Dynamics Of Seasonal Patterns In Geochemical, Isotopic, And Meteorological Records Of The Elbrus Region Derived From Functional Data Clustering

A nonparametric clustering method, the Bagging Voronoi K-Medoid Alignment algorithm, which simultaneously clusters and aligns spatially/temporally dependent  curves,  is applied to study various data series from the Elbrus  region (Central Caucasus). We used the algorithm to cluster annual curves ob...

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Main Authors: Gleb A. Chernyakov, Valeria Vitelli, Mikhail Y. Alexandrin, Alexei M. Grachev, Vladimir N. Mikhalenko, Anna V. Kozachek, Olga N. Solomina, V. V. Matskovsky
Format: Article
Language:English
Published: Lomonosov Moscow State University 2020-10-01
Series:Geography, Environment, Sustainability
Subjects:
Online Access:https://ges.rgo.ru/jour/article/view/1322
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spelling doaj-b4b9e75f57ec4f3dabe2bd6ecf7a4de12021-07-28T21:10:09ZengLomonosov Moscow State UniversityGeography, Environment, Sustainability2071-93882542-15652020-10-0113311011610.24057/2071-9388-2019-180496Dynamics Of Seasonal Patterns In Geochemical, Isotopic, And Meteorological Records Of The Elbrus Region Derived From Functional Data ClusteringGleb A. Chernyakov0Valeria Vitelli1Mikhail Y. Alexandrin2Alexei M. Grachev3Vladimir N. Mikhalenko4Anna V. Kozachek5Olga N. Solomina6V. V. Matskovsky7Institute of Geography, Russian Academy of SciencesUniversity of OsloInstitute of Geography, Russian Academy of SciencesInstitute of Geography, Russian Academy of SciencesInstitute of Geography, Russian Academy of SciencesArctic and Antarctic Research InstituteInstitute of Geography, Russian Academy of SciencesInstitute of Geography, Russian Academy of SciencesA nonparametric clustering method, the Bagging Voronoi K-Medoid Alignment algorithm, which simultaneously clusters and aligns spatially/temporally dependent  curves,  is applied to study various data series from the Elbrus  region (Central Caucasus). We used the algorithm to cluster annual curves obtained by smoothing of the following synchronous data series: titanium concentrations in varved (annually laminated) bottom sediments of proglacial  Lake Donguz-Orun;  an oxygen-18 isotope record in an ice core from Mt. Elbrus; temperature and precipitation observations with a monthly resolution from Teberda and Terskol meteorological stations. The data of different types were clustered independently. Due to restrictions concerned with the availability of meteorological data, we have fulfilled the clustering procedure separately for two periods: 1926–2010 and 1951–2010. The study is aimed to determine whether the instrumental period could be reasonably divided (clustered)  into several sub-periods using different climate and proxy time series; to examine the interpretability of the resulting borders of the clusters (resulting time periods); to study typical patterns of intra-annual variations of the data series. The results of clustering suggest that the precipitation and to a lesser degree titanium decadal-scale data may be reasonably grouped, while the temperature and oxygen-18 series are too short to form meaningful clusters; the intercluster boundaries show a notable degree of coherence between temperature and oxygen-18 data, and less between titanium and oxygen-18 as well as for precipitation series; the annual curves for titanium and partially precipitation data reveal much more pronounced intercluster  variability than the annual patterns of temperature and oxygen-18 data.https://ges.rgo.ru/jour/article/view/1322central caucasuspaleoclimate archiveslake sedimentsice coresclusteringfunctional data
collection DOAJ
language English
format Article
sources DOAJ
author Gleb A. Chernyakov
Valeria Vitelli
Mikhail Y. Alexandrin
Alexei M. Grachev
Vladimir N. Mikhalenko
Anna V. Kozachek
Olga N. Solomina
V. V. Matskovsky
spellingShingle Gleb A. Chernyakov
Valeria Vitelli
Mikhail Y. Alexandrin
Alexei M. Grachev
Vladimir N. Mikhalenko
Anna V. Kozachek
Olga N. Solomina
V. V. Matskovsky
Dynamics Of Seasonal Patterns In Geochemical, Isotopic, And Meteorological Records Of The Elbrus Region Derived From Functional Data Clustering
Geography, Environment, Sustainability
central caucasus
paleoclimate archives
lake sediments
ice cores
clustering
functional data
author_facet Gleb A. Chernyakov
Valeria Vitelli
Mikhail Y. Alexandrin
Alexei M. Grachev
Vladimir N. Mikhalenko
Anna V. Kozachek
Olga N. Solomina
V. V. Matskovsky
author_sort Gleb A. Chernyakov
title Dynamics Of Seasonal Patterns In Geochemical, Isotopic, And Meteorological Records Of The Elbrus Region Derived From Functional Data Clustering
title_short Dynamics Of Seasonal Patterns In Geochemical, Isotopic, And Meteorological Records Of The Elbrus Region Derived From Functional Data Clustering
title_full Dynamics Of Seasonal Patterns In Geochemical, Isotopic, And Meteorological Records Of The Elbrus Region Derived From Functional Data Clustering
title_fullStr Dynamics Of Seasonal Patterns In Geochemical, Isotopic, And Meteorological Records Of The Elbrus Region Derived From Functional Data Clustering
title_full_unstemmed Dynamics Of Seasonal Patterns In Geochemical, Isotopic, And Meteorological Records Of The Elbrus Region Derived From Functional Data Clustering
title_sort dynamics of seasonal patterns in geochemical, isotopic, and meteorological records of the elbrus region derived from functional data clustering
publisher Lomonosov Moscow State University
series Geography, Environment, Sustainability
issn 2071-9388
2542-1565
publishDate 2020-10-01
description A nonparametric clustering method, the Bagging Voronoi K-Medoid Alignment algorithm, which simultaneously clusters and aligns spatially/temporally dependent  curves,  is applied to study various data series from the Elbrus  region (Central Caucasus). We used the algorithm to cluster annual curves obtained by smoothing of the following synchronous data series: titanium concentrations in varved (annually laminated) bottom sediments of proglacial  Lake Donguz-Orun;  an oxygen-18 isotope record in an ice core from Mt. Elbrus; temperature and precipitation observations with a monthly resolution from Teberda and Terskol meteorological stations. The data of different types were clustered independently. Due to restrictions concerned with the availability of meteorological data, we have fulfilled the clustering procedure separately for two periods: 1926–2010 and 1951–2010. The study is aimed to determine whether the instrumental period could be reasonably divided (clustered)  into several sub-periods using different climate and proxy time series; to examine the interpretability of the resulting borders of the clusters (resulting time periods); to study typical patterns of intra-annual variations of the data series. The results of clustering suggest that the precipitation and to a lesser degree titanium decadal-scale data may be reasonably grouped, while the temperature and oxygen-18 series are too short to form meaningful clusters; the intercluster boundaries show a notable degree of coherence between temperature and oxygen-18 data, and less between titanium and oxygen-18 as well as for precipitation series; the annual curves for titanium and partially precipitation data reveal much more pronounced intercluster  variability than the annual patterns of temperature and oxygen-18 data.
topic central caucasus
paleoclimate archives
lake sediments
ice cores
clustering
functional data
url https://ges.rgo.ru/jour/article/view/1322
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