Open Access
Early‐warning signals (potentially) reduce uncertainty in forecasted timing of critical shifts
Author(s) -
Karssenberg Derek,
Bierkens Marc F. P.
Publication year - 2012
Publication title -
ecosphere
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.255
H-Index - 57
ISSN - 2150-8925
DOI - 10.1890/es11-00293.1
Subject(s) - warning system , ecosystem , environmental science , probabilistic logic , variance (accounting) , regime shift , bayesian probability , econometrics , computer science , ecology , environmental resource management , mathematics , artificial intelligence , economics , telecommunications , accounting , biology
Despite the identification of early‐warning signals precluding ecosystems regime shifts, limited evidence exists that they can be used to forecast the actual timing of a critical shift. Here, we propose a probabilistic Bayesian approach to forecast the timing of a shift by combining uncertain prior information about the ecosystem dynamics (parameters and drivers) and sampled spatial and temporal correlation and variance of ecosystem states, which are well known early‐warning signals. For an ecosystem of logistically growing vegetation under linear increase in grazing pressure, we show that the use of sampled early‐warning signals results in lower prediction uncertainty in forecasted timing of shifts compared to forecasts made with sampled mean state variables. In addition, we show that uncertainty in ecosystem parameters decreases well ahead of a shift. An important conclusion of our study is that the use of early‐warning signals in forecasting of shifts is promising, provided that a large number of samples are collected ( n ≈ 10 4 in our study). This explains the limited success of finding early warning signals from field studies of real world ecosystems.