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Dynamic Optimization Fabrics for Motion Generation

Robotics 2023-03-09 v3

Abstract

Optimization fabrics are a geometric approach to real-time local motion generation, where motions are designed by the composition of several differential equations that exhibit a desired motion behavior. We generalize this framework to dynamic scenarios and non-holonomic robots and prove that fundamental properties can be conserved. We show that convergence to desired trajectories and avoidance of moving obstacles can be guaranteed using simple construction rules of the components. Additionally, we present the first quantitative comparisons between optimization fabrics and model predictive control and show that optimization fabrics can generate similar trajectories with better scalability, and thus, much higher replanning frequency (up to 500 Hz with a 7 degrees of freedom robotic arm). Finally, we present empirical results on several robots, including a non-holonomic mobile manipulator with 10 degrees of freedom and avoidance of a moving human, supporting the theoretical findings.

Keywords

Cite

@article{arxiv.2205.08454,
  title  = {Dynamic Optimization Fabrics for Motion Generation},
  author = {Max Spahn and Martijn Wisse and Javier Alonso-Mora},
  journal= {arXiv preprint arXiv:2205.08454},
  year   = {2023}
}

Comments

Paper submitted to IEEE T-RO on 05/12/2022 Paper accepted to IEEE T-RO on 08/03/2023