4.6 Article

Data-Driven Predictive Control With Improved Performance Using Segmented Trajectories

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IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCST.2022.3224330

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Building energy management; data-driven predictive control; optimal control; Willems' fundamental lemma

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This article proposes a restructuring method based on segmented prediction trajectories, which can reduce the modeling burden and tracking error in control design, and provide consistent performance. Case studies show that the method can achieve good tracking performance in building energy management problems.
A class of data-driven control methods has recently emerged based on Willems' fundamental lemma. Such methods can ease the modeling burden in control design but can be sensitive to disturbances acting on the system under control. In this article, we propose a restructuring of the problem to incorporate segmented prediction trajectories. The proposed segmentation leads to reduced tracking error for longer prediction horizons in the presence of unmeasured disturbance and noise when compared with an unsegmented formulation. The performance characteristics are illustrated in a set-point tracking case study in which the segmented formulation enables more consistent performance over a wide range of prediction horizons. The method is then applied to a building energy management problem using a detailed simulation environment. The case studies show that good tracking performance is achieved for a range of horizon choices, whereas performance degrades with longer horizons without segmentation.

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