Design and implementation of model-free PID fuzzy logic control on a 4-bar parallel mechanism

AIM(2015)

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摘要
This paper proposes a model-free PID fuzzy logic control for parallel robot. This kind control differs from conventional classical and modern control techniques, even existed intelligent controls. Nor precise description of dynamics model neither physical parameter is required for construction of the fuzzy control. Takagi-Sugeno-Kang (TSK) fuzzy approach with extended subtractive clustering computing is used to accomplish the integration of information of joint angular displacement, velocity and acceleration for torque identification where the learning datasets are generated by using a PID feedback control. The fuzzy inference system is used for design the nouvelle model-free PID fuzzy feed forward control for the parallel mechanism. Simulation results from numerical study on a 4-bar planar parallel mechanism show the proposed control can reduce joint position and velocity tracking errors with high accuracy and high reliability.
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关键词
acceleration control,control system synthesis,feedback,feedforward,fuzzy control,fuzzy reasoning,intelligent control,position control,robot dynamics,three-term control,torque control,velocity control,4-bar parallel mechanism,4-bar planar parallel mechanism,PID feedback control,TSK fuzzy approach,Takagi-Sugeno-Kang fuzzy approach,acceleration,conventional classical and modern control technique,dynamics model,extended subtractive clustering computing,fuzzy inference system,intelligent control,joint angular displacement,joint position,learning dataset,model-free PID fuzzy logic control,nouvelle model-free PID fuzzy feed forward control design,parallel robot,physical parameter,torque identification,velocity tracking error
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