论文标题
使用高斯流程回归学习稳定的非参数动力学系统
Learning Stable Nonparametric Dynamical Systems with Gaussian Process Regression
论文作者
论文摘要
建模涉及人类的现实世界系统,例如用于疾病治疗的生物学过程或用于机器人康复的人类行为是一个具有挑战性的问题,因为标记的训练数据稀疏又昂贵,而这些动态系统的模型需要高预测准确性。由于该领域问题的高非线性,数据驱动的方法越来越关注识别非参数模型。为了提高这些模型的预测性能,学习方法应包括抽象的先验知识,例如稳定性。关键挑战之一是确保模型的足够灵活性,该模型通常受参数Lyapunov功能的使用来限制以确保稳定性。因此,我们得出了一种基于从数据的高斯过程回归的方法来学习非参数Lyapunov函数的方法。此外,我们从数据中学习了一个非参数高斯过程状态空间模型,并表明它能够准确地重现观察到的数据。我们证明,基于非参数对照Lyapunov函数的名义模型的稳定不会改变训练样本中名义模型的行为。我们的方法的灵活性和效率是在从现实世界数据集中学习手写动作的基准问题上证明的,我们的方法几乎可以准确地复制培训数据。
Modelling real world systems involving humans such as biological processes for disease treatment or human behavior for robotic rehabilitation is a challenging problem because labeled training data is sparse and expensive, while high prediction accuracy is required from models of these dynamical systems. Due to the high nonlinearity of problems in this area, data-driven approaches gain increasing attention for identifying nonparametric models. In order to increase the prediction performance of these models, abstract prior knowledge such as stability should be included in the learning approach. One of the key challenges is to ensure sufficient flexibility of the models, which is typically limited by the usage of parametric Lyapunov functions to guarantee stability. Therefore, we derive an approach to learn a nonparametric Lyapunov function based on Gaussian process regression from data. Furthermore, we learn a nonparametric Gaussian process state space model from the data and show that it is capable of reproducing observed data exactly. We prove that stabilization of the nominal model based on the nonparametric control Lyapunov function does not modify the behavior of the nominal model at training samples. The flexibility and efficiency of our approach is demonstrated on the benchmark problem of learning handwriting motions from a real world dataset, where our approach achieves almost exact reproduction of the training data.