Bottom-to-top decomposition of time series by smoothness-controlled cubic splines: Uncovering distinct freezing-melting dynamics between the Arctic and the Antarctic

The classical methods of identifying significant slow components (modes) in a strongly fluctuating signal usually require strict stationarity. A notable exception is the procedure called empirical mode decomposition (EMD), which is designed to work well for nonstationary and nonlinear (quasiperiodic...

Full description

Bibliographic Details
Main Authors: Imre M. Jánosi, Ágnes Baki, Marcus W. Beims, Jason A. C. Gallas
Format: Article
Language:English
Published: American Physical Society 2020-10-01
Series:Physical Review Research
Online Access:http://doi.org/10.1103/PhysRevResearch.2.043040
_version_ 1797211288204476416
author Imre M. Jánosi
Ágnes Baki
Marcus W. Beims
Jason A. C. Gallas
author_facet Imre M. Jánosi
Ágnes Baki
Marcus W. Beims
Jason A. C. Gallas
author_sort Imre M. Jánosi
collection DOAJ
description The classical methods of identifying significant slow components (modes) in a strongly fluctuating signal usually require strict stationarity. A notable exception is the procedure called empirical mode decomposition (EMD), which is designed to work well for nonstationary and nonlinear (quasiperiodic) time series. However, EMD has some well-known limitations such as the end divergence effect, mode mixing, and the general problem of interpreting the modes. Methods to overcome these limitations, such as ensemble EMD or complete ensemble EMD with adaptive noise, promise an exact reconstruction of the original signal and a better spectral separation of the intrinsic mode functions (IMFs). All these variants share the feature that the decomposition runs from the top to the bottom: The first few IMFs represent the noise contribution and the last is a long-term trend. Here we propose a decomposition from the bottom to the top, by the introduction of smoothness-controlled cubic spline fits. The key tool is a systematic scan by cubic spline fits with an input parameter controlling the smoothness, essentially the number of knots. Regression qualities are evaluated by the usual coefficient of determination R^{2}, which grows monotonically when the number of knots increases. In contrast, the growth rate of R^{2} is not monotonic: When an essential slow mode is approached, the growth rate exhibits a local minimum. We demonstrate that this behavior provides an optimal tool to identify strongly quasiperiodic slow modes in nonstationary signals. We illustrate the capability of our method by reconstruction of a synthetic signal composed of a chirp, a strong nonlinear background, and a large-amplitude additive noise, where all EMD-based algorithms fail spectacularly. As a practical application, we identify essential slow modes in daily ice extent anomalies at both the Arctic and the Antarctic. Our analysis demonstrates the distinct freezing-melting dynamics on the two poles, where apparently different factors are determining the time evolution of ice sheets. Thus, we believe that our methodology offers a competitive tool to identify modes in strongly fluctuating data and advances significantly the state of the art regarding the decomposition of nonlinear time series.
first_indexed 2024-04-24T10:24:06Z
format Article
id doaj.art-b612a7e0b3374ba2bb451f80d2c357d7
institution Directory Open Access Journal
issn 2643-1564
language English
last_indexed 2024-04-24T10:24:06Z
publishDate 2020-10-01
publisher American Physical Society
record_format Article
series Physical Review Research
