Renormalization group approach to spontaneous stochasticity

G. Eyink, Dmytro Bandak
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引用次数: 6

Abstract

We develop a theoretical approach to ``spontaneous stochasticity'' in classical dynamical systems that are nearly singular and weakly perturbed by noise. This phenomenon is associated to a breakdown in uniqueness of solutions for fixed initial data and underlies many fundamental effects of turbulence (unpredictability, anomalous dissipation, enhanced mixing). Based upon analogy with statistical-mechanical critical points at zero temperature, we elaborate a renormalization group (RG) theory that determines the universal statistics obtained for sufficiently long times after the precise initial data are ``forgotten''. We apply our RG method to solve exactly the ``minimal model'' of spontaneous stochasticity given by a 1D singular ODE. Generalizing prior results for the infinite-Reynolds limit of our model, we obtain the RG fixed points that characterize the spontaneous statistics in the near-singular, weak-noise limit, determine the exact domain of attraction of each fixed point, and derive the universal approach to the fixed points as a singular large-deviations scaling, distinct from that obtained by the standard saddle-point approximation to stochastic path-integrals in the zero-noise limit. We present also numerical simulation results that verify our analytical predictions, propose possible experimental realizations of the ``minimal model'', and discuss more generally current empirical evidence for ubiquitous spontaneous stochasticity in Nature. Our RG method can be applied to more complex, realistic systems and some future applications are briefly outlined.
自发随机性的重整化群方法
我们发展了一种理论方法来“自发随机性”的经典动力系统,几乎是奇异的和弱扰动的噪声。这种现象与固定初始数据解的唯一性崩溃有关,是湍流的许多基本影响(不可预测性、异常耗散、增强混合)的基础。基于与零温度下统计力学临界点的类比,我们阐述了一个重整化群(RG)理论,该理论决定了在精确的初始数据被“遗忘”后足够长时间内获得的普遍统计量。我们应用RG方法精确地求解了一维奇异ODE给出的自发随机性的“极小模型”。推广我们模型的无限雷诺兹极限的先前结果,我们得到了表征近奇异、弱噪声极限下自发统计的RG不动点,确定了每个不动点的确切吸引域,并推导出不动点的通用方法,作为一个奇异的大偏差尺度,不同于零噪声极限下随机路径积分的标准鞍点近似。我们还提供了数值模拟结果来验证我们的分析预测,提出了“最小模型”的可能实验实现,并更广泛地讨论了自然界中普遍存在的自发随机性的当前经验证据。我们的RG方法可以应用于更复杂、更现实的系统,并简要概述了一些未来的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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