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An-EMG-controlled Mobile Robot Based on a Multi-layered Non-contact Impedance Model

Taro Shibanoki, Masaru Sasaki, Toshio Tsuji

Year
2021
Citations
3

Abstract

This paper proposes an obstacle avoidance method for EMG-controlled mobile robots based on a noncontact impedance model. The proposed system can voluntarily control a mobile robot by classifying EMG signals using a recurrent probabilistic neural network and can avoid obstacles without user handling based on virtual repulsive force through a multi-layered non-contact impedance model. In the experiments, two obstacles were arranged in the path of the mobile robot, and the participant was asked to control the robot toward a target. The robot passed through the obstacles smoothly without any avoidance operations, indicating that the proposed system could be used for obstacle avoidance in mobile robots.

Keywords

Mobile robotObstacle avoidanceObstacleRobotComputer scienceImpedance controlProbabilistic logicArtificial intelligenceRobot controlElectrical impedance

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