Predicting indoor temperature from smart thermostat and weather forecast data

Resource type
Conference Paper
Authors/contributors
Title
Predicting indoor temperature from smart thermostat and weather forecast data
Abstract
Analyzing thermostat data together with outdoor weather to predict indoor temperature can help smart thermostats optimize the operation of a residential building's HVAC system and make buildings more comfortable. Using weather forecasts, these smart thermostats can become proactive in responding to actual and future outdoor conditions. Using the ecobee thermostat data from sixteen Canadian and US houses, the prediction accuracy of the generalized regression neural network (GRNN) algorithm and the resilient back propagation neural network (ANN) algorithm were evaluated. Solar radiation was added to the data available from the smart thermostat to account for the effect of passive heating. GRNN proved to be a better predictor with a lower MSE and a maximum of 7.5°C deviation from actual measurements.
Date
April 15, 2018
Proceedings Title
Proceedings of the Communications and Networking Symposium
Conference Name
2018 Spring Simulation Multi-Conference
Place
San Diego, CA, USA
Publisher
Society for Computer Simulation International
Pages
1–12
Series
CNS '18
ISBN
978-1-5108-6015-5
Accessed
2024-02-13
Library Catalogue
ACM Digital Library
Call Number
openalex:W4236330255
Extra
openalex: W4236330255
Citation
Yu, D., Abhari, A., Fung, A. S., Raahemifar, K., & Mohammadi, F. (2018). Predicting indoor temperature from smart thermostat and weather forecast data. Proceedings of the Communications and Networking Symposium, 1–12. https://doi.org/10.22360/SpringSim.2018.CNS.012