4.7 Article

Inferential consequences of modeling rather than measuring snow accumulation in studies of animal ecology

期刊

ECOLOGICAL APPLICATIONS
卷 23, 期 3, 页码 643-653

出版社

WILEY
DOI: 10.1890/12-0959.1

关键词

Cervus canadensis; climate variables; elk; prediction uncertainty; SNODAS; snow shadow; snowpack model; winter range

资金

  1. National Science Foundation
  2. National Institutes of Health Ecology of Infectious Disease [DEB-1067129]
  3. United States Geological Survey
  4. Division Of Environmental Biology
  5. Direct For Biological Sciences [1067129] Funding Source: National Science Foundation

向作者/读者索取更多资源

It is increasingly common for studies of animal ecology to use model-based predictions of environmental variables as explanatory or predictor variables, even though model prediction uncertainty is typically unknown. To demonstrate the potential for misleading inferences when model predictions with error are used in place of direct measurements, we compared snow water equivalent (SWE) and snow depth as predicted by the Snow Data Assimilation System (SNODAS) to field measurements of SWE and snow depth. We examined locations on elk (Cervus canadensis) winter ranges in western Wyoming, because modeled data such as SNODAS output are often used for inferences on elk ecology. Overall, SNODAS predictions tended to overestimate field measurements, prediction uncertainty was high, and the difference between SNODAS predictions and field measurements was greater in snow shadows for both snow variables compared to non-snow shadow areas. We used a simple simulation of snow effects on the probability of an elk being killed by a predator to show that, if SNODAS prediction uncertainty was ignored, we might have mistakenly concluded that SWE was not an important factor in where elk were killed in predatory attacks during the winter. In this simulation, we were interested in the effects of snow at finer scales (<1 km(2)) than the resolution of SNODAS. If bias were to decrease when SNODAS predictions are averaged over coarser scales, SNODAS would be applicable to population-level ecology studies. In our study, however, averaging predictions over moderate to broad spatial scales (9-2200 km(2)) did not reduce the differences between SNODAS predictions and field measurements. This study highlights the need to carefully evaluate two issues when using model output as an explanatory variable in subsequent analysis: (1) the model's resolution relative to the scale of the ecological question of interest and (2) the implications of prediction uncertainty on inferences when using model predictions as explanatory or predictor variables.

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