Analysis of clustering and selection algorithms for the study of multivariate wave climate |
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Authors: | Paula Camus,Fernando J. Mendez,Raul Medina,Antonio S. Cofiñ o |
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Affiliation: | 1. Environmental Hydraulics Institute “IH Cantabria”, Universidad de Cantabria, Spain;2. Santander Meteorology Group, Dep. of Applied Mathematics and Computer Sciences, Universidad de Cantabria, Spain |
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Abstract: | Recent wave reanalysis databases require the application of techniques capable of managing huge amounts of information. In this paper, several clustering and selection algorithms: K-Means (KMA), self-organizing maps (SOM) and Maximum Dissimilarity (MDA) have been applied to analyze trivariate hourly time series of met-ocean parameters (significant wave height, mean period, and mean wave direction). A methodology has been developed to apply the aforementioned techniques to wave climate analysis, which implies data pre-processing and slight modifications in the algorithms. Results show that: a) the SOM classifies the wave climate in the relevant “wave types” projected in a bidimensional lattice, providing an easy visualization and probabilistic multidimensional analysis; b) the KMA technique correctly represents the average wave climate and can be used in several coastal applications such as longshore drift or harbor agitation; c) the MDA algorithm allows selecting a representative subset of the wave climate diversity quite suitable to be implemented in a nearshore propagation methodology. |
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Keywords: | Data mining K-means Maximum dissimilarity algorithm Probability density function Reanalysis database Self-organizing maps |
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