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Learning Stable Nonlinear Dynamical Systems With Gaussian Mixture Models

机译:用高斯混合模型学习稳定的非线性动力系统

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摘要

This paper presents a method to learn discrete robot motions from a set of demonstrations. We model a motion as a nonlinear autonomous (i.e., time-invariant) dynamical system (DS) and define sufficient conditions to ensure global asymptotic stability at the target. We propose a learning method, which is called Stable Estimator of Dynamical Systems (SEDS), to learn the parameters of the DS to ensure that all motions closely follow the demonstrations while ultimately reaching and stopping at the target. Time-invariance and global asymptotic stability at the target ensures that the system can respond immediately and appropriately to perturbations that are encountered during the motion. The method is evaluated through a set of robot experiments and on a library of human handwriting motions.
机译:本文提出了一种通过一组演示来学习离散机器人运动的方法。我们将运动建模为非线性自治(即时不变)动力学系统(DS),并定义了足够的条件以确保目标的全局渐近稳定性。我们提出一种称为动态系统稳定估计器(SEDS)的学习方法,以学习DS的参数,以确保所有运动都紧跟演示而最终到达并停在目标位置。目标的时不变性和全局渐近稳定性确保系统可以立即并适当地响应运动过程中遇到的扰动。该方法是通过一组机器人实验以及人类手写运动库进行评估的。

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