Performance assessment and tuning of PID control using TLBO: the single-loop case and PI/P cascade case
Wei Zhang, He Dong, Yunlang Xu, Xiaoping Li

TL;DR
This paper proposes a multi-objective optimization approach using TLBO to improve PID control performance, especially disturbance rejection, by balancing error and output variance, and extends the method to cascade control systems.
Contribution
It introduces a multi-objective function for PID tuning considering disturbance rejection and employs TLBO to solve the non-convex problem efficiently, extending to PI/P cascade control.
Findings
TLBO achieves better MOV than existing methods within one second.
The multi-objective tuning improves disturbance rejection while balancing other performance metrics.
The method is applicable to multi-stage PID control strategies.
Abstract
Proportional-integral-derivative (PID) control, the most common control strategy in the industry, always suffers from health problems resulting from external disturbances, improper tuning, etc. Therefore, there have been many studies on control performance assessment (CPA) and optimal tuning. Minimum output variance (MOV) is used as a benchmark for CPA of PID, but it is difficult to be found due to the associated non-convex optimization problem. For the optimal tuning, many different objective functions have been proposed, but few consider the stochastic disturbance rejection. In this paper, a multi-objective function simultaneously considering integral of absolute error (IAE) and MOV is proposed to optimize PID for better disturbance rejection. The non-convex problem and multi-objective problem are solved by teaching-learning-based optimization (TLBO). This stochastic optimization…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Advanced Control Systems Design · Fault Detection and Control Systems
