skip to main content
OSTI.GOV title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: Development and Evaluation of Occupancy-Aware Model Predictive Control for Residential Building Energy Efficiency and Occupant Comfort

Conference ·

The residential sector accounts for 25% of global primary energy consumption. Two methods have previously been proposed to reduce residential energy use associated with the provision of occupant thermal comfort: 1. Occupancy-based HVAC control, operating systems only during confirmed occupancy, and 2. model predictive control (MPC), harnessing a mathematical model and forecasts to find optimal operating strategies. Previous studies estimate the average energy savings of the two methods individually in the range of 21% and 16%, respectively. The research presented herein was carried out to evaluate the energy savings potential in residential buildings by combining both approaches across different climates, house vintages, and occupancy patterns. Occupancy and eight different physical modalities (e.g. CO2 and VOC) data were collected from five homes for time periods of 4–9 weeks. Collected data sets were used to train occupancy prediction models suggested by an extensive literature survey of occupancy model types. The trained prediction models were combined with MPC and detailed EnergyPlus building simulation models to evaluate residential building performance in terms of annual energy savings and thermal comfort, along with discomfort exceedance metrics. Multiple home types and regions were analyzed to understand regional and climate-dependent potential. Based on actual field data, the occupancy models had a prediction inaccuracy between 8% and 35% across the investigated homes. Average occupancy for the collected data ranged from 56% to 86%, a typical range reported in the literature. Building simulations were conducted for three control scenarios: conventional thermostatic control, occupancy-based, and occupancy-based MPC. The results indicate that all advanced strategies improve upon the conventional control, with some scenarios cutting energy use in half with only occasional incurrence of discomfort. The findings indicate that occupancy-aware model predictive residential building control has the potential to drastically reduce energy use and associated emissions while maintaining occupant comfort for both new and existing buildings.

Research Organization:
National Renewable Energy Lab. (NREL), Golden, CO (United States)
Sponsoring Organization:
USDOE Office of Energy Efficiency and Renewable Energy (EERE)
DOE Contract Number:
DE-AC36-08GO28308
OSTI ID:
1755741
Report Number(s):
NREL/CP-5500-78726; MainId:32643; UUID:b450b11b-0690-4fcc-ae09-32be3b24d6c1; MainAdminID:19076
Resource Relation:
Conference: Presented at the World Sustainable Built Environment Conference - Beyond 2020, 2-4 November 2020, Gothenburg, Sweden
Country of Publication:
United States
Language:
English

References (10)

How people use thermostats in homes: A review journal December 2011
A simulation approach to estimate energy savings potential of occupant behavior measures journal February 2017
Turning up the heat on obsolete thermostats: A simulation-based comparison of intelligent control approaches for residential heating systems journal August 2017
The twin rivers program on energy conservation in housing: Highlights and conclusions journal April 1978
The human dimensions of energy use in buildings: A review journal January 2018
Occupant behavior in building energy simulation: Towards a fit-for-purpose modeling strategy journal June 2016
Predicting people's presence in buildings: An empirically based model performance analysis journal January 2015
Revealing occupancy patterns in an office building through the use of occupancy sensor data journal December 2013
The sensitivity of building performance simulation results to the choice of occupants’ presence models: a case study journal December 2015
A model predictive control optimization environment for real-time commercial building application journal May 2013