Simultaneous Ground Reaction Force and State Estimation via Constrained Moving Horizon Estimation
Accurate ground reaction force (GRF) estimation can significantly improve the adaptability of legged robots in various real-world applications. For instance, with estimated GRF and contact kinematics, the locomotion control and planning assist the robot in overcoming uncertain terrains. The canonica...
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Zusammenfassung: | Accurate ground reaction force (GRF) estimation can significantly improve the
adaptability of legged robots in various real-world applications. For instance,
with estimated GRF and contact kinematics, the locomotion control and planning
assist the robot in overcoming uncertain terrains. The canonical momentum-based
methods, formulated as nonlinear observers, do not fully address the noisy
measurements and the dependence between floating base states and the
generalized momentum dynamics. In this paper, we present a simultaneous ground
reaction force and state estimation framework for legged robots, which
systematically addresses the sensor noise and the coupling between states and
dynamics. With the floating base orientation estimated separately, a
decentralized Moving Horizon Estimation (MHE) method is implemented to fuse the
robot dynamics, proprioceptive sensors, exteroceptive sensors, and
deterministic contact complementarity constraints in a convex windowed
optimization. The proposed method is shown to be capable of providing accurate
GRF and state estimation on several legged robots, including the open-source
educational planar bipedal robot STRIDE and quadrupedal robot Unitree Go1, with
a frequency of 200Hz and a past time window of 0.04s. |
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DOI: | 10.48550/arxiv.2411.12047 |