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Bayesian Estimation of Human Impedance and Motion Intention for Human–Robot Collaboration

Xinbo Yu, Wei He, Yanan Li, Chengqian Xue, Jianqiang Li, Jianxiao Zou, Chenguang Yang

Year
2019
Citations
150

Abstract

This article proposes a Bayesian method to acquire the estimation of human impedance and motion intention in a human-robot collaborative task. Combining with the prior knowledge of human stiffness, estimated stiffness obeying Gaussian distribution is obtained by Bayesian estimation, and human motion intention can be also estimated. An adaptive impedance control strategy is employed to track a target impedance model and neural networks are used to compensate for uncertainties in robotic dynamics. Comparative simulation results are carried out to verify the effectiveness of estimation method and emphasize the advantages of the proposed control strategy. The experiment, performed on Baxter robot platform, illustrates a good system performance.

Keywords

Computer scienceStiffnessRobotArtificial intelligenceBayesian probabilityMotion (physics)Electrical impedanceImpedance controlEstimationGaussian

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