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Learning Stable Stochastic Nonlinear Dynamical Systems

机译:学习稳定的随机非线性动力系统

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A data-driven identification of dynamical systems requiring only minimal prior knowledge is promising whenever no analytically derived model structure is available, e.g., from first principles in physics. However, meta-knowledge on the system’s behavior is often given and should be exploited: Stability as fundamental property is essential when the model is used for controller design or movement generation. Therefore, this paper proposes a framework for learning stable stochastic systems from data. We focus on identifying a state-dependent coefficient form of the nonlinear stochastic model which is globally asymptotically stable according to probabilistic Lyapunov methods. We compare our approach to other state of the art methods on real-world datasets in terms of flexibility and stability.
机译:每当没有分析得出的模型结构可用时,例如从物理学的第一原理开始,就只需要很少的先验知识的动力系统的数据驱动的识别是有希望的。但是,通常会提供关于系统行为的元知识,并且应该加以利用:当模型用于控制器设计或运动生成时,将稳定性作为基本属性至关重要。因此,本文提出了一种从数据中学习稳定的随机系统的框架。我们着重于确定非线性随机模型的状态相关系数形式,该形式根据概率Lyapunov方法是全局渐近稳定的。在灵活性和稳定性方面,我们将我们的方法与现实数据集上的其他最新方法进行了比较。

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