Wang Minggang, Vilela André L M, Du Ruijin, Zhao Longfeng, Dong Gaogao, Tian Lixin, Stanley H Eugene
School of Mathematical Science, Nanjing Normal University, Nanjing, 210042, Jiangsu, China.
Department of Mathematics, Nanjing Normal University Taizhou College, Taizhou, 225300, Jiangsu, China.
Sci Rep. 2018 Mar 23;8(1):5130. doi: 10.1038/s41598-018-23388-1.
The limited penetrable horizontal visibility algorithm is an analysis tool that maps time series into complex networks and is a further development of the horizontal visibility algorithm. This paper presents exact results on the topological properties of the limited penetrable horizontal visibility graph associated with independent and identically distributed (i:i:d:) random series. We show that the i.i.d: random series maps on a limited penetrable horizontal visibility graph with exponential degree distribution, independent of the probability distribution from which the series was generated. We deduce the exact expressions of mean degree and clustering coefficient, demonstrate the long distance visibility property of the graph and perform numerical simulations to test the accuracy of our theoretical results. We then use the algorithm in several deterministic chaotic series, such as the logistic map, H´enon map, Lorenz system, energy price chaotic system and the real crude oil price. Our results show that the limited penetrable horizontal visibility algorithm is efficient to discriminate chaos from uncorrelated randomness and is able to measure the global evolution characteristics of the real time series.
有限穿透水平可见性算法是一种将时间序列映射到复杂网络的分析工具,是水平可见性算法的进一步发展。本文给出了与独立同分布(i:i:d:)随机序列相关的有限穿透水平可见性图拓扑性质的精确结果。我们表明,独立同分布随机序列映射到具有指数度分布的有限穿透水平可见性图上,与生成该序列的概率分布无关。我们推导了平均度和聚类系数的精确表达式,证明了该图的长距离可见性特性,并进行了数值模拟以检验我们理论结果的准确性。然后我们将该算法应用于几个确定性混沌序列,如逻辑斯谛映射、亨农映射、洛伦兹系统、能源价格混沌系统和实际原油价格。我们的结果表明,有限穿透水平可见性算法能有效地将混沌与不相关的随机性区分开来,并能够测量实时序列的全局演化特征。