Over the last few years, several works have proposed deep learning architectures to learn dynamical systems from observation data with no or little knowledge of the underlying physics. A line of work relies on learning representations where the dynamics of the underlying phenomenon can be described by a linear operator, based on the Koopman operator theory. However, despite being able to provide reliable long-term predictions for some dynamical systems in ideal situations, the methods proposed so far have limitations, such as requiring to discretize intrinsically continuous dynamical systems, leading to data loss, especially when handling incomplete or sparsely sampled data. Here, we propose a new deep Koopman framework that represents dynamics in an intrinsically continuous way, leading to better performance on limited training data, as exemplified on several datasets arising from dynamical systems.
翻译:在过去几年里,一些工程提出了深层次的学习结构,以便从对基础物理学一无所知或知之甚少的观测数据中学习动态系统。一行工作依赖于学习的表述,根据Koopman操作员的理论,线性操作员可以对潜在现象的动态进行描述。然而,尽管能够对理想情况下的某些动态系统提供可靠的长期预测,但迄今提出的方法有其局限性,例如要求将内在连续动态系统分解,导致数据丢失,特别是在处理不完整或零散抽样数据时。在这里,我们提议一个新的深层次的Koopman框架,以内在的持续方式代表动态,导致对有限培训数据的更好性能,如动态系统产生的若干数据集所示。</s>