Litcius/Paper detail

Comparison and Ranking of Metaheuristic Techniques for Optimization of PI Controllers in a Machine Drive System

Omar Aguilar-Mejía, Hertwin Minor-Popocatl, Rubén Tapia-Olvera

2020Applied Sciences16 citationsDOIOpen Access PDF

Abstract

Proportional integral (PI) control is still the most widely deployed controller in the industrial drives due to its simplicity and the fact that it is easy to understand and implement. Nevertheless, they are successes applied to systems with a complex behavior with a nonlinear representation, but a disadvantage is the procedure to find the optimal PI controller gains. The optimal values of PI parameters must be computed during the tuning process. However, traditional tuning techniques are based on model and do not provide optimal adjustment parameters for the PI controllers because the transient response could produce oscillations and a large overshoot. In this paper, six swarm intelligence-based algorithms (whale, moth-flame, flower pollination, dragonfly, cuckoo search, and modified flower pollination), are correctly conditioned and delimited to tune the PI controllers, the results are probed in a typical industry actuator. Also, a rigorous study is developed to evaluate the quality and reliability of these algorithms by a statistical analysis based on non-parametric test and post-hoc test. Finally, with the obtained results, some time simulations are carried out to corroborate that the nonlinear system performance is improved for high precision industrial applications subjected to endogenous and exogenous uncertainties in a wide range of operating conditions.

Topics & Concepts

Cuckoo searchOvershoot (microwave communication)Control theory (sociology)Computer scienceNonlinear systemController (irrigation)PID controllerControl engineeringParticle swarm optimizationMathematical optimizationEngineeringMathematicsControl (management)AlgorithmArtificial intelligencePhysicsAgronomyBiologyTelecommunicationsTemperature controlQuantum mechanicsExtremum Seeking Control SystemsIterative Learning Control SystemsAdvanced Control Systems Design