Scenario-based Nonlinear Model Predictive Control for Building Heating Systems
Tomas Pippia, Jesus Lago, Roel De Coninck, Bart De Schutter

TL;DR
This paper introduces a scenario-based nonlinear stochastic MPC for building heating that improves control robustness and accuracy by considering multiple disturbance realizations with a detailed Modelica model.
Contribution
It combines a scenario-based stochastic MPC with a nonlinear building model and proposes a new scenario generation method for more accurate disturbance representation.
Findings
Outperforms standard linear and deterministic MPC controllers.
Provides more accurate building temperature control.
Reduces energy costs and CO2 emissions in simulations.
Abstract
State-of-the-art Model Predictive Control (MPC) applications for building heating adopt either a deterministic controller together with a nonlinear model or a linearized model with a stochastic MPC controller. However, deterministic MPC only considers one single realization of the disturbances and its performance strongly depends on the quality of the forecast of the disturbances, which can lead to low performance. In fact, inadequate building energy management can lead to high energy costs and CO emissions. On the other hand, a linearized model can fail to capture some dynamics and behavior of the building under control. In this article, we combine a stochastic scenario-based MPC (SBMPC) controller together with a nonlinear Modelica model that is able to provide a richer building description and to capture the dynamics of the building more accurately than linear models. The adopted…
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