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The Choice of an Appropriate Information Dissimilarity Measure for Hierarchical Clustering of River Streamflow Time Series, Based on Calculated Lyapunov Exponent and Kolmogorov Measures

机译:基于计算的Lyapunov指数和Kolmogorov措施,选择河流流量时间序列分层聚类的适当信息不相似度量

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摘要

The purpose of this paper was to choose an appropriate information dissimilarity measure for hierarchical clustering of daily streamflow discharge data, from twelve gauging stations on the Brazos River in Texas (USA), for the period 1989⁻2016. For that purpose, we selected and compared the average-linkage clustering hierarchical algorithm based on the compression-based dissimilarity measure (NCD), permutation distribution dissimilarity measure (PDDM), and Kolmogorov distance (KD). The algorithm was also compared with K-means clustering based on Kolmogorov complexity (KC), the highest value of Kolmogorov complexity spectrum (KCM), and the largest Lyapunov exponent (LLE). Using a dissimilarity matrix based on NCD, PDDM, and KD for daily streamflow, the agglomerative average-linkage hierarchical algorithm was applied. The key findings of this study are that: (i) The KD clustering algorithm is the most suitable among others; (ii) ANOVA analysis shows that there exist highly significant differences between mean values of four clusters, confirming that the choice of the number of clusters was suitably done; and (iii) from the clustering we found that the predictability of streamflow data of the Brazos River given by the Lyapunov time (LT), corrected for randomness by Kolmogorov time (KT) in days, lies in the interval from two to five days.
机译:本文的目的是选择日流量排放数据的分级聚类的适当信息相异性度量,从所述的Brazos River在得克萨斯州(美国)12个测量站,该期间1989⁻2016。为了这个目的,我们选择并比较平均连锁聚类基于所述基于压缩的相异度度量(NCD),置换分布相异性度量(PDDM),和Kolmogorov距离(KD)分级算法。该算法还比较了K-均值聚类基于柯尔莫哥洛夫复杂性(KC),柯尔莫哥洛夫复杂频谱的最高值(KCM),而最大Lyapunov指数(LLE)。利用基于NCD,PDDM和KD的日流量不相似矩阵,凝聚的平均连锁分层算法应用。本研究的主要发现是:(ⅰ)KD聚类算法是最合适的等; (ⅱ)ANOVA分析表明,存在的四个簇的平均值,从而确认簇的数目的选择被合适地完成之间高度显著的差异;及(iii)从聚类,我们发现,通过李雅普诺夫时间(LT)给出的布拉索斯河径流数据的可预测性,通过柯尔莫哥洛夫时间(KT)在天随机修正,在于从2至5天的时间间隔。

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