Trend analysis using non-stationary time series clustering based on the finite element method
In order to analyze low-frequency variability of climate, it is useful to model the climatic time series with multiple linear trends and locate the times of significant changes. In this paper, we have used non-stationary time series clustering to find change points in the trends. Clustering in a mul...
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doaj-1766820813534a35a250958bad9743922020-11-24T20:44:35ZengCopernicus PublicationsNonlinear Processes in Geophysics1023-58091607-79462014-05-0121360561510.5194/npg-21-605-2014Trend analysis using non-stationary time series clustering based on the finite element methodM. Gorji Sefidmazgi0M. Sayemuzzaman1A. Homaifar2M. K. Jha3S. Liess4North Carolina A&T State University, Dept. of Electrical Engineering, Greensboro, USANorth Carolina A&T State University, Dept. of Energy and Environmental Systems, Greensboro, USANorth Carolina A&T State University, Dept. of Electrical Engineering, Greensboro, USANorth Carolina A&T State University, Dept. of Civil, Architectural and Environmental Engineering, Greensboro, USAUniversity of Minnesota, Department of Soil, Water and Climate, St. Paul, USAIn order to analyze low-frequency variability of climate, it is useful to model the climatic time series with multiple linear trends and locate the times of significant changes. In this paper, we have used non-stationary time series clustering to find change points in the trends. Clustering in a multi-dimensional non-stationary time series is challenging, since the problem is mathematically ill-posed. Clustering based on the finite element method (FEM) is one of the methods that can analyze multidimensional time series. One important attribute of this method is that it is not dependent on any statistical assumption and does not need local stationarity in the time series. In this paper, it is shown how the FEM-clustering method can be used to locate change points in the trend of temperature time series from in situ observations. This method is applied to the temperature time series of North Carolina (NC) and the results represent region-specific climate variability despite higher frequency harmonics in climatic time series. Next, we investigated the relationship between the climatic indices with the clusters/trends detected based on this clustering method. It appears that the natural variability of climate change in NC during 1950–2009 can be explained mostly by AMO and solar activity.http://www.nonlin-processes-geophys.net/21/605/2014/npg-21-605-2014.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
M. Gorji Sefidmazgi M. Sayemuzzaman A. Homaifar M. K. Jha S. Liess |
spellingShingle |
M. Gorji Sefidmazgi M. Sayemuzzaman A. Homaifar M. K. Jha S. Liess Trend analysis using non-stationary time series clustering based on the finite element method Nonlinear Processes in Geophysics |
author_facet |
M. Gorji Sefidmazgi M. Sayemuzzaman A. Homaifar M. K. Jha S. Liess |
author_sort |
M. Gorji Sefidmazgi |
title |
Trend analysis using non-stationary time series clustering based on the finite element method |
title_short |
Trend analysis using non-stationary time series clustering based on the finite element method |
title_full |
Trend analysis using non-stationary time series clustering based on the finite element method |
title_fullStr |
Trend analysis using non-stationary time series clustering based on the finite element method |
title_full_unstemmed |
Trend analysis using non-stationary time series clustering based on the finite element method |
title_sort |
trend analysis using non-stationary time series clustering based on the finite element method |
publisher |
Copernicus Publications |
series |
Nonlinear Processes in Geophysics |
issn |
1023-5809 1607-7946 |
publishDate |
2014-05-01 |
description |
In order to analyze low-frequency variability of climate, it is useful to
model the climatic time series with multiple linear trends and locate the
times of significant changes. In this paper, we have used non-stationary time
series clustering to find change points in the trends. Clustering in a
multi-dimensional non-stationary time series is challenging, since the
problem is mathematically ill-posed. Clustering based on the finite element
method (FEM) is one of the methods that can analyze multidimensional time
series. One important attribute of this method is that it is not dependent on
any statistical assumption and does not need local stationarity in the time
series. In this paper, it is shown how the FEM-clustering method can be used
to locate change points in the trend of temperature time series from in
situ observations. This method is applied to the temperature time
series of North Carolina (NC) and the results represent region-specific
climate variability despite higher frequency harmonics in climatic time
series. Next, we investigated the relationship between the climatic indices
with the clusters/trends detected based on this clustering method. It appears
that the natural variability of climate change in NC during 1950–2009 can be
explained mostly by AMO and solar activity. |
url |
http://www.nonlin-processes-geophys.net/21/605/2014/npg-21-605-2014.pdf |
work_keys_str_mv |
AT mgorjisefidmazgi trendanalysisusingnonstationarytimeseriesclusteringbasedonthefiniteelementmethod AT msayemuzzaman trendanalysisusingnonstationarytimeseriesclusteringbasedonthefiniteelementmethod AT ahomaifar trendanalysisusingnonstationarytimeseriesclusteringbasedonthefiniteelementmethod AT mkjha trendanalysisusingnonstationarytimeseriesclusteringbasedonthefiniteelementmethod AT sliess trendanalysisusingnonstationarytimeseriesclusteringbasedonthefiniteelementmethod |
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