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Model-Assisted Online Optimization of Gain-Scheduled PID Control Using NSGA-II Iterative Genetic Algorithm

Shen Qu, Tianyi He, Guoming Zhu

2023Applied Sciences13 citationsDOIOpen Access PDF

Abstract

In the practical control of nonlinear valve systems, PID control, as a model-free method, continues to play a crucial role thanks to its simple structure and performance-oriented tuning process. To improve the control performance, advanced gain-scheduling methods are used to schedule the PID control gains based on the operating conditions and/or tracking error. However, determining the scheduled gain is a major challenge, as PID control gains need to be determined at each operating condition. In this paper, a model-assisted online optimization method is proposed based on the modified Non-Dominated Sorting Genetic Algorithms-II (NSGA-II) to obtain the optimal gain-scheduled PID controller. Model-assisted offline optimization through computer-in-the-loop simulation provides the initial scheduled gains for an online algorithm, which then uses the iterative NSGA-II algorithm to automatically schedule and tune PID gains by online searching of the parameter space. As a summary, the proposed approach presents a PID controller optimized through both model-assisted learning based on prior model knowledge and model-free online learning. The proposed approach is demonstrated in the case of a nonlinear valve system able to obtain optimal PID control gains with a given scheduled gain structure. The performance improvement of the optimized gain-scheduled PID control is demonstrated by comparing it with fixed-gain controllers under multiple operating conditions.

Topics & Concepts

PID controllerGain schedulingControl theory (sociology)Computer scienceScheduleGenetic algorithmScheduling (production processes)Nonlinear systemControl engineeringMathematical optimizationControl (management)EngineeringTemperature controlMathematicsArtificial intelligenceMachine learningQuantum mechanicsOperating systemPhysicsAdvanced Control Systems OptimizationIterative Learning Control SystemsAdvanced Control Systems Design
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