Margazoglou G, Biferale L, Grauer R, Jansen K, Mesterházy D, Rosenow T, Tripiccione R
Department of Physics, University of Rome Tor Vergata and INFN-Tor Vergata, 00133 Rome, Italy.
Computation-based Science and Technology Research Center, Cyprus Institute, 2121 Nicosia, Cyprus.
Phys Rev E. 2019 May;99(5-1):053303. doi: 10.1103/PhysRevE.99.053303.
We introduce a variant of the Hybrid Monte Carlo (HMC) algorithm to address large-deviation statistics in stochastic hydrodynamics. Based on the path-integral approach to stochastic (partial) differential equations, our HMC algorithm samples space-time histories of the dynamical degrees of freedom under the influence of random noise. First, we validate and benchmark the HMC algorithm by reproducing multiscale properties of the one-dimensional Burgers equation driven by Gaussian and white-in-time noise. Second, we show how to implement an importance sampling protocol to significantly enhance, by orders of magnitudes, the probability to sample extreme and rare events, making it possible to estimate moments of field variables of extremely high order (up to 30 and more). By employing reweighting techniques, we map the biased configurations back to the original probability measure in order to probe their statistical importance. Finally, we show that by biasing the system towards very intense negative gradients, the HMC algorithm is able to explore the statistical fluctuations around instanton configurations. Our results will also be interesting and relevant in lattice gauge theory since they provide unique insights into reweighting techniques.
我们引入了混合蒙特卡罗(HMC)算法的一种变体,以解决随机流体动力学中的大偏差统计问题。基于对随机(偏)微分方程的路径积分方法,我们的HMC算法在随机噪声的影响下对动力学自由度的时空历史进行采样。首先,我们通过重现由高斯白噪声驱动的一维伯格斯方程的多尺度特性来验证和基准测试HMC算法。其次,我们展示了如何实施重要性采样协议,以将采样极端和罕见事件的概率提高几个数量级,从而能够估计极高阶(高达30阶及以上)的场变量矩。通过采用重加权技术,我们将有偏配置映射回原始概率测度,以探究它们的统计重要性。最后,我们表明,通过使系统偏向非常强烈的负梯度,HMC算法能够探索瞬子配置周围的统计涨落。我们的结果在格点规范理论中也将是有趣且相关的,因为它们为重加权技术提供了独特的见解。