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Autori principali: Heßler, Martin, Kamps, Oliver
Natura: Preprint
Pubblicazione: 2022
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Accesso online:https://arxiv.org/abs/2212.06780
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author Heßler, Martin
Kamps, Oliver
author_facet Heßler, Martin
Kamps, Oliver
contents Critical transitions, ubiquitous in nature and technology, necessitate anticipation to avert adverse outcomes. While many studies focus on bifurcation-induced tipping, where a control parameter change leads to destabilization, alternative scenarios are conceivable, e.g. noise-induced tipping by an increasing noise level in a multi-stable system. Although the generating mechanisms can be different, the observed time series can exhibit similar characteristics. Therefore, we propose a Bayesian Langevin approach, implemented in an open-source tool, which is capable of quantifying both deterministic and intrinsic stochastic dynamics simultaneously. After a detailed proof of concept, we analyse two bus voltage frequency time series of the historic North America Western Interconnection blackout on 10th August 1996. Our results unveil the intricate interplay of changing resilience and noise influence. A comparison with the blackout's timeline supports our frequency dynamics' Langevin model, with the BL-estimation indicating a permanent grid state change already two minutes before the officially defined triggering event. A tree-related high impedance fault or sudden load increases may serve as earlier triggers during this event, as suggested by our findings. This study underscores the importance of distinguishing destabilizing factors for a reliable anticipation of critical transitions, offering a tool for better understanding such events across various disciplines.
format Preprint
id arxiv_https___arxiv_org_abs_2212_06780
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Quantifying Tipping Risks in Power Grids and beyond
Heßler, Martin
Kamps, Oliver
Data Analysis, Statistics and Probability
Adaptation and Self-Organizing Systems
Applied Physics
Computational Physics
Physics and Society
37M (Primary), 65-04, 65C05, 65C40, 60-08, 62-08 (Secondary)
G.3; G.4; I.6
Critical transitions, ubiquitous in nature and technology, necessitate anticipation to avert adverse outcomes. While many studies focus on bifurcation-induced tipping, where a control parameter change leads to destabilization, alternative scenarios are conceivable, e.g. noise-induced tipping by an increasing noise level in a multi-stable system. Although the generating mechanisms can be different, the observed time series can exhibit similar characteristics. Therefore, we propose a Bayesian Langevin approach, implemented in an open-source tool, which is capable of quantifying both deterministic and intrinsic stochastic dynamics simultaneously. After a detailed proof of concept, we analyse two bus voltage frequency time series of the historic North America Western Interconnection blackout on 10th August 1996. Our results unveil the intricate interplay of changing resilience and noise influence. A comparison with the blackout's timeline supports our frequency dynamics' Langevin model, with the BL-estimation indicating a permanent grid state change already two minutes before the officially defined triggering event. A tree-related high impedance fault or sudden load increases may serve as earlier triggers during this event, as suggested by our findings. This study underscores the importance of distinguishing destabilizing factors for a reliable anticipation of critical transitions, offering a tool for better understanding such events across various disciplines.
title Quantifying Tipping Risks in Power Grids and beyond
topic Data Analysis, Statistics and Probability
Adaptation and Self-Organizing Systems
Applied Physics
Computational Physics
Physics and Society
37M (Primary), 65-04, 65C05, 65C40, 60-08, 62-08 (Secondary)
G.3; G.4; I.6
url https://arxiv.org/abs/2212.06780