Physics-informed spectral approximation of Koopman operators

IF 2.9 3区 数学 Q1 MATHEMATICS, APPLIED
Dimitrios Giannakis , Claire Valva
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引用次数: 0

Abstract

Koopman operators and transfer operators represent nonlinear dynamics in state space through its induced action on linear spaces of observables and measures, respectively. This framework enables the use of linear operator theory for supervised and unsupervised learning of nonlinear dynamical systems, and has received considerable interest in recent years. Here, we propose a data-driven technique for spectral approximation of Koopman operators of continuous-time, measure-preserving ergodic systems that is asymptotically consistent and makes direct use of known equations of motion (physics). Our approach is based on a bounded transformation of the Koopman generator (an operator implementing directional derivatives of observables along the dynamical flow), followed by smoothing by a Markov semigroup of kernel integral operators. This results in a skew-adjoint, compact operator whose eigendecomposition is expressible as a variational generalized eigenvalue problem. We develop Galerkin methods to solve this eigenvalue problem and study their asymptotic consistency in the large-data limit. A key aspect of these methods is that they are physics-informed, in the sense of making direct use of dynamical vector field information through automatic differentiation of kernel functions. Solutions of the eigenvalue problem reconstruct evolution operators that preserve unitarity of the underlying Koopman group while spectrally converging to it in a suitable limit. In addition, the computed eigenfunctions have representatives in a reproducing kernel Hilbert space, enabling out-of-sample evaluation of learned dynamical features. Numerical experiments performed with this method on integrable and chaotic low-dimensional systems demonstrate its efficacy in extracting dynamically coherent observables under complex dynamics.
Koopman算子的物理信息谱近似
库普曼算子和传递算子分别通过诱导作用于可观测值和测度的线性空间来表示状态空间中的非线性动力学。该框架使线性算子理论能够用于非线性动力系统的监督和无监督学习,近年来受到了相当大的关注。在这里,我们提出了一种数据驱动技术,用于连续时间,保持测量的遍历系统的Koopman算子的谱逼近,该系统是渐近一致的,并直接使用已知的运动方程(物理)。我们的方法是基于Koopman生成器的有界变换(一种实现沿着动态流的可观测值的方向导数的算子),然后是核积分算子的马尔可夫半群的平滑。这就得到了一个斜伴随紧算子,其特征分解可表示为变分广义特征值问题。我们发展了Galerkin方法来解决这一特征值问题,并研究了它们在大数据极限下的渐近一致性。这些方法的一个关键方面是它们是物理信息,在通过核函数的自动微分直接利用动态向量场信息的意义上。特征值问题的解重构了保持底层库普曼群的统一性的演化算子,同时在合适的极限下谱收敛到库普曼群。此外,计算的特征函数在再现核希尔伯特空间中具有代表,从而可以对学习到的动态特征进行样本外评估。用该方法对可积和混沌低维系统进行了数值实验,结果表明该方法能够有效地提取复杂动力学条件下的动态相干观测值。
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来源期刊
Physica D: Nonlinear Phenomena
Physica D: Nonlinear Phenomena 物理-物理:数学物理
CiteScore
7.30
自引率
7.50%
发文量
213
审稿时长
65 days
期刊介绍: Physica D (Nonlinear Phenomena) publishes research and review articles reporting on experimental and theoretical works, techniques and ideas that advance the understanding of nonlinear phenomena. Topics encompass wave motion in physical, chemical and biological systems; physical or biological phenomena governed by nonlinear field equations, including hydrodynamics and turbulence; pattern formation and cooperative phenomena; instability, bifurcations, chaos, and space-time disorder; integrable/Hamiltonian systems; asymptotic analysis and, more generally, mathematical methods for nonlinear systems.
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