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Online Tuning of PID Controller Using a Multilayer Fuzzy Neural Network Design for Quadcopter Attitude Tracking Control

Dae‐Won Park, Tien-Loc Le, Nguyen Vu Quynh, Ngo Kim Long, Sung Kyung Hong

2021Frontiers in Neurorobotics17 citationsDOIOpen Access PDF

Abstract

This study presents an online tuning proportional-integral-derivative (PID) controller using a multilayer fuzzy neural network design for quadcopter attitude control. PID controllers are simple but effective control methods. However, finding the suitable gain of a model-based controller is relatively complicated and time-consuming because it depends on external disturbances and the dynamic modeling of plants. Therefore, the development of a method for online tuning of quadcopter PID parameters may save time and effort, and better control performance can be achieved. In our controller design, a multilayer structure was provided to improve the learning ability and flexibility of a fuzzy neural network. Adaptation laws to update network parameters online were derived using the gradient descent method. Also, a Lyapunov analysis was provided to guarantee system stability. Finally, simulations concerning quadcopter attitude control were performed using a Gazebo robotics simulator in addition to a robot operating system (ROS), and their results were demonstrated.

Topics & Concepts

QuadcopterPID controllerComputer scienceControl theory (sociology)Artificial neural networkController (irrigation)Fuzzy logicControl engineeringGradient descentFlexibility (engineering)Attitude controlFuzzy control systemControl systemArtificial intelligenceControl (management)EngineeringTemperature controlMathematicsBiologyStatisticsAerospace engineeringElectrical engineeringAgronomyAdaptive Control of Nonlinear SystemsControl and Dynamics of Mobile RobotsDistributed Control Multi-Agent Systems
Online Tuning of PID Controller Using a Multilayer Fuzzy Neural Network Design for Quadcopter Attitude Tracking Control | Litcius