Using simplified swarm optimization on multiloop fuzzy PID controller tuning design for flow and temperature control system

TY Wu, YZ Jiang, YZ Su, WC Yeh - Applied Sciences, 2020 - mdpi.com
TY Wu, YZ Jiang, YZ Su, WC Yeh
Applied Sciences, 2020mdpi.com
This study proposes the flow and temperature controllers of a cockpit environment control
system (ECS) by implementing an optimal simplified swarm optimization (SSO) fuzzy
proportional-integral-derivative (PID) control. The ECS model is considered as a multiple-
input multiple-output (MIMO) and second-order dynamic system, which is interactive. In this
work, we use five methods to design and compare the PID controllers in MATLAB and
Simulink, including Ziegler–Nicolas PID tuning, particle swarm optimization (PSO) PID, SSO …
This study proposes the flow and temperature controllers of a cockpit environment control system (ECS) by implementing an optimal simplified swarm optimization (SSO) fuzzy proportional-integral-derivative (PID) control. The ECS model is considered as a multiple-input multiple-output (MIMO) and second-order dynamic system, which is interactive. In this work, we use five methods to design and compare the PID controllers in MATLAB and Simulink, including Ziegler–Nicolas PID tuning, particle swarm optimization (PSO) PID, SSO PID, and the combination of the fuzzy theory with PSO PID and SSO PID, respectively. The main contribution of this study is the pioneering implementation of SSO in a fuzzy PI/PID controller. Moreover, by adding the original gain parameters Kp, Ki, and Kd in the PID controller with delta values, which are calculated by fuzzy logic designer, we can tune the parameters of PID controllers in real time. This makes our control system more accurate, adaptive, and robust.
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