This paper proposes an offset-free distributed implementation of a model predictive controller that employs fuzzy negotiation between agents. The scheme is based on model augmentation with additional disturbances to enable zero-offset tracking. Moreover, we code the negotiation criteria as a set of suitable fuzzy rules and consider stability and feasibility guarantees in the controller design for the linearized subsystems. We applied the method to an experimental four-tank plant, showing its effectiveness despite the coupling between subsystems and system-model mismatch.

Offset-free distributed predictive control based on fuzzy logic: Application to a real four-tank plant

Masero, E.;
2023-01-01

Abstract

This paper proposes an offset-free distributed implementation of a model predictive controller that employs fuzzy negotiation between agents. The scheme is based on model augmentation with additional disturbances to enable zero-offset tracking. Moreover, we code the negotiation criteria as a set of suitable fuzzy rules and consider stability and feasibility guarantees in the controller design for the linearized subsystems. We applied the method to an experimental four-tank plant, showing its effectiveness despite the coupling between subsystems and system-model mismatch.
2023
22nd IFAC World Congress
Linear multivariable systems, Predictive control, Fuzzy control systems, Process control, Control of distributed systems
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1256378
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