A platform for research: civil engineering, architecture and urbanism
Estimating tree growth from complex forest monitoring data
Understanding tree growth as a function of tree size is important for a multitude of ecological and management applications. Determining what limits growth is of central interest, and forest inventory permanent plots are an abundant source of long‐term information but are highly complex. Observation error and multiple sources of shared variation (spatial plot effects, temporal repeated measures, and a mosaic of sampling intervals) make these data challenging to use for growth estimation. We account for these complexities and incorporate potential limiting factors (tree size, competition, and resource supply) into a hierarchical state‐space model. We estimate the diameter growth of white fir (Abies concolor) in the Sierra Nevada of California from forest inventory data, showing that estimating such a model is feasible in a Bayesian framework using readily available modeling tools. In this forest, white fir growth depends strongly on tree size, total plot basal area, and unexplained variation between individual trees. Plot‐level resource supply variables (representing light, water, and nutrient availability) do not have a strong impact on inventory‐size trees. This approach can be applied to other networks of permanent forest plots, leading to greater ecological insights on tree growth.
Estimating tree growth from complex forest monitoring data
Understanding tree growth as a function of tree size is important for a multitude of ecological and management applications. Determining what limits growth is of central interest, and forest inventory permanent plots are an abundant source of long‐term information but are highly complex. Observation error and multiple sources of shared variation (spatial plot effects, temporal repeated measures, and a mosaic of sampling intervals) make these data challenging to use for growth estimation. We account for these complexities and incorporate potential limiting factors (tree size, competition, and resource supply) into a hierarchical state‐space model. We estimate the diameter growth of white fir (Abies concolor) in the Sierra Nevada of California from forest inventory data, showing that estimating such a model is feasible in a Bayesian framework using readily available modeling tools. In this forest, white fir growth depends strongly on tree size, total plot basal area, and unexplained variation between individual trees. Plot‐level resource supply variables (representing light, water, and nutrient availability) do not have a strong impact on inventory‐size trees. This approach can be applied to other networks of permanent forest plots, leading to greater ecological insights on tree growth.
Estimating tree growth from complex forest monitoring data
Eitzel, Melissa (author) / Battles, John (author) / York, Robert (author) / Knape, Jonas (author) / de Valpine, Perry (author)
Ecological Applications ; 23 ; 1288-1296
2013-09-01
9 pages
Article (Journal)
Electronic Resource
English
Estimating tree growth from complex forest monitoring data
Wiley | 2013
|Estimating Tree Volume in Tropical Dry Deciduous Forest from Landsat TM Data
Online Contents | 1996
|Exploiting tree shadows on snow for estimating forest basal area using Landsat data
Online Contents | 2012
|Estimating forest growth using canopy metrics derived from airborne laser scanner data
Online Contents | 2005
|