Stationary Intervals for Random Waves by Functional Clustering of Spectral Densities

D. Rivera-García, L. García-Escudero, A. Mayo-Íscar, J. Ortega
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Abstract

A new time series clustering procedure, based on Functional Data Analysis techniques applied to spectral densities, is employed in this work for the detection of stationary intervals in random waves. Long records of wave data are divided into 30-minute or one-hour segments and the spectral density of each interval is estimated by one of the standard methods available. These spectra are regarded as the main characteristic of each 30-minute time series for clustering purposes. The spectra are considered as functional data and, after representation on a spline basis, they are clustered by a mixtures model method based on a truncated Karhunen-Loéve expansion as an approximation to the density function for functional data. The clustering method uses trimming techniques and restrictions on the scatter within groups to reduce the effect of outliers and to prevent the detection of spurious clusters. Simulation examples show that the procedure works well in the presence of noise and the restrictions on the scatter are effective in avoiding the detection of false clusters. Consecutive time intervals clustered together are considered as a single stationary segment of the time series. An application to real wave data is presented.
基于谱密度泛函聚类的随机波平稳区间
一种新的时间序列聚类程序,基于应用于谱密度的功能数据分析技术,在这项工作中用于检测随机波中的平稳间隔。波浪数据的长记录被分成30分钟或1小时的片段,每个间隔的谱密度用一种可用的标准方法估计。这些光谱被视为每个30分钟时间序列的主要特征,用于聚类目的。光谱被认为是功能数据,在样条基础上表示后,它们通过基于截断karhunen - losamuve展开的混合模型方法聚类,作为功能数据密度函数的近似。聚类方法采用了对组内散点的修剪技术和限制,以减少异常值的影响,防止检测到虚假聚类。仿真实例表明,该方法在噪声存在的情况下也能很好地工作,并且对散点的限制能有效地避免假聚类的检测。将聚类在一起的连续时间间隔视为时间序列的单个平稳段。给出了一个在实际波浪数据中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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