Computing large deviation prefactors of stochastic dynamical systems based on machine learning

IF 1.5 4区 物理与天体物理 Q2 PHYSICS, MULTIDISCIPLINARY
Yang Li, Shenglan Yuan, Linghongzhi Lu, Xianbin Liu
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引用次数: 0

Abstract

We present a large deviation theory that characterizes the exponential estimate for rare events in stochastic dynamical systems in the limit of weak noise. We aim to consider a next-to-leading-order approximation for more accurate calculation of the mean exit time by computing large deviation prefactors with the aid of machine learning. More specifically, we design a neural network framework to compute quasipotential, most probable paths and prefactors based on the orthogonal decomposition of a vector field. We corroborate the higher effectiveness and accuracy of our algorithm with two toy models. Numerical experiments demonstrate its powerful functionality in exploring the internal mechanism of rare events triggered by weak random fluctuations.
基于机器学习计算随机动力系统的大偏差前因子
我们提出了一种大偏差理论,它描述了在弱噪声极限下随机动态系统中罕见事件的指数估计值。我们的目标是通过借助机器学习计算大偏差预因子,考虑一种次导阶近似方法,以更精确地计算平均退出时间。更具体地说,我们设计了一个神经网络框架,根据向量场的正交分解来计算准位势、最可能路径和前因。我们通过两个玩具模型证实了我们的算法具有更高的有效性和准确性。数值实验证明了该算法在探索由弱随机波动引发的罕见事件的内部机制方面的强大功能。
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来源期刊
Chinese Physics B
Chinese Physics B 物理-物理:综合
CiteScore
2.80
自引率
23.50%
发文量
15667
审稿时长
2.4 months
期刊介绍: Chinese Physics B is an international journal covering the latest developments and achievements in all branches of physics worldwide (with the exception of nuclear physics and physics of elementary particles and fields, which is covered by Chinese Physics C). It publishes original research papers and rapid communications reflecting creative and innovative achievements across the field of physics, as well as review articles covering important accomplishments in the frontiers of physics. Subject coverage includes: Condensed matter physics and the physics of materials Atomic, molecular and optical physics Statistical, nonlinear and soft matter physics Plasma physics Interdisciplinary physics.
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