2024
DOI: 10.1017/dce.2024.8
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Learning-based augmentation of physics-based models: an industrial robot use case

András Retzler,
Roland Tóth,
Maarten Schoukens
et al.

Abstract: In a Model Predictive Control (MPC) setting, the precise simulation of the behavior of the system over a finite time window is essential. This application-oriented benchmark study focuses on a robot arm that exhibits various nonlinear behaviors. For this arm, we have a physics-based model with approximate parameter values and an open benchmark dataset for system identification. However, the long-term simulation of this model quickly diverges from the actual arm’s measurements, indicating its inaccuracy. We com… Show more

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