Planning Natural Locomotion for Articulated Soft Quadrupeds
Mathew Jose Pollayil, Cosimo Della Santina, George Mesesan, Johannes Englsberger, Daniel Seidel, Manolo Garabini, Christian Ott, Antonio Bicchi, Alin Albu‐Schäffer
- 发表年份
- 2022
- 引用次数
- 5
摘要
Embedding elastic elements into legged robots through mechanical design enables highly efficient oscillating patterns that resemble natural gaits. However, current trajectory planning techniques miss the opportunity of taking advantage of these natural motions. This work proposes a locomotion planning method that aims to unify traditional trajectory generation with modal oscillations. Our method utilizes task-space linearized modes for generating center of mass trajectories on the sagittal plane. We then use nonlinear optimization to find the gait timings that match these trajectories within the Divergent Component of Motion planning framework. This way, we can robustly translate the modes-aware centroidal motions into joint coordinates. We validate our approach with promising results and insights through experiments on a compliant quadrupedal robot.
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