Soft Robotics For The Hydraulic Atlas Arms: Joint Impedance Control With Collision Detection And Disturbance Compensation

2016 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2016)

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摘要
Soft robotics methods such as impedance control and reflexive collision handling have proven to be a valuable tool to robots acting in partially unknown and potentially unstructured environments. Mainly, the schemes were developed with focus on classical electromechanically driven, torque controlled robots. There, joint friction, mostly coming from high gearing, is typically decoupled from link-side control via suitable rigid or elastic joint torque feedback. Extending and applying these algorithms to stiff hydraulically actuated robots poses problems regarding the strong influence of friction on joint torque estimation from pressure sensing, i.e. link-side friction is typically significantly higher than in electromechanical soft robots. In order to improve the performance of such systems, we apply state-of-the-art fault detection and estimation methods together with observer-based disturbance compensation control to the humanoid robot Atlas. With this it is possible to achieve higher tracking accuracy despite facing significant modeling errors. Compliant end-effector behavior can also be ensured by including an additional force/torque sensor into the generalized momentum-based disturbance observer algorithm from [1].
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关键词
partially-unknown potentially-unstructured environments,joint friction,link-side control,rigid feedback,elastic joint torque feedback,stiff hydraulically actuated robots,pressure sensing,link-side friction,fault detection-and-estimation method,observer-based disturbance compensation control,Atlas humanoid robot,compliant end-effector behavior,force sensor,momentum-based disturbance observer algorithm,torque sensor,reflexive collision handling,collision detection,joint impedance control,hydraulic Atlas arms,soft robotics
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