Current research studies show that building heating, cooling and ventilation energy
consumption account for nearly 40% of the total building energy use in the U.S. The
potential for saving energy through building control systems varies from 5% to 20%
based on recent market surveys. In addition, building control affects environmental
performances such as thermal, visual, air quality, etc., and occupancy such as working
productivity and comfort. Building control has been proven to be important both in
design and operation stages.
Building control design and operation need consistent and reliable static and dynamic
information from multiple resources. Static information includes building geometry,
construction and HVAC equipment. Dynamic information includes zone environmental
performance, occupancy and outside weather information during operation.. At the same
time, model-based predicted control can help to optimize energy use while maintaining
indoor set-point temperature when occupied. Unfortunately, several issues in the current
approach of building control design and operation impede achieving this goal. These
issues include: a) dynamic information data such as real-time on-site weather (e.g.,
temperature, wind speed and solar radiation) and occupancy (number of occupants and
occupancy duration in the space) are not readily available; b) a comprehensive building
energy model is not fully integrated into advanced control for accuracy and robustness; c)
real-time implementation of indoor air temperature control are rare. This dissertation
aims to investigate and solve these issues based on an integrated building control
approach.
This dissertation introduces and illustrates a method for integrated building heating,
cooling and ventilation control to reduce energy consumption and maintain indoor
temperature set-point, based on the prediction of occupant behavior patterns and weather
conditions. Advanced machine learning methods including Adaptive Gaussian Process,
Hidden Markov Model, Episode Discovery and Semi-Markov Model are modified and
implemented into this dissertation. A nonlinear Model Predictive Control (NMPC) is
designed and implemented in real-time based on Dynamic Programming. The experiment
test-bed is setup in the Solar Decathlon House (2005), with over 100 sensor points
measuring indoor environmental parameters such as temperature, relative humidity, CO2,
lighting, motion and acoustics, and power consumption for electrical plugs, HVAC and
lighting. The outdoor environmental parameters, such as temperature, relative humidity,
CO2, global horizontal solar radiation and wind speed, are measured by the on-site
weather station. The designed controller is implemented through LabVIEW.
The experiments are carried out for two continuous months in the heating season and for
a week in cooling season. The results show that there is a 26% measured energy
reduction in the heating season compared with the scheduled temperature set-points, and
17.8% energy reduction in the cooling season. Further simulation-based results show that
with tighter building façade, the cooling energy reduction could reach 20%. Overall, the
heating, cooling and ventilation energy reduction could reach nearly 50% based on this
integrated control approach for the entire heating/cooling testing periods compared to the
conventional scheduled temperature set-point.