首页|Adaptive model predictive control for actuation dynamics compensation in real-time hybrid simulation

Adaptive model predictive control for actuation dynamics compensation in real-time hybrid simulation

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Hybrid simulation is used to obtain the dynamic response of a system whose components consist of physical and numerical substructures. The coupling of these substructures is achieved by actuation systems, which are commanded in closed-loop control setting. To ensure high fidelity of such hybrid simulations, performing them in real-time is necessary. However, real-time hybrid simulation poses challenges since the inherent dynamics of the actuation system introduce time delays, thus modifying the dynamic response of the investigated system. Therefore, a tracking controller is required to adequately compensate for such time delays. In this study, a novel tracking controller is proposed for dynamics compensation in real-time hybrid simulations. It is based on adaptive model predictive control, a linear time-varying Kalman filter, and a real-time model identification algorithm. Within the latter, auto-regressive exogenous polynomial models are identified in real-time to estimate the changing plant dynamics. A parametric virtual case study, encompassing a virtual motorcycle, is used to validate the performance and robustness of the proposed controller. Results demonstrate the effectiveness of the proposed controller for real-time hybrid simulations.

Real-time hybrid simulationAdaptive model predictive controlKalman filterReal-time model identificationDynamic responseActuation dynamics compensationALGORITHMMPCSTABILITYSYSTEMS

Tsokanas, N.、Pastorino, R.、Stojadinovic, B.

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Swiss Fed Inst Technol

Siemens Ind Software NV

2022

Mechanism and Machine Theory

Mechanism and Machine Theory

EISCI
ISSN:0094-114X
年,卷(期):2022.172
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