4.5 Article

Forecasting climate change impacts on plant populations over large spatial extents

期刊

ECOSPHERE
卷 7, 期 10, 页码 -

出版社

WILEY
DOI: 10.1002/ecs2.1525

关键词

Artemisia; climate change; dimension reduction; forecasting; population model; remote sensing; sagebrush; spatiotemporal model

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资金

  1. National Science Foundation CAREER award [DEB-1054040]
  2. NSF Postdoctoral Research Fellowship in Biology [DBI-1400370]
  3. NSF Graduate Research Fellowship
  4. Utah Agricultural Experiment Station, Utah State University [8856]
  5. Direct For Biological Sciences
  6. Division Of Environmental Biology [1054040] Funding Source: National Science Foundation
  7. Direct For Biological Sciences
  8. Div Of Biological Infrastructure [1400370] Funding Source: National Science Foundation
  9. Direct For Mathematical & Physical Scien
  10. Division Of Mathematical Sciences [1107046] Funding Source: National Science Foundation

向作者/读者索取更多资源

Plant population models are powerful tools for predicting climate change impacts in one location, but are difficult to apply at landscape scales. We overcome this limitation by taking advantage of two recent advances: remotely sensed, species-specific estimates of plant cover and statistical models developed for spatiotemporal dynamics of animal populations. Using computationally efficient model reparameterizations, we fit a spatiotemporal population model to a 28-year time series of sagebrush (Artemisia spp.) percent cover over a 2.5 x 5 km landscape in southwestern Wyoming while formally accounting for spatial autocorrelation. We include interannual variation in precipitation and temperature as covariates in the model to investigate how climate affects the cover of sagebrush. We then use the model to forecast the future abundance of sagebrush at the landscape scale under projected climate change, generating spatially explicit estimates of sagebrush population trajectories that have, until now, been impossible to produce at this scale. Our broadscale and long-term predictions are rooted in small-scale and short-term population dynamics and provide an alternative to predictions offered by species distribution models that do not include population dynamics. Our approach, which combines several existing techniques in a novel way, demonstrates the use of remote sensing data to model population responses to environmental change that play out at spatial scales far greater than the traditional field study plot.

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