Two-layer NRF-enabled architecture decomposes closed-loop maps for distributed state-space MPC implementations using pre-specified communication infrastructure and offline model-matching.
Network-Realised Model Predictive Control Part II: Distributed Constraint Management
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abstract
A two-layer control architecture is proposed, which promotes scalable implementations for model predictive controllers. The top layer acts as both a reference governor for the bottom layer and as a feedback controller for the regulated network. By employing set-based methods, global theoretical guarantees are obtained by enforcing local constraints upon the network's variables and upon those of the first layer's implementation. The proposed technique offers recursive feasibility guarantees as one of its central features, and the expressions of the resulting predictive strategies bear a striking resemblance to classical formulations from model predictive control literature, allowing for flexible and easily customisable implementations.
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eess.SY 1years
2025 1verdicts
UNVERDICTED 1representative citing papers
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Network-Realised Model Predictive Control Part I: NRF-Enabled Closed-loop Decomposition
Two-layer NRF-enabled architecture decomposes closed-loop maps for distributed state-space MPC implementations using pre-specified communication infrastructure and offline model-matching.