Title :
Machine learning and multimedia content generation for energy demand reduction
Author :
Goddard, N.H. ; Moore, J.D. ; Sutton, C.A. ; Lovell, H. ; Webb, J.
Author_Institution :
Sch. of Inf., Univ. of Edinburgh, Edinburgh, UK
Abstract :
Domestic energy demand accounts for about 30% of overall energy use. The IDEAL project uses a variety of IT methods to investigate whether, and in which social groups, feedback of personalised, household-specific and behaviour-specific information results in greater reduction in energy use than overall consumption information reported by Smart Meters. It is a sociotechnical study, concentrated on existing housing, with a strong social science component and an experimental design that looks at income levels and household composition as primary factors. Temperature and humidity data related to behaviour is gathered using a small number of wireless sensors in the home, together with data on weather, building factors and household composition. This data is streamed over the internet to servers where it is analysed using Bayesian machine-learning methods to extract household-specific behaviours in near-realtime. Information on the cost, carbon content and amount of energy used for specific behaviours is reported back to the householders via a dedicated wireless tablet. This interactive content is automatically generated using multimedia methods based on natural language generation techniques. The project is in its design phase, with the main project planned (and funded) to run 2013-2016. It is anticipated to demonstrate whether such low-cost sensing, analysis and feedback is significantly more effective than standard Smart Meters in reducing demand, and a business opportunity for green service organisations.
Keywords :
Internet; belief networks; building management systems; demand side management; green computing; humidity sensors; interactive systems; learning (artificial intelligence); media streaming; meteorology; natural language processing; notebook computers; socio-economic effects; temperature sensors; wireless sensor networks; Bayesian machine learning method; IDEAL project; IT methods; Internet; automatic interactive content generation; behaviour-specific information; building factors; business opportunity; carbon content; cost information; data streaming; domestic energy demand; energy demand reduction; energy use reduction; green service organisations; household composition; household-specific behaviours; household-specific information; humidity data; income levels; low-cost analysis; low-cost sensing; multimedia content generation; natural language generation techniques; personalised information; social groups; sociotechnical study; temperature data; weather data; wireless sensors; wireless tablet; Electricity; Gas detectors; Heating; Humidity; Temperature sensors; Wireless sensor networks; building energy efficiency; demand reduction; human-computer interaction; machine learning; natural language generation;
Conference_Titel :
Sustainable Internet and ICT for Sustainability (SustainIT), 2012
Conference_Location :
Pisa
Print_ISBN :
978-1-4673-2031-3