Nonlinear sparse variational Bayesian learning based model predictive control with application to PEMFC temperature control
- URL: http://arxiv.org/abs/2404.09519v1
- Date: Mon, 15 Apr 2024 07:30:26 GMT
- Title: Nonlinear sparse variational Bayesian learning based model predictive control with application to PEMFC temperature control
- Authors: Qi Zhang, Lei Wang, Weihua Xu, Hongye Su, Lei Xie,
- Abstract summary: This study develops a nonlinear sparse variational Bayesian learning based MPC (NSVB-MPC) for nonlinear systems.
Variational inference is used by NSVB-MPC to assess the predictive accuracy and make the necessary corrections to quantify system uncertainty.
- Score: 16.703859991393568
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The accuracy of the underlying model predictions is crucial for the success of model predictive control (MPC) applications. If the model is unable to accurately analyze the dynamics of the controlled system, the performance and stability guarantees provided by MPC may not be achieved. Learning-based MPC can learn models from data, improving the applicability and reliability of MPC. This study develops a nonlinear sparse variational Bayesian learning based MPC (NSVB-MPC) for nonlinear systems, where the model is learned by the developed NSVB method. Variational inference is used by NSVB-MPC to assess the predictive accuracy and make the necessary corrections to quantify system uncertainty. The suggested approach ensures input-to-state (ISS) and the feasibility of recursive constraints in accordance with the concept of an invariant terminal region. Finally, a PEMFC temperature control model experiment confirms the effectiveness of the NSVB-MPC method.
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