The goal of rFIA
is to increase the accessibility and use of the USFS
Forest Inventory and Analysis (FIA) Database by providing a
user-friendly, open source platform to easily query and analyze FIA
Data. Designed to accommodate a wide range of potential user objectives,
rFIA
simplifies the estimation of forest variables from the FIA
Database and allows all R users (experts and newcomers alike) to unlock
the flexibility and potential inherent to the Enhanced FIA design.
Specifically, rFIA
improves accessibility to the spatio-temporal
estimation capacity of the FIA Database by producing space-time indexed
summaries of forest variables within user-defined population boundaries.
Direct integration with other popular R packages (e.g., dplyr, sp, and
sf) facilitates efficient space-time query and data summary, and
supports common data representations and API design. The package
implements design-based estimation procedures outlined by Bechtold &
Patterson (2005), and has been validated against estimates and sampling
errors produced by EVALIDator. Current development is focused on the
implementation of spatially-enabled model-assisted estimators to improve
population, change, and ratio estimates.
For more information and example usage of rFIA
, check out our
website. To report a bug or suggest
additions to rFIA
, please use our active
issues page here on
GitHub, or contact Hunter Stanke (lead
developer and maintainer).
To cite rFIA
, please refer to our recent publication in
Environmental Modeling and
Software (doi:
https://doi.org/10.1016/j.envsoft.2020.104664).
You can install the released version of rFIA
from
CRAN with:
install.packages("rFIA")
Alternatively, you can install the development version from GitHub:
devtools::install_github('hunter-stanke/rFIA')
rFIA Function |
Description |
---|---|
area |
Estimate land area in various classes |
biomass |
Estimate volume, biomass, & carbon stocks of standing trees |
clipFIA |
Spatial & temporal queries for FIA data |
diversity |
Estimate diversity indices (e.g. species diversity) |
dwm |
Estimate volume, biomass, and carbon stocks of down woody material |
getFIA |
Download FIA data, load into R, and optionally save to disk |
growMort |
Estimate recruitment, mortality, and harvest rates |
invasive |
Estimate areal coverage of invasive species |
plotFIA |
Produce static & animated plots of FIA summaries |
readFIA |
Load FIA database into R environment from disk |
seedling |
Estimate seedling abundance (TPA) |
standStruct |
Estimate forest structural stage distributions |
tpa |
Estimate abundance of standing trees (TPA & BAA) |
vitalRates |
Estimate live tree growth rates |
writeFIA |
Write in-memory FIA Database to disk |
The first step to using rFIA
is to download subsets of the FIA
Database. The easiest way to accomplish this is using getFIA
. Using
one line of code, you can download state subsets of the FIA Database,
load data into your R environment, and optionally save those data to a
local directory for future use!
## Download the state subset or Connecticut (requires an internet connection)
# All data acquired from FIA Datamart: https://apps.fs.usda.gov/fia/datamart/datamart.html
ct <- getFIA(states = 'CT', dir = '/path/to/save/data')
By default, getFIA
only loads the portions of the database required to
produce summaries with other rFIA
functions (common = TRUE
). This
conserves memory on your machine and speeds download time. If you would
like to download all available tables for a state, simple specify
common = FALSE
in the call to getFIA
.
But what if I want to load multiple states worth of FIA data into R?
No problem! Simply specify mutiple state abbreviations in the states
argument of getFIA
(e.g. states = c('MI', 'IN', 'WI', 'IL'
)), and
all state subsets will be downloaded and merged into a single
FIA.Database
object. This will allow you to use other rFIA
functions
to produce estimates within polygons which straddle state boundaries!
Note: given the massive size of the full FIA Database, users are cautioned to only download the subsets containing their region of interest.
If you have previously downloaded FIA data would simply like to load
into R from a local directory, use readFIA
:
## Load FIA Data from a local directory
db <- readFIA('/path/to/your/directory/')
Now that you have loaded your FIA data into R, it’s time to put it to
work. Let’s explore the basic functionality of rFIA
with tpa
, a
function to compute tree abundance estimates (TPA, BAA, & relative
abundance) from FIA data, and fiaRI
, a subset of the FIA Database for
Rhode Island including inventories from 2013-2018.
Estimate the abundance of live trees in Rhode Island:
library(rFIA)
## Load the Rhode Island subset of the FIADB (included w/ rFIA)
## NOTE: This object can be produced using getFIA and/or readFIA
data("fiaRI")
## Only estimates for the most recent inventory year
fiaRI_MR <- clipFIA(fiaRI, mostRecent = TRUE) ## subset the most recent data
tpaRI_MR <- tpa(fiaRI_MR)
head(tpaRI_MR)
#> # A tibble: 1 x 8
#> YEAR TPA BAA TPA_SE BAA_SE nPlots_TREE nPlots_AREA N
#> <int> <dbl> <dbl> <dbl> <dbl> <int> <int> <int>
#> 1 2018 427. 122. 6.63 3.06 126 127 199
## All Inventory Years Available (i.e., returns a time series)
tpaRI <- tpa(fiaRI)
head(tpaRI)
#> # A tibble: 5 x 8
#> YEAR TPA BAA TPA_SE BAA_SE nPlots_TREE nPlots_AREA N
#> <int> <dbl> <dbl> <dbl> <dbl> <int> <int> <int>
#> 1 2014 466. 120. 6.73 3.09 121 123 196
#> 2 2015 444. 121. 6.40 3.06 122 124 194
#> 3 2016 450. 123. 6.46 2.94 124 125 197
#> 4 2017 441. 123. 6.66 3.01 124 125 196
#> 5 2018 427. 122. 6.63 3.06 126 127 199
What if I want to group estimates by species? How about by size class?
