Transfer operators offer linear representations and global, physically meaningful features of nonlinear dynamical systems. Discovering transfer operators, such as the Koopman operator, require careful crafted dictionaries of observables, acting on states of the dynamical system. This is ad hoc and requires the full dataset for evaluation. In this paper, we offer an optimization scheme to allow joint learning of the observables and Koopman operator with online data. Our results show we are able to reconstruct the evolution and represent the global features of complex dynamical systems.
翻译:传输操作员提供非线性动态系统的直线表达和具有全球实际意义的特点。发现像库普曼操作员这样的传输操作员,需要根据动态系统的状态仔细编制可观测词典。这是临时性的,需要完整的数据集来进行评估。在本文中,我们提供一个优化计划,使可观测和库普曼操作员能够用在线数据共同学习。我们的结果表明,我们能够重建演变过程,并代表复杂的动态系统的全球特征。