Literature DB >> 23565966

Ability of matrix models to explain the past and predict the future of plant populations.

Elizabeth E Crone1, Martha M Ellis, William F Morris, Amanda Stanley, Timothy Bell, Paulette Bierzychudek, Johan Ehrlén, Thomas N Kaye, Tiffany M Knight, Peter Lesica, Gerard Oostermeijer, Pedro F Quintana-Ascencio, Tamara Ticktin, Teresa Valverde, Jennifer L Williams, Daniel F Doak, Rengaian Ganesan, Kathyrn McEachern, Andrea S Thorpe, Eric S Menges.   

Abstract

Uncertainty associated with ecological forecasts has long been recognized, but forecast accuracy is rarely quantified. We evaluated how well data on 82 populations of 20 species of plants spanning 3 continents explained and predicted plant population dynamics. We parameterized stage-based matrix models with demographic data from individually marked plants and determined how well these models forecast population sizes observed at least 5 years into the future. Simple demographic models forecasted population dynamics poorly; only 40% of observed population sizes fell within our forecasts' 95% confidence limits. However, these models explained population dynamics during the years in which data were collected; observed changes in population size during the data-collection period were strongly positively correlated with population growth rate. Thus, these models are at least a sound way to quantify population status. Poor forecasts were not associated with the number of individual plants or years of data. We tested whether vital rates were density dependent and found both positive and negative density dependence. However, density dependence was not associated with forecast error. Forecast error was significantly associated with environmental differences between the data collection and forecast periods. To forecast population fates, more detailed models, such as those that project how environments are likely to change and how these changes will affect population dynamics, may be needed. Such detailed models are not always feasible. Thus, it may be wiser to make risk-averse decisions than to expect precise forecasts from models.
© 2013 Society for Conservation Biology.

Keywords:  análisis de viabilidad poblacional; density dependence; dependencia de la densidad; dinámica poblacional de plantas; ecological forecasting; environmental change; matrix projection models; modelos de proyección matricial; plant population dynamics; population viability analysis; precipitación; precipitation; pronóstico ecológico; temperatura; temperature

Mesh:

Year:  2013        PMID: 23565966     DOI: 10.1111/cobi.12049

Source DB:  PubMed          Journal:  Conserv Biol        ISSN: 0888-8892            Impact factor:   6.560


  8 in total

1.  When stable-stage equilibrium is unlikely: integrating transient population dynamics improves asymptotic methods.

Authors:  Raymond L Tremblay; Josep Raventos; James D Ackerman
Journal:  Ann Bot       Date:  2015-03-26       Impact factor: 4.357

2.  What processes must we understand to forecast regional-scale population dynamics?

Authors:  Jesse R Lasky; Mevin B Hooten; Peter B Adler
Journal:  Proc Biol Sci       Date:  2020-12-09       Impact factor: 5.349

3.  Local environment and density-dependent feedbacks determine population growth in a forest herb.

Authors:  Johan P Dahlgren; Hannah Ostergård; Johan Ehrlén
Journal:  Oecologia       Date:  2014-09-17       Impact factor: 3.225

4.  Climate change both facilitates and inhibits invasive plant ranges in New England.

Authors:  Cory Merow; Sarah Treanor Bois; Jenica M Allen; Yingying Xie; John A Silander
Journal:  Proc Natl Acad Sci U S A       Date:  2017-03-27       Impact factor: 11.205

5.  Forest succession and population viability of grassland plants: long repayment of extinction debt in Primula veris.

Authors:  Kari Lehtilä; Johan P Dahlgren; Maria Begoña Garcia; Roosa Leimu; Kimmo Syrjänen; Johan Ehrlén
Journal:  Oecologia       Date:  2016-02-04       Impact factor: 3.225

6.  Less favourable climates constrain demographic strategies in plants.

Authors:  Anna M Csergő; Roberto Salguero-Gómez; Olivier Broennimann; Shaun R Coutts; Antoine Guisan; Amy L Angert; Erik Welk; Iain Stott; Brian J Enquist; Brian McGill; Jens-Christian Svenning; Cyrille Violle; Yvonne M Buckley
Journal:  Ecol Lett       Date:  2017-06-13       Impact factor: 9.492

7.  Experimental migration upward in elevation is associated with strong selection on life history traits.

Authors:  Megan L Peterson; Amy L Angert; Kathleen M Kay
Journal:  Ecol Evol       Date:  2019-10-02       Impact factor: 2.912

8.  Inferring transient dynamics of human populations from matrix non-normality.

Authors:  Alex Nicol-Harper; Claire Dooley; David Packman; Markus Mueller; Jakub Bijak; David Hodgson; Stuart Townley; Thomas Ezard
Journal:  Popul Ecol       Date:  2018-06-05       Impact factor: 2.100

  8 in total

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