increase the utility of building occupants in some meaningful way. The most straightforward way of creating these smart homes is assumed to be through artificial intelligence. In this paper, we take a critical look at some… Show more

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Cited by 13 publications
(6 citation statements)
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“…In the smart home paradigm, the user plays a main role where the HEMS gets data from human-appliances interaction for (1) data and user classification, (2) scheduling the appliances according to the user preference and electricity cost, (3) providing services to the user. Human-appliances interaction data consist of (a) Time horizon data, weather data, electricity price data, zone wise ambient temperature, and user up-to-date location-based data and actions performed by user contained data, (b) control signal data related to appliances, and (c) indoor and outdoor temperature data, and user comfort preference data about services provided by household appliances [18,19].…”
Section: Introductionmentioning
confidence: 99%
“…In the smart home paradigm, the user plays a main role where the HEMS gets data from human-appliances interaction for (1) data and user classification, (2) scheduling the appliances according to the user preference and electricity cost, (3) providing services to the user. Human-appliances interaction data consist of (a) Time horizon data, weather data, electricity price data, zone wise ambient temperature, and user up-to-date location-based data and actions performed by user contained data, (b) control signal data related to appliances, and (c) indoor and outdoor temperature data, and user comfort preference data about services provided by household appliances [18,19].…”
Section: Introductionmentioning
confidence: 99%
“…This reinforcement learning trend, for the formulated problem, is not only found in the thermal energy sector (at the building level, e.g. [25]), but also in the electrical energy sector, e.g. as reviewed in [26], and formally presented in the unit commitment [27] and in the economic dispatch problem [28].…”
Section: Discussionmentioning
confidence: 89%
“…It has been forecast that this year may mark the decade of the IoT Enterprise category due to the internet's recent surge in popularity. Concerns over IoT security's impact on growth and advancement have also been raised [1][2][3][4]. The public persisted in drawing attention to the shortcomings and holes in every product that connects to the internet.…”
Section: Introductionmentioning
confidence: 99%