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A swarm intelligence-based tuning method for the Sliding Mode Generalized Predictive Control.

Research paper by J B JB Oliveira, J J Boaventura-Cunha, P B PB Moura Oliveira, H H Freire

Indexed on: 14 Jul '14Published on: 14 Jul '14Published in: ISA Transactions®



Abstract

This work presents an automatic tuning method for the discontinuous component of the Sliding Mode Generalized Predictive Controller (SMGPC) subject to constraints. The strategy employs Particle Swarm Optimization (PSO) to minimize a second aggregated cost function. The continuous component is obtained by the standard procedure, by Quadratic Programming (QP), thus yielding an online dual optimization scheme. Simulations and performance indexes for common process models in industry, such as nonminimum phase and time delayed systems, result in a better performance, improving robustness and tracking accuracy.