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Fuzzy Clustering Based Segmentation of time-Series

机译:基于时间序列的基于模糊聚类的基于分割

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The segmentation of time-series is a constrained clustering problem: the data points should be grouped by their similarity, but with the constraint that all points in a cluster must come from successive time points. the changes of the variables of a time-series are usually vague and do not focused on any particular time point. Therefore it is not practical to define crisp bounds of the segments. Although fuzzy clustering algorithms are widely used to group overlapping and vague objects, they cannot be directly applied to time-series segmentation. This paper proposes a clustering algorithm for the simultaneous identification of fuzzy sets which represent the segments in time and the local PCA models used to measure the homogeneity of the segments. The algorithm is applied to the monitoring of the production of high-density polyethylene.
机译:时间序列的分割是一个受约束的聚类问题:数据点应由它们的相似性分组,但是由于群集中的所有点必须来自连续时间点的约束。时间序列的变量的变化通常是模糊的,并且没有专注于任何特定的时间点。因此,定义段的清晰界限是不实际的。虽然模糊聚类算法广泛用于组重叠和模糊物体,但它们不能直接应用于时间序列分割。本文提出了一种聚类算法,用于同时识别代表时间的模糊集和用于测量段均匀性的本地PCA模型。该算法应用于监测高密度聚乙烯的生产。

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