Toward data-driven models of legged locomotion using harmonic transfer functions

Ismail Uyanik, M. M. Ankaralı, N. Cowan, Ö. Morgül, U. Saranlı
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引用次数: 10

Abstract

There are limitations on the extent to which manually constructed mathematical models can capture relevant aspects of legged locomotion. Even simple models for basic behaviours such as running involve non-integrable dynamics, requiring the use of possibly inaccurate approximations in the design of model-based controllers. In this study, we show how data-driven frequency domain system identification methods can be used to obtain input-output characteristics for a class of dynamical systems around their limit cycles, with hybrid structural properties similar to those observed in legged locomotion systems. Under certain assumptions, we can approximate hybrid dynamics of such systems around their limit cycle as a piecewise smooth linear time periodic system (LTP), further approximated as a time-periodic, piecewise LTI system to reduce parametric degrees of freedom in the identification process. In this paper, we use a simple one-dimensional hybrid model in which a limit-cycle is induced through the actions of a linear actuator to illustrate the details of our method. We first derive theoretical harmonic transfer functions (HTFs) of our example model. We then excite the model with small chirp signals to introduce perturbations around its limit-cycle and present systematic identification results to estimate the HTFs for this model. Comparison between the data-driven HTFs model and its theoretical prediction illustrates the potential effectiveness of such empirical identification methods in legged locomotion.
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基于谐波传递函数的腿部运动数据驱动模型研究
人工构建的数学模型在多大程度上能够捕捉腿部运动的相关方面是有局限性的。即使是基本行为(如跑步)的简单模型也涉及不可积动力学,这需要在基于模型的控制器设计中使用可能不准确的近似值。在这项研究中,我们展示了如何使用数据驱动的频域系统识别方法来获得一类动力系统在其极限环周围的输入输出特性,其混合结构特性与在腿运动系统中观察到的相似。在一定的假设条件下,我们可以将这类系统在其极限环附近的混合动力学近似为一个分段光滑线性时间周期系统(LTP),进一步近似为一个时间周期的分段LTI系统,以减少辨识过程中的参数自由度。在本文中,我们使用一个简单的一维混合模型来说明我们的方法的细节,其中一个极限环是通过线性执行器的动作引起的。我们首先推导了我们的例子模型的理论调和传递函数(HTFs)。然后,我们用小啁啾信号激发模型,在其极限环周围引入扰动,并给出系统识别结果来估计该模型的HTFs。数据驱动的HTFs模型与其理论预测的比较说明了这种经验识别方法在腿部运动中的潜在有效性。
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