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Scenario-based Model Predictive Control Approach for Heating Systems in an Office Building

机译:基于场景的办公大楼加热系统的模型预测控制方法

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In the context of building heating systems control in office buildings, the current state-of-the-art applies either a deterministic Model Predictive Control (MPC) controller together with a nonlinear model, or a linearized model with a stochastic MPC controller. Deterministic MPC considers only one realization of the external disturbances, which can lead to a low performance solution if the forecasts of the disturbances are not accurate. Similarly, linear models are simplified representations of the building dynamics and might fail to capture some relevant behavior. In this paper, we improve upon the current literature by combining these two approaches, i.e. we adopt a nonlinear model together with a stochastic MPC controller. We consider a scenario-based MPC (SBMPC), where many realizations of the disturbances are considered, so as to include more possible future trajectories for the external disturbances. The adopted scenario generation method provides statistically significant scenarios, whereas so far in the current literature only approximate methods have been applied. Moreover, we use Modelica to obtain the model description, which allows to have a more accurate and nonlinear model. Lastly, we perform simulations comparing standard MPC vs SBMPC vs an optimal control approach with measurements of the external disturbances, and we show how our proposed scenario-based MPC controller can achieve a better performance compared to standard deterministic MPC.
机译:在建立办公建筑物中的加热系统控制的背景下,当前的现有技术将确定性模型预测控制(MPC)控制器与非线性模型一起应用,或具有随机MPC控制器的线性化模型。确定性MPC仅考虑外部干扰的一个实现,如果干扰的预测不准确,这可能会导致低性能解决方案。类似地,线性模型是构建动态的简化表示,可能无法捕获一些相关行为。在本文中,我们通过组合这两种方法来改进当前文献,即我们采用非线性模型与随机MPC控制器一起使用。我们考虑基于场景的MPC(SBMPC),其中考虑了许多对干扰的实现,以便包括更可能的未来外部干扰轨迹。采用的场景生成方法提供了统计上显着的情景,而目前的文献中则仅应用了近似方法。此外,我们使用Modelica获得模型描述,允许具有更准确和非线性模型。最后,我们执行仿真比较标准MPC VS SBMPC对外部干扰测量的最佳控制方法,我们展示了我们所提出的基于场景的MPC控制器如何实现更好的性能与标准确定性MPC相比。

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