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Adaptive fuzzy sliding mode control of an actuator powered by two opposing pneumatic artificial muscles

Minh Duc Duong, Quang-Thuyet Pham, Tuan-Chien Vu, Ngoc-Tam Bui, Quy-Thinh Dao

2023Scientific Reports26 citationsDOIOpen Access PDF

Abstract

Pneumatic artificial muscle (PAM) is a potential actuator in human-robot interaction systems, especially rehabilitation systems. However, PAM is a nonlinear actuator with uncertainty and a considerable delay in characteristics, making control challenging. This study presents a discrete-time sliding mode control approach combined with the adaptive fuzzy algorithm (AFSMC) to deal with the unknown disturbance of the PAM-based actuator. The developed fuzzy logic system has parameter vectors of the component rules that are automatically updated by an adaptive law. Consequently, the developed fuzzy logic system can reasonably approximate the system disturbance. When operating the PAM-based system in multi-scenario studies, experimental results confirm the efficiency of the proposed strategy.

Topics & Concepts

Artificial muscleActuatorControl theory (sociology)Fuzzy logicComputer scienceControl engineeringComponent (thermodynamics)Pneumatic actuatorSliding mode controlFuzzy control systemNonlinear systemPneumatic artificial musclesMode (computer interface)Control systemControl (management)EngineeringArtificial intelligenceOperating systemQuantum mechanicsThermodynamicsElectrical engineeringPhysicsProsthetics and Rehabilitation RoboticsMechanical Circulatory Support DevicesMuscle activation and electromyography studies
Adaptive fuzzy sliding mode control of an actuator powered by two opposing pneumatic artificial muscles | Litcius