Abstract
In this study, we delineate key weather and demographic predictors of override behavior in residential buildings during connected thermostats demand response events. Anticipating and reducing overrides is critical to demand flexibility (DF) program success. We use high- dimensional fixed effects linear regression techniques on a large ecobee dataset for about 5,000 enrolled households in the United States. We identify critical weather (indoor and outdoor temperature), building (housing type), and occupant (previous DF overrides and previous DF event exposure) factors influencing the override patterns of customers during thermostat demand response. We also differentiate DF events by season to understand the different indoor and outdoor conditions that might influence seasonal override rates. We found significant differences in override rates between building types, with single-family semi-detached homes generally having the highest overrides. Having a history of overrides was additionally a critical factor in predicting occupant response to future DF events. Understanding these override differences is necessary for rural electric cooperatives and emerging DF programs without access to large DR historical data. Overall, we provide critical information on technical and local demographic characteristics that may be correlated to building type to influence strategies to reduce overrides and improve the adoption of DF technologies.
Original language | American English |
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Number of pages | 15 |
State | Published - 2022 |
Event | 2022 Summer Study on Energy Efficiency in Buildings - Monterey, California Duration: 21 Aug 2022 → 26 Aug 2022 |
Conference
Conference | 2022 Summer Study on Energy Efficiency in Buildings |
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City | Monterey, California |
Period | 21/08/22 → 26/08/22 |
NREL Publication Number
- NREL/CP-5500-82442
Keywords
- connected thermostats (CTs)
- demand flexibility
- occupant
- override
- season