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Model Predictive Interaction Control for Robotic Manipulation Tasks

Tobias Gold, Andreas Völz, Knut Graichen

2022IEEE Transactions on Robotics67 citationsDOI

Abstract

This article presents the concept of model predictive interaction control (MPIC) as a generic, flexible, and comprehensive approach for robotic manipulation tasks. MPIC is based on the repetitive solution of an optimal control problem that includes a robot model for motion prediction as well as an interaction model for force prediction. In order to handle both elastic and rigid contact situations, a cascaded approach with low-level PD control is adopted, which allows to combine the linear-elastic environment model and the limited controller stiffness. Due to its flexibility, MPIC can be favorably used for realizing the elementary manipulation primitives (MP) within a hierarchical task planning framework, where each MP corresponds to a particular parameterization of the cost function and the constraints. The control methodology and the manipulation approach are evaluated in simulations and experiments using a 7-degree-of-freedom industrial robot.

Topics & Concepts

Computer scienceFlexibility (engineering)RobotModel predictive controlTask (project management)Controller (irrigation)Control engineeringControl (management)StiffnessMotion planningControl theory (sociology)Artificial intelligenceSimulationEngineeringMathematicsStructural engineeringBiologyStatisticsSystems engineeringAgronomyRobot Manipulation and LearningProsthetics and Rehabilitation RoboticsSoft Robotics and Applications