4.3 Article

Time series clustering using the total variation distance with applications in oceanography

Journal

ENVIRONMETRICS
Volume 27, Issue 6, Pages 355-369

Publisher

WILEY
DOI: 10.1002/env.2398

Keywords

spectral analysis; random sea waves; hierarchical clustering; stationary periods

Funding

  1. US Army Corps of Engineers
  2. California Department of Boating and Waterways
  3. CONACYT, Mexico [169175]
  4. Proyect Fase II y Anaisis Espectral [234057]
  5. CIMAT, A.C.
  6. Spanish Ministerio de Economia y Competitividad [MTM2014-56235-C2-1-P, MTM2014-56235-C2-2]
  7. Consejeria de Educacion de la Junta de Castilla y Leon [VA212U13]

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A clustering procedure for time series based on the use of the total variation distance between normalized spectral densities is proposed in this work. The approach is thus based on classifying time series in the frequency domain by consideration of the similarity between their oscillatory characteristics. As an application of this procedure, an algorithm for determining stationary periods for time series of random sea waves is developed, a problem in which changes between stationary sea states is usually slow. The proposed clustering algorithm is compared to several other methods which are also based on features extracted from the original series, and the results show that its performance is comparable to the best methods available, and in some tests, it performs better. This clustering method may be of independent interest. Copyright (c) 2016 John Wiley & Sons, Ltd.

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