Analyzing coastal environments by means of functional data analysis

 

Authors
Sierra Fern?ndez, Carlos
Format
Article
Status
publishedVersion
Description

Here we used Functional Data Analysis (FDA) to examine particle-size distributions (PSDs) in a beach/shallow marine sedimentary environment in Gij?n Bay (NW Spain). The work involved both Functional Principal Components Analysis (FPCA) and Functional Cluster Analysis (FCA). The grainsize of the sand samples was characterized by means of laser dispersion spectroscopy. Within this framework, FPCA was used as a dimension reduction technique to explore and uncover patterns in grain-size frequency curves. This procedure proved useful to describe variability in the structure of the data set. Moreover, an alternative approach, FCA, was applied to identify clusters and to interpret their spatial distribution. Results obtained with this latter technique were compared with those obtained by means of two vector approaches that combine PCA with CA (Cluster Analysis). The first method, the point density function (PDF), was employed after adapting a log-normal distribution to each PSD and resuming each of the density functions by its mean, sorting, skewness and kurtosis. The second applied a centered-log-ratio (clr) to the original data. PCA was then applied to the transformed data, and finally CA to the retained principal component scores. The study revealed functional data analysis, specifically FPCA and FCA, as a suitable alternative with considerable advantages over traditional vector analysis techniques in sedimentary geology studies.
http://www.sciencedirect.com/science/article/pii/S0037073817301434#!

Publication Year
2017
Language
eng
Topic
PARTICLE-SIZE DISTRIBUTION
SAND SEDIMENTS
FUNCTIONAL CLUSTER ANALYSIS
FUNCTIONAL COMPONENTS ANALYSIS
VECTOR-BASED CLUSTERS
Repository
Repositorio SENESCYT
Get full text
http://repositorio.educacionsuperior.gob.ec/handle/28000/4944
Rights
openAccess
License
restrictedAccess