Lacasa Lucas, Flanagan Ryan
School of Mathematical Sciences, Queen Mary University of London, Mile End Road, E14NS London, United Kingdom.
Phys Rev E Stat Nonlin Soft Matter Phys. 2015 Aug;92(2):022817. doi: 10.1103/PhysRevE.92.022817. Epub 2015 Aug 24.
Visibility algorithms are a family of methods to map time series into networks, with the aim of describing the structure of time series and their underlying dynamical properties in graph-theoretical terms. Here we explore some properties of both natural and horizontal visibility graphs associated to several nonstationary processes, and we pay particular attention to their capacity to assess time irreversibility. Nonstationary signals are (infinitely) irreversible by definition (independently of whether the process is Markovian or producing entropy at a positive rate), and thus the link between entropy production and time series irreversibility has only been explored in nonequilibrium stationary states. Here we show that the visibility formalism naturally induces a new working definition of time irreversibility, which allows us to quantify several degrees of irreversibility for stationary and nonstationary series, yielding finite values that can be used to efficiently assess the presence of memory and off-equilibrium dynamics in nonstationary processes without the need to differentiate or detrend them. We provide rigorous results complemented by extensive numerical simulations on several classes of stochastic processes.
可见性算法是一类将时间序列映射到网络的方法,旨在用图论术语描述时间序列的结构及其潜在的动力学性质。在这里,我们探索了与几个非平稳过程相关的自然可见性图和水平可见性图的一些性质,并特别关注它们评估时间不可逆性的能力。根据定义,非平稳信号是(无限)不可逆的(与过程是否为马尔可夫过程或以正速率产生熵无关),因此熵产生与时间序列不可逆性之间的联系仅在非平衡稳态中得到探索。在这里,我们表明可见性形式主义自然地引出了时间不可逆性的一个新的工作定义,这使我们能够量化平稳和非平稳序列的几种不可逆程度,产生可用于有效评估非平稳过程中记忆和非平衡动力学存在的有限值,而无需对它们进行微分或去趋势处理。我们提供了严格的结果,并辅以对几类随机过程的广泛数值模拟。