## Group estimates by species
tpaRI_species <- tpa(fiaRI_MR, bySpecies = TRUE)
head(tpaRI_species, n = 3)
#> # A tibble: 3 x 11
#> YEAR SPCD COMMON_NAME SCIENTIFIC_NAME TPA BAA TPA_SE BAA_SE
#> <int> <int> <chr> <chr> <dbl> <dbl> <dbl> <dbl>
#> 1 2018 12 balsam fir Abies balsamea 0.0873 0.0295 114. 114.
#> 2 2018 43 Atlantic white-ce… Chamaecyparis thyo… 0.247 0.180 59.1 56.0
#> 3 2018 68 eastern redcedar Juniperus virginia… 1.14 0.138 64.8 67.5
#> # … with 3 more variables: nPlots_TREE <int>, nPlots_AREA <int>, N <int>
## Group estimates by size class
## NOTE: Default 2-inch size classes, but you can make your own using makeClasses()
tpaRI_sizeClass <- tpa(fiaRI_MR, bySizeClass = TRUE)
head(tpaRI_sizeClass, n = 3)
#> # A tibble: 3 x 9
#> YEAR sizeClass TPA BAA TPA_SE BAA_SE nPlots_TREE nPlots_AREA N
#> <int> <dbl> <dbl> <dbl> <dbl> <dbl> <int> <int> <int>
#> 1 2018 1 188. 3.57 13.0 12.8 76 127 199
#> 2 2018 3 68.6 5.76 15.1 15.8 46 127 199
#> 3 2018 5 46.5 9.06 6.51 6.57 115 127 199
## Group by species and size class, and plot the distribution
## for the most recent inventory year
tpaRI_spsc <- tpa(fiaRI_MR, bySpecies = TRUE, bySizeClass = TRUE)
plotFIA(tpaRI_spsc, BAA, grp = COMMON_NAME, x = sizeClass,
plot.title = 'Size-class distributions of BAA by species',
x.lab = 'Size Class (inches)', text.size = .75,
n.max = 5) # Only want the top 5 species, try n.max = -5 for bottom 5
What if I want estimates for a specific type of tree (ex. greater than
12-inches DBH and in a canopy dominant or subdominant position) in
specific area (ex. growing on mesic sites), and I want to group by
estimates by some variable other than species or size class (ex.
ownsership group)? Easy! Each of these specifications are described
in the FIA Database, and all rFIA
functions can leverage these data to
easily implement complex queries!
## grpBy specifies what to group estimates by (just like species and size class above)
## treeDomain describes the trees of interest, in terms of FIA variables
## areaDomain, just like above,describes the land area of interest
tpaRI_own <- tpa(fiaRI_MR,
grpBy = OWNGRPCD,
treeDomain = DIA > 12 & CCLCD %in% c(1,2),
areaDomain = PHYSCLCD %in% c(20:29))
head(tpaRI_own)
#> # A tibble: 2 x 9
#> YEAR OWNGRPCD TPA BAA TPA_SE BAA_SE nPlots_TREE nPlots_AREA N
#> <int> <int> <dbl> <dbl> <dbl> <dbl> <int> <int> <int>
#> 1 2018 30 0.848 3.57 59.0 59.1 3 38 199
#> 2 2018 40 1.49 3.99 25.7 27.7 12 82 199
What if I want to produce estimates within my own population boundaries (within user-defined spatial zones/polygons)? This is where things get really exciting.
## Load the county boundaries for Rhode Island
data('countiesRI') ## Load your own spatial data from shapefiles using readOGR() (rgdal)
## polys specifies the polygons (zones) where you are interested in producing estimates
## returnSpatial = TRUE indicates that the resulting estimates will be joined with the
## polygons we specified, thus allowing us to visualize the estimates across space
tpaRI_counties <- tpa(fiaRI_MR, polys = countiesRI, returnSpatial = TRUE)
## NOTE: Any grey polygons below simply means no FIA data was available for that region
plotFIA(tpaRI_counties, BAA) # Plotting method for spatial FIA summaries, also try 'TPA' or 'TPA_PERC'
We produced a really cool time series earlier, how would I marry the
spatial and temporal capacity of rFIA
to produce estimates across
user-defined polygons and through time? Easy! Just hand tpa
the
full FIA.Database object you produced with readFIA
(not the most
recent subset produced with clipFIA
). For stunning space-time
visualizations, hand the output of tpa
to plotFIA
. To save the
animation as a .gif file, simpy specify fileName
(name of output file)
and savePath
(directory to save file, combined with fileName
).
## Using the full FIA dataset, all available inventories
tpaRI_st <- tpa(fiaRI, polys = countiesRI, returnSpatial = TRUE)
## Animate the output
library(gganimate)
plotFIA(tpaRI_st, TPA, animate = TRUE, legend.title = 'Abundance (TPA)', legend.height = .8)
#> NULL