Wendi Dadiyorto, Marwan Norbert
Institute of Earth and Environmental Science, University of Potsdam, Potsdam-Golm 14476, Germany.
Potsdam Institute for Climate Impact Research (PIK), Potsdam 14412, Germany.
Chaos. 2018 Aug;28(8):085722. doi: 10.1063/1.5025485.
One main challenge in constructing a reliable recurrence plot (RP) and, hence, its quantification [recurrence quantification analysis (RQA)] of a continuous dynamical system is the induced noise that is commonly found in observation time series. This induced noise is known to cause disrupted and deviated diagonal lines despite the known deterministic features and, hence, biases the diagonal line based RQA measures and can lead to misleading conclusions. Although discontinuous lines can be further connected by increasing the recurrence threshold, such an approach triggers thick lines in the plot. However, thick lines also influence the RQA measures by artificially increasing the number of diagonals and the length of vertical lines [e.g., Determinism ( ) and Laminarity ( ) become artificially higher]. To take on this challenge, an extended RQA approach for accounting disrupted and deviated diagonal lines is proposed. The approach uses the concept of a sliding diagonal window with minimal window size that tolerates the mentioned deviated lines and also considers a specified minimal lag between points as connected. This is meant to derive a similar determinism indicator for noisy signal where conventional RQA fails to capture. Additionally, an extended local minima approach to construct RP is also proposed to further reduce artificial block structures and vertical lines that potentially increase the associated RQA like LAM. The methodology and applicability of the extended local minima approach and equivalent measure are presented and discussed, respectively.
构建连续动力系统的可靠递归图(RP)及其量化分析[递归量化分析(RQA)]的一个主要挑战是观测时间序列中常见的诱导噪声。尽管已知存在确定性特征,但这种诱导噪声会导致对角线中断和偏离,从而使基于对角线的RQA度量产生偏差,并可能导致误导性结论。虽然可以通过提高递归阈值来进一步连接不连续的线,但这种方法会在图中产生粗线。然而,粗线也会通过人为增加对角线数量和垂直线长度来影响RQA度量[例如,确定性( )和层流性( )会人为地变得更高]。为了应对这一挑战,提出了一种扩展的RQA方法,用于处理中断和偏离的对角线。该方法使用滑动对角线窗口的概念,窗口大小最小,能够容忍上述偏离的线,并且还将点之间指定的最小滞后视为相连。这旨在为传统RQA无法捕捉的噪声信号导出类似的确定性指标。此外,还提出了一种扩展局部最小值方法来构建RP,以进一步减少可能增加相关RQA(如LAM)的人为块结构和垂直线。分别介绍并讨论了扩展局部最小值方法的方法和适用性以及等效度量。