Hierarchy theory from the field of landscape ecology implies that different variables may emerge as strong correlates with vegetation pattern at differing spatial scales.
We investigated the hierarchical nature of vegetation-environment relationships in forests across the western mountain ranges of
Results/Conclusions
At the broadest observational extent (ecoregion), climate variables and elevation were often stronger predictors than imagery, local topography (e.g., slope, topographic position index), disturbance, and soil parent material. However, the most important climate variables differed among the ecoregions. In the East Cascades, the strongest climate variable was temperature variability (August maximum, minus December minimum). In the West Cascades, elevation was the strongest explanatory variable, and the strongest climate variable was annual solar radiation. In the Coast Range, stratus clouds, and fog, which reduce moisture stress during the growing season, were the strongest predictive variables.
In the West Cascades, the relative predictive strength of the variables varied with the scale of observation. At the ecoregion-scale of observation, elevation was the strongest predictor variable, while at the 60,000 ha scale, it was ranked much lower and local topographic position indices were strong. At all spatial extents, climate variables were strong, but within the smaller analysis extent, annual precipitation was the most important of the climate variables, rather than annual solar radiation.
Our work highlights potential effects of observational scale on modeling vegetation-environment relationships, and also describes the climate gradient that shapes