Document Type
Article
Publication Date
1-1-2021
Publication Source
Energies
Abstract
Energy savings based upon use of smart WiFi thermostats ranging from 10 to 15% have been documented, as new features such as geofencing have been added. Here, a new benefit of smart WiFi thermostats is identified and investigated; namely, as a tool to improve the estimation accuracy of residential energy consumption and, as a result, estimation of energy savings from energy system upgrades, when only monthly energy consumption is metered. This is made possible from the higher sampling frequency of smart WiFi thermostats. In this study, collected smart WiFi data are combined with outdoor temperature data and known residential geometrical and energy characteristics. Most importantly, unique power spectra are developed for over 100 individual residences from the measured thermostat indoor temperature in each and used as a predictor in the training of a singular machine learning models to predict consumption in any residence. The best model yielded a percentage mean absolute error (MAE) for monthly gas consumption +/- 8.6%. Applied to two residences to which attic insulation was added, the resolvable energy savings percentage is shown to be approximately 5% for any residence, representing an improvement in the ASHRAE recommended approach for estimating savings from whole-building energy consumption that is deemed incapable at best of resolving savings less than 10% of total consumption. The approach posited thus offers value to utility-wide energy savings measurement and verification.
ISBN/ISSN
1996-1073
Document Version
Published Version
Publisher
MDPI
Volume
14
Issue
1
Peer Reviewed
yes
eCommons Citation
Alanezi, Abdulrahman; Hallinan, Kevin P.; and Elhashmi, Rodwan, "Using Smart-Wifi Thermostat Data to Improve Prediction of Residential Energy Consumption and Estimation of Savings" (2021). Mechanical and Aerospace Engineering Faculty Publications. 244.
https://ecommons.udayton.edu/mee_fac_pub/244
Comments
This open-access article is provided for download in compliance with the publisher’s policy on self-archiving. To view the version of record, use the DOI: https://doi.org/10.3390/en14010187