论文标题
时间周期性措施,随机周期轨道以及耗散性非自治随机微分方程的线性响应
Time-periodic measures, random periodic orbits, and the linear response for dissipative non-autonomous stochastic differential equations
论文作者
论文摘要
我们考虑了一类耗散的随机微分方程(SDE),具有有限尺寸的时间周期系数,以及该SDE对这种SDE诱导的时间复杂性概率指标的响应对基础动力学的足够规则,小的小扰动。理解这种响应提供了一种系统的方法来研究统计可观察到的响应对扰动的变化,并且对于敏感性分析,不确定性定量以及改善非线性动力学系统的概率预测,尤其是在高维度中,它通常非常有用。在这里,我们关注对小扰动的线性响应,而时间膜状概率度量是时间周期性的。首先,我们为基础SDE产生的稳定随机时间周期轨道建立了足够的条件。随后讨论了这些随机周期轨道上支持的时间周期性概率度量的遗传性。然后,我们得出所谓的波动 - 散文关系,该关系允许描述统计观察物对小扰动的线性响应,以仅利用未扰动的动力学的方式来远离时间周期性的厄戈德式制度。结果是在抽象的环境中提出的,但它们适用于从气候建模的各个方面到分子动力学,到对神经网络的近似能力的研究以及其估计的稳健性。
We consider a class of dissipative stochastic differential equations (SDE's) with time-periodic coefficients in finite dimension, and the response of time-asymptotic probability measures induced by such SDE's to sufficiently regular, small perturbations of the underlying dynamics. Understanding such a response provides a systematic way to study changes of statistical observables in response to perturbations, and it is often very useful for sensitivity analysis, uncertainty quantification, and for improving probabilistic predictions of nonlinear dynamical systems, especially in high dimensions. Here, we are concerned with the linear response to small perturbations in the case when the time-asymptotic probability measures are time-periodic. First, we establish sufficient conditions for the existence of stable random time-periodic orbits generated by the underlying SDE. Ergodicity of time-periodic probability measures supported on these random periodic orbits is subsequently discussed. Then, we derive the so-called fluctuation-dissipation relations which allow to describe the linear response of statistical observables to small perturbations away from the time-periodic ergodic regime in a manner which only exploits the unperturbed dynamics. The results are formulated in an abstract setting but they apply to problems ranging from aspects of climate modelling, to molecular dynamics, to the study of approximation capacity of neural~networks and robustness of their estimates.