Litcius/Paper detail

Embedding Bifurcations into Pneumatic Artificial Muscle

Nozomi Akashi, Yasuo Kuniyoshi, Taketomo Jo, Mitsuhiro Nishida, Ryo Sakurai, Yasumichi Wakao, Kohei Nakajima

2024Advanced Science26 citationsDOIOpen Access PDF

Abstract

Harnessing complex body dynamics has long been a challenge in robotics, particularly when dealing with soft dynamics, which exhibit high complexity in interacting with the environment. Recent studies indicate that these dynamics can be used as a computational resource, exemplified by the McKibben pneumatic artificial muscle, a common soft actuator. This study demonstrates that bifurcations, including periodic and chaotic dynamics, can be embedded into the pneumatic artificial muscle, with the entire bifurcation structure using the framework of physical reservoir computing. These results suggest that dynamics not present in training data can be embedded through bifurcation embedment, implying the capability to incorporate various qualitatively different patterns into pneumatic artificial muscle without the need to design and learn all required patterns explicitly. Thus, this study introduces a novel approach to simplify robotic devices and control training by reducing reliance on external pattern generators and the amount and types of training data needed for control.

Topics & Concepts

Artificial muscleComputer scienceSoft roboticsBifurcationEmbeddingRoboticsActuatorChaoticControl theory (sociology)Pneumatic actuatorControl engineeringArtificial intelligencePneumatic artificial musclesDynamics (music)BiomimeticsNonlinear systemControl (management)RobotEngineeringPhysicsAcousticsQuantum mechanicsNeural Networks and Reservoir ComputingModel Reduction and Neural NetworksNeural Networks and Applications