REFIT Smart Home dataset
This dataset is maintained by Steven Firth (s.k.firth@lboro.ac.uk), Building Energy Research Group (BERG), School of Civil and Building Engineering, Loughborough University. The REFIT project (www.refitsmarthomes.org) carried out a study from 2013 to 2015 in which 20 UK homes were upgraded to Smart...
Saved in:
Main Authors: | , , , , , , |
---|---|
Format: | Data Data |
Published: |
2017
|
Subjects: | |
Online Access: | https://dx.doi.org/10.17028/rd.lboro.2070091.v1 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
id |
rr-article-2070091 |
---|---|
record_format |
Figshare |
spelling |
rr-article-20700912017-06-20T10:53:45Z REFIT Smart Home dataset Steven Firth (1171635) Tom Kane (1171650) Vanda Dimitriou (1249251) Tarek Hassan (1258917) Farid Fouchal (1257561) Michael Coleman (42866) Lynda Webb (1254219) Building science, technologies and systems REFIT Building Energy Research Group End use energy demand Smart Homes Household energy use Sensors Energy monitoring Building energy TEDDINET Building Science and Techniques <p> This dataset is maintained by Steven Firth (<a href="mailto:s.k.firth@lboro.ac.uk">s.k.firth@lboro.ac.uk</a>), Building Energy Research Group (BERG), School of Civil and Building Engineering, Loughborough University.</p><p> The REFIT project (<a href="http://www.refitsmarthomes.org">www.refitsmarthomes.org</a>) carried out a study from 2013 to 2015 in which 20 UK homes were upgraded to Smart Homes through the installation of devices including Smart Meters, programmable thermostats, programmable radiator valves, motion sensors, door sensors and window sensors.</p><p>Data was collected using building surveys, sensor placements and household interviews.</p><p>The REFIT Smart Home dataset is one of the datasets made publically available by the project. This dataset includes:</p><p> - Building survey data for the 20 homes.</p><p> - Sensor measurements made before the Smart Home equipment was installed.</p><p> - Sensor measurements made after the Smart Home equipment was installed.</p><p> - Climate data recorded at a nearby weather station.</p><p>---<br> This work has been carried out as part of the REFIT project (‘Personalised Retrofit Decision Support Tools for UK Homes using Smart Home Technology’, Grant Reference EP/K002457/1). REFIT is a consortium of three universities - Loughborough, Strathclyde and East Anglia - and ten industry stakeholders funded by the Engineering and Physical Sciences Research Council (EPSRC) under the Transforming Energy Demand in Buildings through Digital Innovation (BuildTEDDI) funding programme. For more information see: <a href="http://www.epsrc.ac.uk/">www.epsrc.ac.uk</a> and <a href="http://www.refitsmarthomes.org/">www.refitsmarthomes.org</a></p><p>---<br>The references below provide links to the REFIT project website, the TEDDINET website, a journal article which uses the dataset, and three additional datasets collected as part of the REFIT project by the University of Strathclyde and the University of East Anglia.</p> 2017-06-20T10:53:45Z Dataset Dataset 10.17028/rd.lboro.2070091.v1 https://figshare.com/articles/dataset/REFIT_Smart_Home_dataset/2070091 CC BY 4.0 |
institution |
Loughborough University |
collection |
Figshare |
topic |
Building science, technologies and systems REFIT Building Energy Research Group End use energy demand Smart Homes Household energy use Sensors Energy monitoring Building energy TEDDINET Building Science and Techniques |
spellingShingle |
Building science, technologies and systems REFIT Building Energy Research Group End use energy demand Smart Homes Household energy use Sensors Energy monitoring Building energy TEDDINET Building Science and Techniques Steven Firth Tom Kane Vanda Dimitriou Tarek Hassan Farid Fouchal Michael Coleman Lynda Webb REFIT Smart Home dataset |
description |
This dataset is maintained by Steven Firth (s.k.firth@lboro.ac.uk), Building Energy Research Group (BERG), School of Civil and Building Engineering, Loughborough University. The REFIT project (www.refitsmarthomes.org) carried out a study from 2013 to 2015 in which 20 UK homes were upgraded to Smart Homes through the installation of devices including Smart Meters, programmable thermostats, programmable radiator valves, motion sensors, door sensors and window sensors.Data was collected using building surveys, sensor placements and household interviews.The REFIT Smart Home dataset is one of the datasets made publically available by the project. This dataset includes: - Building survey data for the 20 homes. - Sensor measurements made before the Smart Home equipment was installed. - Sensor measurements made after the Smart Home equipment was installed. - Climate data recorded at a nearby weather station.--- This work has been carried out as part of the REFIT project (‘Personalised Retrofit Decision Support Tools for UK Homes using Smart Home Technology’, Grant Reference EP/K002457/1). REFIT is a consortium of three universities - Loughborough, Strathclyde and East Anglia - and ten industry stakeholders funded by the Engineering and Physical Sciences Research Council (EPSRC) under the Transforming Energy Demand in Buildings through Digital Innovation (BuildTEDDI) funding programme. For more information see: www.epsrc.ac.uk and www.refitsmarthomes.org---The references below provide links to the REFIT project website, the TEDDINET website, a journal article which uses the dataset, and three additional datasets collected as part of the REFIT project by the University of Strathclyde and the University of East Anglia. |
format |
Data Data |
author |
Steven Firth Tom Kane Vanda Dimitriou Tarek Hassan Farid Fouchal Michael Coleman Lynda Webb |
author_facet |
Steven Firth Tom Kane Vanda Dimitriou Tarek Hassan Farid Fouchal Michael Coleman Lynda Webb |
author_sort |
Steven Firth (1171635) |
title |
REFIT Smart Home dataset |
title_short |
REFIT Smart Home dataset |
title_full |
REFIT Smart Home dataset |
title_fullStr |
REFIT Smart Home dataset |
title_full_unstemmed |
REFIT Smart Home dataset |
title_sort |
refit smart home dataset |
publishDate |
2017 |
url |
https://dx.doi.org/10.17028/rd.lboro.2070091.v1 |
_version_ |
1797735432468824064 |