For residential houses, the air conditioning (AC) units are one of the major resources that can provide significant flexibility in energy use for the purpose of demand response. To quantify the flexibility, the characteristics of all the houses need to be accurately estimated, so that certain house models can be used to predict the dynamics of the house temperatures in order to adjust the setpoints accordingly to provide demand response while maintaining the same comfort levels. In this paper, we propose an approach using the Reverse Monte Carlo modeling method and aggregate house models to calibrate the distribution parameters of the house models for a population of residential houses. Given the aggregate AC power demand for the population, the approach can successfully estimate the distribution parameters for the sensitive physical parameters based on our previous uncertainty quantification study, such as the mean of the floor areas of the houses.
Revised: June 4, 2018 |
Published: July 16, 2017
Citation
Sun Y., A.J. Stevens, J. Lian, and S. Lu. 2017.Calibrating Physical Parameters in House Models Using Aggregate AC Power Demand. In IEEE Power & Energy General Meeting, July 16-20, 2017, Chicago, Illinois.PNNL-SA-122198.doi:10.1109/PESGM.2017.8273980