spelling doaj.art-b612a7e0b3374ba2bb451f80d2c357d72024-04-12T17:02:02ZengAmerican Physical SocietyPhysical Review Research2643-15642020-10-012404304010.1103/PhysRevResearch.2.043040Bottom-to-top decomposition of time series by smoothness-controlled cubic splines: Uncovering distinct freezing-melting dynamics between the Arctic and the AntarcticImre M. JánosiÁgnes BakiMarcus W. BeimsJason A. C. GallasThe classical methods of identifying significant slow components (modes) in a strongly fluctuating signal usually require strict stationarity. A notable exception is the procedure called empirical mode decomposition (EMD), which is designed to work well for nonstationary and nonlinear (quasiperiodic) time series. However, EMD has some well-known limitations such as the end divergence effect, mode mixing, and the general problem of interpreting the modes. Methods to overcome these limitations, such as ensemble EMD or complete ensemble EMD with adaptive noise, promise an exact reconstruction of the original signal and a better spectral separation of the intrinsic mode functions (IMFs). All these variants share the feature that the decomposition runs from the top to the bottom: The first few IMFs represent the noise contribution and the last is a long-term trend. Here we propose a decomposition from the bottom to the top, by the introduction of smoothness-controlled cubic spline fits. The key tool is a systematic scan by cubic spline fits with an input parameter controlling the smoothness, essentially the number of knots. Regression qualities are evaluated by the usual coefficient of determination R^{2}, which grows monotonically when the number of knots increases. In contrast, the growth rate of R^{2} is not monotonic: When an essential slow mode is approached, the growth rate exhibits a local minimum. We demonstrate that this behavior provides an optimal tool to identify strongly quasiperiodic slow modes in nonstationary signals. We illustrate the capability of our method by reconstruction of a synthetic signal composed of a chirp, a strong nonlinear background, and a large-amplitude additive noise, where all EMD-based algorithms fail spectacularly. As a practical application, we identify essential slow modes in daily ice extent anomalies at both the Arctic and the Antarctic. Our analysis demonstrates the distinct freezing-melting dynamics on the two poles, where apparently different factors are determining the time evolution of ice sheets. Thus, we believe that our methodology offers a competitive tool to identify modes in strongly fluctuating data and advances significantly the state of the art regarding the decomposition of nonlinear time series.http://doi.org/10.1103/PhysRevResearch.2.043040
spellingShingle Imre M. Jánosi
Ágnes Baki
Marcus W. Beims
Jason A. C. Gallas
Bottom-to-top decomposition of time series by smoothness-controlled cubic splines: Uncovering distinct freezing-melting dynamics between the Arctic and the Antarctic
Physical Review Research
title Bottom-to-top decomposition of time series by smoothness-controlled cubic splines: Uncovering distinct freezing-melting dynamics between the Arctic and the Antarctic
title_full Bottom-to-top decomposition of time series by smoothness-controlled cubic splines: Uncovering distinct freezing-melting dynamics between the Arctic and the Antarctic
title_fullStr Bottom-to-top decomposition of time series by smoothness-controlled cubic splines: Uncovering distinct freezing-melting dynamics between the Arctic and the Antarctic
title_full_unstemmed Bottom-to-top decomposition of time series by smoothness-controlled cubic splines: Uncovering distinct freezing-melting dynamics between the Arctic and the Antarctic
title_short Bottom-to-top decomposition of time series by smoothness-controlled cubic splines: Uncovering distinct freezing-melting dynamics between the Arctic and the Antarctic
title_sort bottom to top decomposition of time series by smoothness controlled cubic splines uncovering distinct freezing melting dynamics between the arctic and the antarctic
url http://doi.org/10.1103/PhysRevResearch.2.043040
work_keys_str_mv AT imremjanosi bottomtotopdecompositionoftimeseriesbysmoothnesscontrolledcubicsplinesuncoveringdistinctfreezingmeltingdynamicsbetweenthearcticandtheantarctic
AT agnesbaki bottomtotopdecompositionoftimeseriesbysmoothnesscontrolledcubicsplinesuncoveringdistinctfreezingmeltingdynamicsbetweenthearcticandtheantarctic
AT marcuswbeims bottomtotopdecompositionoftimeseriesbysmoothnesscontrolledcubicsplinesuncoveringdistinctfreezingmeltingdynamicsbetweenthearcticandtheantarctic
AT jasonacgallas bottomtotopdecompositionoftimeseriesbysmoothnesscontrolledcubicsplinesuncoveringdistinctfreezingmeltingdynamicsbetweenthearcticandtheantarctic