Title :
Hybrid calibration methodology for building energy models coupling sensor data and stochastic modeling
Author :
Miller, Colin ; Huafen Hu ; Klesch, Lucas
Author_Institution :
Mech. & Mater. Eng. Dept., Portland State Univ., Portland, OR, USA
Abstract :
Calibrated detailed energy models are often used to identify economic deep retrofit opportunities in existing buildings. But the uncertainty in building performance makes it technically unrealistic to reach a single “best fit” model without extensive sub-metering and domain experts on the project which is typically labor intensive. To address this problem, researchers have been adopting stochastic modeling as a more reliable approach to calibrate building energy models. A set of all plausible models is found, rather than a best fit model, which accounts for uncertainties in existing building properties and conditions. In addition, sensor data collected from within a building can be used to identify key operational characteristics such as setpoint temperatures, carbon-dioxide levels, light levels, and temperature setbacks. This paper presents a hybrid calibration methodology for building energy models using a combination of short-term wireless sensor data, 15-min interval smart meter data and stochastic modeling. The hybrid approach provides a means to calibrate the operational variables and physical variables separately, reducing potential bias and errors and to reach a set of plausible model solutions. A case study is presented to demonstrate the strength of the calibration methodology.
Keywords :
building management systems; calibration; carbon compounds; maintenance engineering; smart meters; CO2; building conditions; building energy models; building performance uncertainty; building properties; carbon-dioxide levels; coupling sensor data; hybrid calibration methodology; retrofit opportunities; setpoint temperatures; short-term wireless sensor data; smart meter data; stochastic modeling; temperature setbacks; Atmospheric modeling; Biological system modeling; Buildings; Calibration; Data models; Electricity; Stochastic processes;
Conference_Titel :
Technologies for Sustainability (SusTech), 2013 1st IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/SusTech.2013.6617295