4.5 Article

Stochastic stability analysis of legged locomotion using unscented transformation

Journal

BIOINSPIRATION & BIOMIMETICS
Volume 18, Issue 6, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1748-3190/acf634

Keywords

legged robots; stochastic stability; metastability; unscented transformation

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In this manuscript, a novel method is presented for estimating the stochastic stability characteristics of metastable legged systems using the unscented transformation. By reducing the dimensionality of the system and utilizing the unscented transformation, the method enables efficient assessment of controller performance and analysis of parametric dependencies.
In this manuscript, we present a novel method for estimating the stochastic stability characteristics of metastable legged systems using the unscented transformation. Prior methods for stability analysis in such systems often required high-dimensional state space discretization and a broad set of initial conditions, resulting in significant computational complexity. Our approach aims to alleviate this issue by reducing the dimensionality of the system and utilizing the unscented transformation to estimate the output distribution. This technique allows us to account for multiple sources of uncertainty and high-dimensional system dynamics, while leveraging prior knowledge of noise statistics to inform the selection of initial conditions for experiments. As a result, our method enables the efficient assessment of controller performance and analysis of parametric dependencies with fewer experiments. To demonstrate the efficacy of our proposed method, we apply it to the analysis of a one-dimensional hopper and an underactuated bipedal walking simulation with a hybrid zero dynamics controller.

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