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Transition-based complexity-entropy causality diagram: A novel method to characterize complex systems

机译:基于转换的复杂性 - 熵因果关系图:一种表征复杂系统的新方法

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Complexity-entropy causality plane (CECP) and ordinal transition network (OTN) are both crucial tools to reveal the characteristics of time series and distinguish complex systems. However, when the parameters of the system to be distinguished have a wide range of values, the distinguishing function of CECP is weakened. Therefore, we propose a new measure called transition Fisher information (TFI) based on the probability transition matrix in OTN. The TFI is combined with conditional entropy of ordinal patterns and complexity measure to form a novel three-dimensional graph, called transition-based complexity entropy causality diagram(TB-CECD). These three statistics depict the complex system from different angles. Through simulation experiments, we prove that even if the parameters of complex systems are wide-ranging, the systems of different properties can be assigned to different areas of the graph. Moreover, we find that the trace of the transition probability matrix can be seen as a function of time delay and used to reflect the periodic information of the system. For applications, the proposed methods are applied to vehicle dynamic response data to diagnose periodic short-wave defects such as rail corrugation. The financial time series and Electroencephanlographic (EEG) time series are also researched. (C) 2020 Elsevier B.V. All rights reserved.
机译:复杂性 - 熵因果平面(CECP)和序数过渡网络(OTN)都是关键的工具,以揭示时间序列的特性和区分复杂系统。然而,当要区分的系统的参数具有宽范围的值时,CECP的区别函数被削弱。因此,我们提出了一种基于OTN中的概率转换矩阵称为转换Fisher信息(TFI)的新措施。 TFI与序数图案的条件熵和复杂度测量相结合,形成了一种新的三维图,称为基于转换的复杂性熵因果图(TB-CECD)。这三个统计数据描绘了来自不同角度的复杂系统。通过仿真实验,我们证明即使复杂系统的参数是宽的,可以将不同的属性系统分配给图形的不同区域。此外,我们发现转变概率矩阵的轨迹可以被视为时间延迟的函数,并用于反映系统的周期性信息。对于应用,所提出的方法应用于车辆动态响应数据,以诊断诸如轨道波纹的周期性短波缺陷。还研究了金融时间序列和electrocalphanlographic(EEG)时间序列。 (c)2020 Elsevier B.v.保留所有权利。

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