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VP-STO: Via-point-based Stochastic Trajectory Optimization for Reactive Robot Behavior

Julius Jankowski, Lara Brudermüller, Nick Hawes, Sylvain Calinon

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Abstract

Achieving reactive robot behavior in complex dynamic environments is still challenging as it relies on being able to solve trajectory optimization problems quickly enough, such that we can replan the future motion at frequencies which are sufficiently high for the task at hand. We argue that current limitations in Model Predictive Control (MPC) for robot manipulators arise from inefficient, high-dimensional trajectory representations and the negligence of time-optimality in the trajectory optimization process. Therefore, we propose a motion optimization framework that optimizes jointly over space and time, generating smooth and timing-optimal robot trajectories in joint-space. While being task-agnostic, our formulation can incorporate additional task-specific requirements, such as collision avoidance, and yet maintain real-time control rates, demonstrated in simulation and real-world robot experiments on closed-loop manipulation. For additional material, please visit https://sites.google.com/oxfordrobotics.institute/vp-sto.

Topics & Concepts

TrajectoryRobotTrajectory optimizationComputer scienceTask (project management)Collision avoidanceProcess (computing)Motion (physics)Motion controlPoint (geometry)Robot controlOptimization problemControl theory (sociology)Artificial intelligenceCollisionControl (management)Mobile robotEngineeringMathematicsAlgorithmAstronomyComputer securitySystems engineeringOperating systemPhysicsGeometryRobotic Path Planning AlgorithmsAdvanced Control Systems OptimizationReinforcement Learning in Robotics
VP-STO: Via-point-based Stochastic Trajectory Optimization for Reactive Robot Behavior | Litcius