Complex non-linear time series are ubiquitous in geosciences. Quantifying complexity and non-stationarity of these data is a challenging task, and advanced complexity-based exploratory tool are required for understanding and visualizing such data. This paper discusses the Fisher-Shannon method, from which one can obtain a complexity measure and detect non-stationarity, as an efficient data exploration tool. The state-of-the-art studies related to the Fisher-Shannon measures are collected, and new analytical formulas for positive unimodal skewed distributions are proposed. Case studies on both synthetic and real data illustrate the usefulness of the Fisher-Shannon method, which can find application in different domains including time series discrimination and generation of times series features for clustering, modeling and forecasting. The paper is accompanied with Python and R libraries for the non-parametric estimation of the proposed measures.
翻译:地球科学中普遍存在复杂的非线性时间序列。量化这些数据的复杂性和非静态性是一项具有挑战性的任务,需要先进的基于复杂性的探索工具来理解和直观这些数据。本文件讨论渔业-沙农方法,从中可以获取复杂的测量和探测非静态,作为一种有效的数据探索工具。收集了与渔业-沙农措施有关的最先进的研究,并提出了积极的单式单式倾斜分布的新分析公式。关于合成数据和真实数据的案例研究都说明了渔业-沙农方法的有用性,该方法可在不同领域找到应用,包括时间序列差别和生成集群、建模和预报的时间序列特征。文件与Python和R图书馆一起,对拟议措施进行非参数性估计。