| Literature DB >> 28250096 |
Vasilis Dakos1, Sarah M Glaser2,3, Chih-Hao Hsieh4,5,6, George Sugihara7.
Abstract
Populations occasionally experience abrupt changes, such as local extinctions, strong declines in abundance or transitions from stable dynamics to strongly irregular fluctuations. Although most of these changes have important ecological and at times economic implications, they remain notoriously difficult to detect in advance. Here, we study changes in the stability of populations under stress across a variety of transitions. Using a Ricker-type model, we simulate shifts from stable point equilibrium dynamics to cyclic and irregular boom-bust oscillations as well as abrupt shifts between alternative attractors. Our aim is to infer the loss of population stability before such shifts based on changes in nonlinearity of population dynamics. We measure nonlinearity by comparing forecast performance between linear and nonlinear models fitted on reconstructed attractors directly from observed time series. We compare nonlinearity to other suggested leading indicators of instability (variance and autocorrelation). We find that nonlinearity and variance increase in a similar way prior to the shifts. By contrast, autocorrelation is strongly affected by oscillations. Finally, we test these theoretical patterns in datasets of fisheries populations. Our results suggest that elevated nonlinearity could be used as an additional indicator to infer changes in the dynamics of populations under stress.Keywords: critical transition; early warning signal; empirical dynamic modelling; population dynamics; resilience; state-dependence
Mesh:
Year: 2017 PMID: 28250096 PMCID: PMC5378125 DOI: 10.1098/rsif.2016.0845
Source DB: PubMed Journal: J R Soc Interface ISSN: 1742-5662 Impact factor: 4.118