Title :
Efficient Exploratory Learning of Inverse Kinematics on a Bionic Elephant Trunk
Author :
Rolf, Matthias ; Steil, Jochen Jakob
Author_Institution :
Res. Inst. for Cognition & Robot., Bielefeld Univ., Bielefeld, Germany
Abstract :
We present an approach to learn the inverse kinematics of the “bionic handling assistant”-an elephant trunk robot. This task comprises substantial challenges including high dimensionality, restrictive and unknown actuation ranges, and nonstationary system behavior. We use a recent exploration scheme, online goal babbling, which deals with these challenges by bootstrapping and adapting the inverse kinematics on the fly. We show the success of the method in extensive real-world experiments on the nonstationary robot, including a novel combination of learning and traditional feedback control. Simulations further investigate the impact of nonstationary actuation ranges, drifting sensors, and morphological changes. The experiments provide the first substantial quantitative real-world evidence for the success of goal-directed bootstrapping schemes, moreover with the challenge of nonstationary system behavior. We thereby provide the first functioning control concept for this challenging robot platform.
Keywords :
feedback; learning (artificial intelligence); manipulator kinematics; statistical analysis; bionic elephant trunk; bionic handling assistant; drifting sensors; elephant trunk robot; exploration scheme; exploratory learning; feedback control; functioning control concept; goal-directed bootstrapping schemes; inverse kinematics; morphological changes; nonstationary actuation ranges; nonstationary robot; online goal babbling; Accuracy; Actuators; Bellows; Inverse problems; Kinematics; Robot sensing systems; Bionic handling assistant (BHA); continuum robot; goal babbling; inverse kinematics; inverse kinematics.;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2013.2287890