Department of Water Resources Engineering, Faculty of Civil Engineering, University of Tabriz, Tabriz, Iran.
Department of Bioresource Engineering, McGill University, 21 111 Lakeshore Road, Ste. Anne de Bellevue, QC, Canada H9X 3V9.
Environ Res. 2018 Aug;165:176-192. doi: 10.1016/j.envres.2018.04.017. Epub 2018 Apr 27.
Understanding precipitation on a regional basis is an important component of water resources planning and management. The present study outlines a methodology based on continuous wavelet transform (CWT) and multiscale entropy (CWME), combined with self-organizing map (SOM) and k-means clustering techniques, to measure and analyze the complexity of precipitation. Historical monthly precipitation data from 1960 to 2010 at 31 rain gauges across Iran were preprocessed by CWT. The multi-resolution CWT approach segregated the major features of the original precipitation series by unfolding the structure of the time series which was often ambiguous. The entropy concept was then applied to components obtained from CWT to measure dispersion, uncertainty, disorder, and diversification of subcomponents. Based on different validity indices, k-means clustering captured homogenous areas more accurately, and additional analysis was performed based on the outcome of this approach. The 31 rain gauges in this study were clustered into 6 groups, each one having a unique CWME pattern across different time scales. The results of clustering showed that hydrologic similarity (multiscale variation of precipitation) was not based on geographic contiguity. According to the pattern of entropy across the scales, each cluster was assigned an entropy signature that provided an estimation of the entropy pattern of precipitation data in each cluster. Based on the pattern of mean CWME for each cluster, a characteristic signature was assigned, which provided an estimation of the CWME of a cluster across scales of 1-2, 3-8, and 9-13 months relative to other stations. The validity of the homogeneous clusters demonstrated the usefulness of the proposed approach to regionalize precipitation. Further analysis based on wavelet coherence (WTC) was performed by selecting central rain gauges in each cluster and analyzing against temperature, wind, Multivariate ENSO index (MEI), and East Atlantic (EA) and North Atlantic Oscillation (NAO), indeces. The results revealed that all climatic features except NAO influenced precipitation in Iran during the 1960-2010 period.
理解区域降水是水资源规划和管理的重要组成部分。本研究概述了一种基于连续小波变换(CWT)和多尺度熵(CWME)的方法,结合自组织映射(SOM)和 K 均值聚类技术,以测量和分析降水的复杂性。对 1960 年至 2010 年伊朗 31 个雨量计的历史月降水数据进行了 CWT 预处理。多分辨率 CWT 方法通过展开时间序列的结构,将原始降水序列的主要特征分离出来,而时间序列的结构通常是不明确的。然后,将熵的概念应用于从 CWT 获得的分量,以测量子分量的分散、不确定性、无序和多样化。基于不同的有效性指标,K 均值聚类更准确地捕获了同质性区域,并基于该方法的结果进行了进一步的分析。本研究中的 31 个雨量计被聚类为 6 组,每组在不同的时间尺度上都有独特的 CWME 模式。聚类结果表明,水文相似性(降水的多尺度变化)不是基于地理连续性的。根据整个尺度上的熵模式,为每个聚类分配一个熵特征,该特征提供了每个聚类降水数据的熵模式估计。根据每个聚类的平均 CWME 模式,分配了一个特征特征,该特征提供了相对于其他站在 1-2、3-8 和 9-13 个月的尺度上的 CWME 估计。同质性聚类的有效性证明了该方法在区域化降水方面的有用性。通过选择每个聚类的中心雨量计,并分析与温度、风、多变量厄尔尼诺指数(MEI)、东大西洋(EA)和北大西洋涛动(NAO)指数的关系,进一步进行了基于小波相干性(WTC)的分析。结果表明,除了北大西洋涛动外,所有气候特征都影响了 1960 年至 2010 年期间伊朗的降水。