Reconfigurable manipulator simulation for robotics and multimodal machine learning application: Aaria: Aaria

    Research output: Contribution to journalArticleScientific

    Abstract

    This paper represents a systematic way for generation of Aaria, a simulated model for serial manipulators for the purpose of kinematic or dynamic analysis with a vast variety of structures based on Simulink SimMechanics. The proposed model can receive configuration parameters, for instance in accordance with modified Denavit-Hartenberg convention, or trajectories for its base or joints for structures with 1 to 6 degrees of freedom (DOF). The manipulator is equipped with artificial joint sensors as well as simulated Inertial Measurement Units (IMUs) on each link. The simulation output can be positions, velocities, torques, in the joint space or IMU outputs; angular velocity, linear acceleration, tool coordinates with respect to the inertial frame. This simulation model is a source of a dataset for virtual multimodal sensory data for automation of robot modeling and control designed for machine learning and deep learning approaches based on big data.
    Original languageEnglish
    JournalarXiv.org
    DOIs
    Publication statusPublished - 1 Mar 2018
    Publication typeB1 Journal article

    Keywords

    • Machine learning
    • Simulation
    • Robotics
    • Simulink
    • Deep learning
    • Multimodal interaction
    • Big data
    • Velocity
    • Sensor
    • Denavit–Hartenberg

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