A practical artificial intelligence-based approach for predictive control in commercial and institutional buildings

Abstract This paper presents a methodology for the development and implementation of Model Predictive Control (MPC) in institutional buildings. This methodology relies on Artificial Intelligence (AI) for model development. An appropriate control-oriented model is a critical component in MPC; model development is no easy task, and it often requires significant technical expertise, effort and time, along with a substantial amount of information. AI techniques enable rapid development and calibration of models using a limited amount of information (i.e. measurements of few variables) while achieving relatively high accuracy. In this study, the MPC algorithm targets the reduction of natural gas consumption by optimizing the transition between night set-back and daytime indoor air set-point values as a function of the expected weather. This MPC strategy was implemented in an institutional building in Varennes (QC), Canada, during the heating season 2018–19. A significantly better performance was achieved when compared with “business as usual” control strategies: the natural gas consumption and greenhouse gas (GHG) emissions were reduced by approximately 22%, and the building heating demand by 4.3%. The proposed strategy is scalable and can be replicated in other buildings.

[1]  Petru-Daniel Morosan,et al.  Building temperature regulation using a distributed model predictive control , 2010 .

[2]  Philip Haves,et al.  Model predictive control for the operation of building cooling systems , 2010, Proceedings of the 2010 American Control Conference.

[3]  Ian Beausoleil-Morrison,et al.  Shortest-prediction-horizon model-based predictive control for individual offices , 2014 .

[4]  Brandon Hencey,et al.  Online building thermal parameter estimation via Unscented Kalman Filtering , 2012, 2012 American Control Conference (ACC).

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

[6]  Simeng Liu,et al.  Experimental analysis of simulated reinforcement learning control for active and passive building thermal storage inventory: Part 1. Theoretical foundation , 2006 .

[7]  Weiming Shen,et al.  Inverse blackbox modeling of the heating and cooling load in office buildings , 2017 .

[8]  Vincent J. Cushing,et al.  Optimizing commercial building participation in energy and ancillary service markets , 2014 .

[9]  P. Haves Model Predictive Control of HVAC Systems: Implementation and Testing at the University of California, Merced , 2010 .

[10]  Panagiota Karava,et al.  A model predictive control strategy to optimize the performance of radiant floor heating and cooling systems in office buildings , 2019, Applied Energy.

[11]  Fu Xiao,et al.  A short-term building cooling load prediction method using deep learning algorithms , 2017 .

[12]  Francesco Borrelli,et al.  Model predictive control of radiant slab systems with evaporative cooling sources , 2015 .

[13]  Sean P. Meyn,et al.  Ancillary service for the grid via control of commercial building HVAC systems , 2013, 2013 American Control Conference.

[14]  M. Kintner-Meyer,et al.  Optimal control of an HVAC system using cold storage and building thermal capacitance , 1995 .

[15]  Gregor P. Henze Model predictive control for buildings: a quantum leap? , 2013 .

[16]  Luigi Glielmo,et al.  Model Predictive Control-Based Optimal Operations of District Heating System With Thermal Energy Storage and Flexible Loads , 2017, IEEE Transactions on Automation Science and Engineering.

[17]  Damien Picard,et al.  Approximate model predictive building control via machine learning , 2018 .

[18]  Martin Kozek,et al.  Ten questions concerning model predictive control for energy efficient buildings , 2016 .

[19]  James E. Braun,et al.  Reducing energy costs and peak electrical demand through optimal control of building thermal storage , 1990 .

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

[21]  Manfred Morari,et al.  Model Predictive Climate Control of a Swiss Office Building: Implementation, Results, and Cost–Benefit Analysis , 2016, IEEE Transactions on Control Systems Technology.

[22]  Gregor P. Henze,et al.  A model predictive control optimization environment for real-time commercial building application , 2013 .

[23]  Shengwei Wang,et al.  Model predictive control for thermal energy storage and thermal comfort optimization of building demand response in smart grids , 2019, Applied Energy.

[24]  Zhiwei Lian,et al.  Cooling-load prediction by the combination of rough set theory and an artificial neural-network based on data-fusion technique , 2006 .

[25]  Peng Zhao,et al.  Evaluation of commercial building HVAC systems as frequency regulation providers , 2013 .

[26]  J. Braun,et al.  Experimental and simulated performance of optimal control of building thermal storage , 1994 .

[27]  Manfred Morari,et al.  BRCM Matlab Toolbox: Model generation for model predictive building control , 2014, 2014 American Control Conference.

[28]  Kaamran Raahemifar,et al.  Artificial neural network (ANN) based model predictive control (MPC) and optimization of HVAC systems: A state of the art review and case study of a residential HVAC system , 2017 .

[29]  Tianzhen Hong,et al.  Integrating physics-based models with sensor data: An inverse modeling approach , 2019, Building and Environment.

[30]  Francesco Massa Gray,et al.  Thermal building modelling using Gaussian processes , 2016 .

[31]  Johan Åkesson,et al.  Toolbox for development and validation of grey-box building models for forecasting and control , 2014 .

[32]  Evangelos Vrettos,et al.  Predictive Control of buildings for Demand Response with dynamic day-ahead and real-time prices , 2013, 2013 European Control Conference (ECC).

[33]  José A. Candanedo,et al.  A Model-Based Predictive Control Approach for a Building Cooling System With Ice Storage , 2013 .

[34]  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.

[35]  Victor M. Zavala,et al.  Gaussian process modeling for measurement and verification of building energy savings , 2012 .

[36]  José A. Candanedo,et al.  Preliminary Assessment of a Weather Forecast Tool for Building Operation , 2018 .

[37]  Lieve Helsen,et al.  Practical implementation and evaluation of model predictive control for an office building in Brussels , 2016 .

[38]  Pedro J. Mago,et al.  Building hourly thermal load prediction using an indexed ARX model , 2012 .