The use of spatio-temporal correlation to forecast critical transitions
Publication date
2011-09-19
Authors
Karssenberg, D.J.
Bierkens, M.F.P.
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Supervisors
DOI
Document Type
Article in proceedings
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(c) UU Universiteit Utrecht, 2010
Abstract
Complex dynamical systems may have critical thresholds at which the system shifts abruptly from one state to
another. Such critical transitions have been observed in systems ranging from the human body system to financial
markets and the Earth system. Forecasting the timing of critical transitions before they are reached is of paramount
importance because critical transitions are associated with a large shift in dynamical regime of the system under
consideration. However, it is hard to forecast critical transitions, because the state of the system shows relatively
little change before the threshold is reached. Recently, it was shown that increased spatio-temporal autocorrelation
and variance can serve as alternative early warning signal for critical transitions. However, thus far these second
order statistics have not been used for forecasting in a data assimilation framework