4.8 Article

Lagged and dormant season climate better predict plant vital rates than climate during the growing season

期刊

GLOBAL CHANGE BIOLOGY
卷 27, 期 9, 页码 1927-1941

出版社

WILEY
DOI: 10.1111/gcb.15519

关键词

carryover effects; environmental driver; lagged effects; plant demography; precipitation; sliding window; temperature

资金

  1. Sigma Xi
  2. Natural Environment Research Council [IRF NE/M018458/1]
  3. Sevilleta LTER [1440478, 1655499, 1748133]
  4. National Science Foundation, Division of Environmental Biology [1543651, 1754468]
  5. National Science Foundation [BSR 81-08387, DEB 0238331, DEB 0922080, DEB 1354104, DEB 1912006, DEB 75-15422, DEB 78-07784, DEB 94-08382, IBN 95-27833, IBN 98-14509]
  6. Max planck institute for Demographic Research
  7. Lewis and Clark fund
  8. Deutsche Forschungsgemeinschaft [FZT 118]
  9. Helmholtz Association
  10. Alexander von Humboldt-Stiftung
  11. Direct For Biological Sciences
  12. Division Of Environmental Biology [1754468] Funding Source: National Science Foundation
  13. Division Of Environmental Biology
  14. Direct For Biological Sciences [1543651] Funding Source: National Science Foundation

向作者/读者索取更多资源

Studies show that most literature only considers time windows in the year preceding the measurement of vital rates, while in reality, for many vital rates, the best window lags more than 1 year and up to 4 years before the measurement. This indicates that considering climatic predictors that fall outside of the most recent growing season is crucial for understanding how climate affects population dynamics.
Understanding the effects of climate on the vital rates (e.g., survival, development, reproduction) and dynamics of natural populations is a long-standing quest in ecology, with ever-increasing relevance in the face of climate change. However, linking climate drivers to demographic processes requires identifying the appropriate time windows during which climate influences vital rates. Researchers often do not have access to the long-term data required to test a large number of windows, and are thus forced to make a priori choices. In this study, we first synthesize the literature to assess current a priori choices employed in studies performed on 104 plant species that link climate drivers with demographic responses. Second, we use a sliding-window approach to investigate which combination of climate drivers and temporal window have the best predictive ability for vital rates of four perennial plant species that each have over a decade of demographic data (Helianthella quinquenervis, Frasera speciosa, Cylindriopuntia imbricata, and Cryptantha flava). Our literature review shows that most studies consider time windows in only the year preceding the measurement of the vital rate(s) of interest, and focus on annual or growing season temporal scales. In contrast, our sliding-window analysis shows that in only four out of 13 vital rates the selected climate drivers have time windows that align with, or are similar to, the growing season. For many vital rates, the best window lagged more than 1 year and up to 4 years before the measurement of the vital rate. Our results demonstrate that for the vital rates of these four species, climate drivers that are lagged or outside of the growing season are the norm. Our study suggests that considering climatic predictors that fall outside of the most recent growing season will improve our understanding of how climate affects population dynamics.

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