TrueAdapt: Learning Smooth Online Trajectory Adaptation with Bounded Jerk, Acceleration and Velocity in Joint Space

05/30/2020
by   Jonas C. Kiemel, et al.
0

We present TrueAdapt, a model-free method to learn online adaptations of robot trajectories based on their effects on the environment. Given sensory feedback and future waypoints of the original trajectory, a neural network is trained to predict joint accelerations at regular intervals. The adapted trajectory is generated by linear interpolation of the predicted accelerations, leading to continuously differentiable joint velocities and positions. Bounded jerks, accelerations and velocities are guaranteed by calculating the valid acceleration range at each decision step and clipping the network's output accordingly. A deviation penalty during the training process causes the adapted trajectory to follow the original one. Smooth movements are encouraged by penalizing high accelerations and jerks. We evaluate our approach by training a simulated KUKA iiwa robot to balance a ball on a plate while moving and demonstrate that the balancing policy can be directly transferred to a real robot with little impact on performance.

READ FULL TEXT

page 1

page 5

page 7

research
06/05/2020

TrueRMA: Learning Fast and Smooth Robot Trajectories with Recursive Midpoint Adaptations in Cartesian Space

We present TrueRMA, a data-efficient, model-free method to learn cost-op...
research
03/03/2022

Learning Time-optimized Path Tracking with or without Sensory Feedback

In this paper, we present a learning-based approach that allows a robot ...
research
03/05/2021

Learning Collision-free and Torque-limited Robot Trajectories based on Alternative Safe Behaviors

This paper presents an approach to learn online generation of collision-...
research
11/01/2020

Learning Robot Trajectories subject to Kinematic Joint Constraints

We present an approach to learn fast and dynamic robot motions without e...
research
04/16/2022

An Integrated Programmable CPG with Bounded Output

Cyclic motions are fundamental patterns in robotic applications includin...
research
07/10/2020

Approximate Time-Optimal Trajectories for Damped Double Integrator in 2D Obstacle Environments under Bounded Inputs

This article provides extensions to existing path-velocity decomposition...
research
07/19/2021

Exploring the efficacy of neural networks for trajectory compression and the inverse problem

In this document, a neural network is employed in order to estimate the ...

Please sign up or login with your details

Forgot password? Click here to reset