2020 Forest Health Monitoring National Report
Hunter Stanke
January 15, 2020
Source:vignettes/FHM2020Report.Rmd
FHM2020Report.Rmd
The U.S. Department of Agriculture Forest Inventory and Analysis
(FIA) program collects data describing the condition and change of
forest ecosystems across all lands in the United States. The
extraordinary size of the spatial domain and breadth of forest variables
sampled by the FIA program makes it a unique and powerful resource for
determining the extent and severity of undesirable changes in forest
health across large spatial domains in the United States. Due to a lack
of flexible, user-friendly tools for estimation of forest variables, the
richness and utility of the FIA data are not always realized for forest
health assessment. We developed rFIA
, an open-source R
package, to reduce these data accessibility hurdles and unlock the
potential of FIA for broad-scale forest health evaluation and
monitoring.
rFIA
achieves two primary objectives: (1) improve the
accessibility of FIA data for the estimation of status and change in
forest ecosystems and (2) offer enhanced flexibility in estimation
strategies and defining populations of interest. Using a simple yet
powerful design, rFIA
implements the design-based
estimation procedures described in Bechtold and Patterson (2005) for
more than 60 forest variables and allows users to return intermediate
(i.e., plot, condition, and/or tree-level) estimates of all variables
for use in modeling studies. With rFIA
, users can easily
summarize forest variables for populations defined by any combination of
spatial units (i.e., spatial polygons), temporal domains (e.g., most
recent measurements), and/or biophysical attributes (e.g., species, site
classifications). Furthermore, rFIA implements five design-based
estimators that enhance the value of FIA for temporal change detection
and offer flexibility in a tradeoff between precision and temporal
specificity.
Here we present three case studies chosen to demonstrate some aspects
of rFIA
’s potential to advance forest health evaluation and
monitoring in the United States. First, we highlight rFIA
’s
spatiotemporal estimation capacity by estimating current down woody
material (DWM) biomass within HUC6 watershed boundaries across the
conterminous United States (CONUS) by combining the most recent FIA
inventories available in each State. We next illustrate how
rFIA
enhances the value of FIA for temporal change
detection by examining trends in lodgepole pine (Pinus
contorta) mortality in Colorado using multiple design-based
estimators. Finally, we use rFIA
to estimate plot-level
live tree density and develop a Bayesian hierarchical model to estimate
changes in live tree abundance (i.e., net response of recruitment,
growth, and mortality) within ecoregion subsections across the CONUS
(excluding Wyoming due to a lack of remeasurements), thereby
demonstrating how rFIA
can aid model-based analyses.
Download all data, code, and results from this project HERE