Yang Hui, Chen Yun
Complex Systems Monitoring, Modeling and Analysis Laboratory, University of South Florida, Tampa, Florida 33620, USA.
Chaos. 2014 Mar;24(1):013138. doi: 10.1063/1.4869306.
Recurrence is one of the most common phenomena in natural and engineering systems. Process monitoring of dynamic transitions in nonlinear and nonstationary systems is more concerned with aperiodic recurrences and recurrence variations. However, little has been done to investigate the heterogeneous recurrence variations and link with the objectives of process monitoring and anomaly detection. Notably, nonlinear recurrence methodologies are based on homogeneous recurrences, which treat all recurrence states in the same way as black dots, and non-recurrence is white in recurrence plots. Heterogeneous recurrences are more concerned about the variations of recurrence states in terms of state properties (e.g., values and relative locations) and the evolving dynamics (e.g., sequential state transitions). This paper presents a novel approach of heterogeneous recurrence analysis that utilizes a new fractal representation to delineate heterogeneous recurrence states in multiple scales, including the recurrences of both single states and multi-state sequences. Further, we developed a new set of heterogeneous recurrence quantifiers that are extracted from fractal representation in the transformed space. To that end, we integrated multivariate statistical control charts with heterogeneous recurrence analysis to simultaneously monitor two or more related quantifiers. Experimental results on nonlinear stochastic processes show that the proposed approach not only captures heterogeneous recurrence patterns in the fractal representation but also effectively monitors the changes in the dynamics of a complex system.
复发是自然和工程系统中最常见的现象之一。非线性和非平稳系统中动态转变的过程监测更关注非周期性复发和复发变化。然而,在研究异质复发变化以及将其与过程监测和异常检测目标联系起来方面,所做的工作很少。值得注意的是,非线性复发方法基于同质复发,它将所有复发状态都视为黑点,在复发图中,非复发状态为白色。异质复发更关注复发状态在状态属性(如值和相对位置)以及演化动态(如顺序状态转变)方面的变化。本文提出了一种新颖的异质复发分析方法,该方法利用一种新的分形表示来在多个尺度上描绘异质复发状态,包括单状态和多状态序列的复发。此外,我们开发了一组新的异质复发量化指标,这些指标是从变换空间中的分形表示中提取的。为此,我们将多元统计控制图与异质复发分析相结合,以同时监测两个或多个相关的量化指标。对非线性随机过程的实验结果表明,所提出的方法不仅能在分形表示中捕捉异质复发模式,还能有效监测复杂系统动态的变化。