Lopes António M, Tenreiro Machado J A
UISPA-LAETA/INEGI, Faculty of Engineering, University of Porto, Rua Dr. Roberto Frias, 4200-465 Porto, Portugal.
Department of Electrical Engineering, Institute of Engineering, Polytechnic of Porto, R. Dr. António Bernardino de Almeida, 431, 4249-015 Porto, Portugal.
Entropy (Basel). 2018 Jun 5;20(6):437. doi: 10.3390/e20060437.
Climate has complex dynamics due to the plethora of phenomena underlying its evolution. These characteristics pose challenges to conducting solid quantitative analysis and reaching assertive conclusions. In this paper, the global temperature time series (TTS) is viewed as a manifestation of the climate evolution, and its complexity is calculated by means of four different indices, namely the Lempel-Ziv complexity, sample entropy, signal harmonics power ratio, and fractal dimension. In the first phase, the monthly mean TTS is pre-processed by means of empirical mode decomposition, and the TTS trend is calculated. In the second phase, the complexity of the detrended signals is estimated. The four indices capture distinct features of the TTS dynamics in a 4-dim space. Hierarchical clustering is adopted for dimensional reduction and visualization in the 2-dim space. The results show that TTS complexity exhibits space-time variability, suggesting the presence of distinct climate forcing processes in both dimensions. Numerical examples with real-world data demonstrate the effectiveness of the approach.
由于气候演变背后存在大量现象,其具有复杂的动态变化。这些特征给进行可靠的定量分析和得出肯定性结论带来了挑战。在本文中,全球温度时间序列(TTS)被视为气候演变的一种表现形式,并且通过四个不同的指标来计算其复杂性,即莱姆尔 - 齐夫复杂性、样本熵、信号谐波功率比和分形维数。在第一阶段中,月平均TTS通过经验模态分解进行预处理,并计算TTS趋势。在第二阶段,估计去趋势信号的复杂性。这四个指标在一个四维空间中捕捉到了TTS动态变化的不同特征。采用层次聚类进行降维和二维空间可视化。结果表明,TTS复杂性呈现出时空变异性,这表明在两个维度上都存在不同的气候强迫过程。使用实际数据的数值示例证明了该方法的有效性。