Low-order building model identification in presence of unmeasured disturbance for predictive control strategies

Predictive control strategies for building heating and cooling systems have been proposed as an energy efficient alternative to traditional strategies. The performance of such strategies is highly dependent on the underlying system models used. In an effective strategy, these models used are required to be accurate enough for informative predictions to be made yet simple enough to be used within a numerical optimization problem. Identification of such models from measured data may not be trivial in the presence of a large amount of unmeasured disturbance. In this paper, methods for deriving low-order zone models in the presence of unknown disturbances are considered. A high-order RC-network representing the complexity of a building is used to generate data for the identification process. An estimate of the disturbance affecting each zone of the network is first developed using Kalman filtering. Disturbances common to several zones are isolated by a spatial filtering process using principal component analysis. The new disturbance estimates are then included in the model identification formulation. The models and disturbance estimates are refined through several iterations of the process. Significantly improved prediction accuracy is shown to result when the disturbance estimates are incorporated.

[1]  Jin Wen,et al.  Review of building energy modeling for control and operation , 2014 .

[2]  Lennart Ljung,et al.  System identification (2nd ed.): theory for the user , 1999 .

[3]  Manfred Morari,et al.  Stochastic Model Predictive Control for Building Climate Control , 2014, IEEE Transactions on Control Systems Technology.

[4]  Ian T. Jolliffe,et al.  Principal Component Analysis , 2002, International Encyclopedia of Statistical Science.

[5]  Gordon Lightbody,et al.  Scalable, reconfigurable Model Predictive Control for building heating systems , 2015, 2015 European Control Conference (ECC).

[6]  W. Beckman,et al.  Solar Engineering of Thermal Processes: Duffie/Solar Engineering 4e , 2013 .

[7]  Dominique Marchio,et al.  Development and validation of a gray box model to predict thermal behavior of occupied office buildings , 2014 .

[8]  I. Jolliffe Principal Component Analysis , 2002 .

[9]  Mahdi Shahbakhti,et al.  Building Efficiency and Sustainability in the Tropics ( SinBerBEST ) Title Handling model uncertainty in model predictive control for energy efficient buildings Permalink , 2014 .

[10]  Christian Ghiaus,et al.  Optimal temperature control of intermittently heated buildings using Model Predictive Control: Part I – Building modeling , 2012 .

[11]  G. J. Rios-Moreno,et al.  Modelling temperature in intelligent buildings by means of autoregressive models , 2007 .

[12]  Francesco Borrelli,et al.  Stochastic Model Predictive Control for Building HVAC Systems: Complexity and Conservatism , 2015, IEEE Transactions on Control Systems Technology.

[13]  Francesco Borrelli,et al.  Predictive Control for Energy Efficient Buildings with Thermal Storage: Modeling, Stimulation, and Experiments , 2012, IEEE Control Systems.

[14]  Nursyarizal Mohd Nor,et al.  A review on optimized control systems for building energy and comfort management of smart sustainable buildings , 2014 .

[15]  Marko Bacic,et al.  Model predictive control , 2003 .

[16]  Gianluigi Pillonetto,et al.  A new kernel-based approach to hybrid system identification , 2016, Autom..

[17]  Jan M. Maciejowski,et al.  Predictive control : with constraints , 2002 .

[18]  W. Beckman,et al.  Solar Engineering of Thermal Processes , 1985 .

[19]  Manfred Morari,et al.  Use of model predictive control and weather forecasts for energy efficient building climate control , 2012 .

[20]  Xinbing Wang,et al.  Interference Exploitation in D2D-Enabled Cellular Networks: A Secrecy Perspective , 2015, IEEE Transactions on Communications.

[21]  Manfred Morari,et al.  Importance of occupancy information for building climate control , 2013 .

[22]  Luis Pérez-Lombard,et al.  A review on buildings energy consumption information , 2008 .