Early-warning indicators for tipping points

The term ‘tipping event’ is used to describe a certain class of phenomena as observed in many different fields of science. It refers to an event where a gradual change of external forcing causes a sudden, large, often unwanted, transition to the state of the system. Some examples of known tipping ev...

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Published in:Chaos: An Interdisciplinary Journal of Nonlinear Science
Main Author: Ritchie, Paul David Longden Jr
Other Authors: Sieber, Jan Jr
Format: Doctoral or Postdoctoral Thesis
Language:English
Published: University of Exeter 2016
Subjects:
Online Access:http://hdl.handle.net/10871/24190
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spelling ftunivexeter:oai:ore.exeter.ac.uk:10871/24190 2024-09-15T18:35:37+00:00 Early-warning indicators for tipping points Ritchie, Paul David Longden Jr Sieber, Jan Jr 2016 http://hdl.handle.net/10871/24190 en eng University of Exeter College of Engineering, Mathematics and Physical Sciences Paul Ritchie and Jan Sieber. Early-warning indicators for rate-induced tipping. Chaos, 26(9):093116, 2016. doi: http://dx.doi.org/10.1063/1.4963012. http://hdl.handle.net/10871/24190 Tipping points rate-induced noise-induced early-warning indicators Thesis or dissertation PhD in Mathematics Doctoral PhD 2016 ftunivexeter https://doi.org/10.1063/1.4963012 2024-07-29T03:24:15Z The term ‘tipping event’ is used to describe a certain class of phenomena as observed in many different fields of science. It refers to an event where a gradual change of external forcing causes a sudden, large, often unwanted, transition to the state of the system. Some examples of known tipping events in science include: Arctic sea ice melting (climate), epileptic seizures (biology), collapse of ecosystems and populations (ecology) and market crashes (finance). Three mathematical mechanisms for tipping events have been proposed in the literature: bifurcation-, noise- or rate-induced tipping. Recent research has focused on developing early-warning indicators to potentially offer forewarning, which can extract from output time series whether the external forcing approaches a critical level at which tipping occurs. Two commonly used early-warning indicators are an increase of autocorrelation and variance in the time series data for the system’s output. The theory behind the presence of these indicators is the loss of stability of the system’s current state known as ‘critical slowing down’ for the approach of a bifurcation-induced tipping. Rate-induced tipping occurs when the external forcing reaches a critical rate instead of level. For rate-induced tipping there is no loss of stability of the system’s current state and therefore it is not clear if the early-warning indicators should exist. In this thesis we investigate the presence of early-warning indicators for models that show rate-induced tipping with additive noise. We also explore a technique for determining the most likely time of tipping using optimal paths for escape. Research has mainly focussed on testing the early-warning indicators for examples of known tipping events in the past. The ultimate aim of early-warning indicators would be to have the ability to predict future tipping events. Using the early-warning indicators in isolation is susceptible to incurring false alarms and missed alarms. We present a method for approximating the probability of ... Doctoral or Postdoctoral Thesis Sea ice University of Exeter: Open Research Exeter (ORE) Chaos: An Interdisciplinary Journal of Nonlinear Science 26 9 093116
institution Open Polar
collection University of Exeter: Open Research Exeter (ORE)
op_collection_id ftunivexeter
language English
topic Tipping points
rate-induced
noise-induced
early-warning indicators
spellingShingle Tipping points
rate-induced
noise-induced
early-warning indicators
Ritchie, Paul David Longden Jr
Early-warning indicators for tipping points
topic_facet Tipping points
rate-induced
noise-induced
early-warning indicators
description The term ‘tipping event’ is used to describe a certain class of phenomena as observed in many different fields of science. It refers to an event where a gradual change of external forcing causes a sudden, large, often unwanted, transition to the state of the system. Some examples of known tipping events in science include: Arctic sea ice melting (climate), epileptic seizures (biology), collapse of ecosystems and populations (ecology) and market crashes (finance). Three mathematical mechanisms for tipping events have been proposed in the literature: bifurcation-, noise- or rate-induced tipping. Recent research has focused on developing early-warning indicators to potentially offer forewarning, which can extract from output time series whether the external forcing approaches a critical level at which tipping occurs. Two commonly used early-warning indicators are an increase of autocorrelation and variance in the time series data for the system’s output. The theory behind the presence of these indicators is the loss of stability of the system’s current state known as ‘critical slowing down’ for the approach of a bifurcation-induced tipping. Rate-induced tipping occurs when the external forcing reaches a critical rate instead of level. For rate-induced tipping there is no loss of stability of the system’s current state and therefore it is not clear if the early-warning indicators should exist. In this thesis we investigate the presence of early-warning indicators for models that show rate-induced tipping with additive noise. We also explore a technique for determining the most likely time of tipping using optimal paths for escape. Research has mainly focussed on testing the early-warning indicators for examples of known tipping events in the past. The ultimate aim of early-warning indicators would be to have the ability to predict future tipping events. Using the early-warning indicators in isolation is susceptible to incurring false alarms and missed alarms. We present a method for approximating the probability of ...
author2 Sieber, Jan Jr
format Doctoral or Postdoctoral Thesis
author Ritchie, Paul David Longden Jr
author_facet Ritchie, Paul David Longden Jr
author_sort Ritchie, Paul David Longden Jr
title Early-warning indicators for tipping points
title_short Early-warning indicators for tipping points
title_full Early-warning indicators for tipping points
title_fullStr Early-warning indicators for tipping points
title_full_unstemmed Early-warning indicators for tipping points
title_sort early-warning indicators for tipping points
publisher University of Exeter
publishDate 2016
url http://hdl.handle.net/10871/24190
genre Sea ice
genre_facet Sea ice
op_relation Paul Ritchie and Jan Sieber. Early-warning indicators for rate-induced tipping. Chaos, 26(9):093116, 2016. doi: http://dx.doi.org/10.1063/1.4963012.
http://hdl.handle.net/10871/24190
op_doi https://doi.org/10.1063/1.4963012
container_title Chaos: An Interdisciplinary Journal of Nonlinear Science
container_volume 26
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