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Kinematic modeling of a RHex-type robot using a neural network

Mario Harper, James Pace, Nikhil Gupta, Camilo Ordóñez, Emmanuel G. Collins

Year
2017
Citations
8

Abstract

Motion planning for legged machines such as RHex-type robots is far less developed than motion planning for wheeled vehicles. One of the main reasons for this is the lack of kinematic and dynamic models for such platforms. Physics based models are difficult to develop for legged robots due to the difficulty of modeling the robot-terrain interaction and their overall complexity. This paper presents a data driven approach in developing a kinematic model for the X-RHex Lite (XRL) platform. The methodology utilizes a feed-forward neural network to relate gait parameters to vehicle velocities.

Keywords

KinematicsTerrainRobotArtificial neural networkComputer scienceMotion planningRobot kinematicsSimulationMotion (physics)Robot calibration

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