Network-Realised Model Predictive Control Part I: NRF-Enabled Closed-loop Decomposition
Andrei Sperilă, Alessio Iovine, Sorin Olaru, Patrick Panciatici
- Year
- 2025
- Access
- Open access
Abstract
A two-layer control architecture is proposed to enable scalable implementations for constraint-based decision strategies, such as model predictive controllers. The bottom layer is based upon a distributed feedback-feedforward scheme that directs the controlled network's information flow according to a pre-specified communication infrastructure. Explicit expressions for the resulting closed-loop maps are obtained, and an offline model-matching procedure is proposed for designing the first layer. The obtained control laws are deployed via distributed state-space-based implementations, and the resulting closed-loop models enable predictive control design for the constraint management procedure described in our companion paper.
Keywords
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