Identifying models of HVAC systems using semiparametric regression

Heating, ventilation, and air-conditioning (HVAC) systems use a large amount of energy, and so they are an interesting area for efficiency improvements. The focus here is on the use of semiparametric regression to identify models, which are amenable to analysis and control system design, of HVAC systems. This paper briefly describes two testbeds that we have built on the Berkeley campus for modeling and efficient control of HVAC systems, and we use these testbeds as case studies for system identification. The main contribution of this work is that the use of semiparametric regression allows for the estimation of the heating load from occupancy, equipment, and solar heating using only temperature measurements. These estimates are important for building accurate models as well as designing efficient control schemes, and in our other work we have been able to achieve a reduction in energy consumption on a single room testbed using heating load estimation in conjunction with the learning-based model predictive control (LBMPC) technique. Furthermore, this framework is not restrictive to modeling nonlinear HVAC behavior, because we have been able to use this methodology to create hybrid system models that incorporate such nonlinearities.

[1]  Sunil Ahuja,et al.  Reduced-order models for control of stratified flows in buildings , 2011, Proceedings of the 2011 American Control Conference.

[2]  Chenda Liao,et al.  An integrated approach to occupancy modeling and estimation in commercial buildings , 2010, Proceedings of the 2010 American Control Conference.

[3]  J. Lygeros,et al.  A game theoretic approach to controller design for hybrid systems , 2000, Proceedings of the IEEE.

[4]  Andrew G. Alleyne,et al.  Optimal control architecture selection for thermal control of buildings , 2011 .

[5]  Daniel E. Fisher,et al.  EnergyPlus: creating a new-generation building energy simulation program , 2001 .

[6]  M Morari,et al.  Energy efficient building climate control using Stochastic Model Predictive Control and weather predictions , 2010, Proceedings of the 2010 American Control Conference.

[7]  K. Do,et al.  Efficient and Adaptive Estimation for Semiparametric Models. , 1994 .

[8]  George J. Pappas,et al.  Receding-horizon supervisory control of green buildings , 2011, Proceedings of the 2011 American Control Conference.

[9]  Matthew S. Elliott,et al.  Cascaded superheat control with a multiple evaporator refrigeration system , 2011, Proceedings of the 2011 American Control Conference.

[10]  Yanpei Chen,et al.  An information-centric energy infrastructure: The Berkeley view , 2011, Sustain. Comput. Informatics Syst..

[11]  Prabir Barooah,et al.  A novel stochastic agent-based model of building occupancy , 2011, Proceedings of the 2011 American Control Conference.

[12]  David E. Culler,et al.  Reducing Transient and Steady State Electricity Consumption in HVAC Using Learning-Based Model-Predictive Control , 2012, Proceedings of the IEEE.

[13]  Xiaofan Jiang,et al.  Enabling green building applications , 2010, HotEmNets.

[14]  P. Robinson ROOT-N-CONSISTENT SEMIPARAMETRIC REGRESSION , 1988 .

[15]  Francesco Borrelli,et al.  A distributed predictive control approach to building temperature regulation , 2011, Proceedings of the 2011 American Control Conference.

[16]  Kwang Ho Lee,et al.  Influence of raised floor on zone design cooling load in commercial buildings , 2010 .

[17]  Drury B. Crawley,et al.  EnergyPlus: Energy simulation program , 2000 .

[18]  John Lygeros,et al.  Controllers for reachability specifications for hybrid systems , 1999, Autom..

[19]  Thomas Weng,et al.  Occupancy-driven energy management for smart building automation , 2010, BuildSys '10.

[20]  S. Shankar Sastry,et al.  Provably safe and robust learning-based model predictive control , 2011, Autom..

[21]  Sean P. Meyn,et al.  Building thermal model reduction via aggregation of states , 2010, Proceedings of the 2010 American Control Conference.

[22]  Prabir Barooah,et al.  A Method for model-reduction of nonlinear building thermal dynamics , 2011, Proceedings of the 2011 American Control Conference.

[23]  Jeff W. Thornton,et al.  TRNSYS - FEATURES AND FUNCTIONALITITY FOR BUILDING SIMULATION 2009 CONFERENCE , 2009 .