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Clustering of multivariate time-series data

机译:多元时间序列数据的聚类

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A new methodology for clustering multivariate time-series data is proposed. The methodology is based on calculation of the degree of similarity between multivariate time-series datasets using two similarity factors. One similarity factor is based on principal component analysis and the angles between the principal component subspaces while the other is based on the Mahalanobis distance between the datasets. The standard K-means algorithm is modified to cluster multivariate time-series datasets using similarity factors. Data from a highly nonlinear acetone-butanol fermentation example are clustered to demonstrate the effectiveness of the proposed methodology. Comparisons with existing clustering methods show several advantages of the proposed methodology.
机译:提出了一种对多元时间序列数据进行聚类的新方法。该方法基于使用两个相似度因子计算多元时间序列数据集之间的相似度。一个相似性因素基于主成分分析和主成分子空间之间的角度,而另一个相似度基于数据集之间的马氏距离。对标准K均值算法进行了修改,以使用相似性因子对多元时间序列数据集进行聚类。来自高度非线性的丙酮-丁醇发酵实例的数据进行了聚类,以证明所提出方法的有效性。与现有聚类方法的比较显示了所提出方法的几个优点。

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