Type: | Package |
Title: | Floristic Quality Assessment Tools for R |
Version: | 0.5.5 |
Description: | Tools for downloading and analyzing floristic quality assessment data. See Freyman et al. (2015) <doi:10.1111/2041-210X.12491> for more information about floristic quality assessment and the associated database. |
License: | MIT + file LICENSE |
Encoding: | UTF-8 |
Language: | en-US |
LazyData: | true |
Imports: | dplyr, ggplot2, httr, jsonlite, memoise, rlang, tidyr, tidyselect |
RoxygenNote: | 7.3.2 |
Suggests: | knitr, rmarkdown, testthat (≥ 3.0.0) |
Depends: | R (≥ 4.1.0) |
VignetteBuilder: | knitr |
URL: | https://github.com/equitable-equations/fqar/ |
BugReports: | https://github.com/equitable-equations/fqar/issues |
Config/testthat/edition: | 3 |
NeedsCompilation: | no |
Packaged: | 2025-06-21 22:45:44 UTC; eloise |
Author: | Andrew Gard |
Maintainer: | Andrew Gard <agard@lakeforest.edu> |
Repository: | CRAN |
Date/Publication: | 2025-06-21 23:30:02 UTC |
Generate a species co-occurrence matrix from assessment inventories
Description
assessment_coccurrences()
accepts a list of species inventories
downloaded from universalfqa.org and
returns a complete listing of all co-occurrences. Repeated co-occurrences
across multiple assessments are included, but self co-occurrences are not,
allowing for meaningful summary statistics to be computed.
Usage
assessment_cooccurrences(inventory_list)
Arguments
inventory_list |
A list of site inventories having the format of
|
Value
A data frame with 13 columns:
target_species (character)
target_species_c (numeric)
target_species_nativity (character)
target_species_n (numeric)
cospecies_scientific_name (character)
cospecies_family (character)
cospecies_acronym (character)
cospecies_nativity (character)
cospecies_c (numeric)
cospecies_w (numeric)
cospecies_physiognomy (character)
cospecies_duration (character)
cospecies_common_name (character)
Examples
# assessment_cooccurrences is best used in combination with
# download_assessment_list() and assessment_list_inventory().
maine <- download_assessment_list(database = 56)
maine_invs <- assessment_list_inventory(maine)
maine_cooccurrences <- assessment_cooccurrences(maine_invs)
Generate a summary of co-occurrences in various assessment inventories
Description
assessment_coccurrences_summary()
accepts a list of species
inventories downloaded from
universalfqa.org and returns a summary of
the co-occurrences of each target species. Repeated co-occurrences across
multiple assessments are included in summary calculations, but self
co-occurrences are not.
Usage
assessment_cooccurrences_summary(inventory_list)
Arguments
inventory_list |
A list of site inventories having the format of
|
Value
A data frame with 16 columns:
target_species (character)
target_species_c (numeric)
target_species_nativity (character)
target_species_n (numeric)
cospecies_n (numeric)
cospecies_native_n (numeric)
cospecies_mean_c (numeric)
cospecies_native_mean_c (numeric)
cospecies_std_dev_c (numeric)
cospecies_native_std_dev_c (numeric)
percent_native (numeric)
percent_nonnative (numeric)
percent_native_low_c (numeric)
percent_native_med_c (numeric)
percent_native_high_c (numeric)
discrepancy_c (numeric)
Examples
# assessment_cooccurrences_summary is best used in combination with
# download_assessment_list() and assessment_list_inventory().
maine <- download_assessment_list(database = 56)
maine_invs <- assessment_list_inventory(maine)
maine_cooccurrences_summary <- assessment_cooccurrences_summary(maine_invs)
Obtain tidy summary information for a floristic quality assessment
Description
assessment_glance()
tidies a floristic quality assessment data set
obtained from universalfqa.org.
Usage
assessment_glance(data_set)
Arguments
data_set |
A data set downloaded from
universalfqa.org either manually or using
|
Value
A data frame with 53 columns:
assessment_id (numeric)
title (character)
date (date)
site_name (character)
city (character)
county (character)
state (character)
country (character)
fqa_db_region (character)
fqa_db_publication_year (character)
fqa_db_description (character)
custom_fqa_db_name (character)
custom_fqa_db_description (character)
practitioner (character)
latitude (character)
longitude (character)
weather_notes (character)
duration_notes (character)
community_type_notes (character)
other_notes (character)
private_public (character)
total_mean_c (numeric)
native_mean_c (numeric)
total_fqi (numeric)
native_fqi (numeric)
adjusted_fqi (numeric)
c_value_zero (numeric) Percent of c-values 0
c_value_low (numeric) Percent of c-values 1-3
c_value_mid (numeric) Percent of c-values 4-6
c_value_high (numeric) Percent of c-values 7-10
native_tree_mean_c (numeric)
native_shrub_mean_c (numeric)
native_herbaceous_mean_c (numeric)
total_species (numeric)
native_species (numeric)
non_native_species (numeric)
mean_wetness (numeric)
native_mean_wetness (numeric)
tree (numeric)
shrub (numeric)
vine (numeric)
forb (numeric)
grass (numeric)
sedge (numeric)
rush (numeric)
fern (numeric)
bryophyte (numeric)
annual (numeric)
perennial (numeric)
biennial (numeric)
native_annual (numeric)
native_perennial (numeric)
native_biennial (numeric)
Examples
# While assessment_glance can be used with a .csv file downloaded manually
# from the universal FQA website, it is most typically used in combination
# with download_assessment().
edison <- download_assessment(25002)
assessment_glance(edison)
Obtain species details for a floristic quality assessment
Description
assessment_inventory()
returns a data frame of all plant species
included in a floristic quality assessment obtained from
universalfqa.org.
Usage
assessment_inventory(data_set)
Arguments
data_set |
A data set downloaded from
universalfqa.org either manually or using
|
Value
A data frame with 9 columns:
scientific_name (character)
family (character)
acronym (character)
nativity (character)
c (numeric)
w (numeric)
physiognomy (character)
duration (character)
common_name (character)
Examples
# While assessment_glance can be used with a .csv file downloaded
# manually from the universal FQA website, it is most typically used
# in combination with download_assessment().
edison <- download_assessment(25002)
assessment_inventory(edison)
Obtain tidy summary information for multiple floristic quality assessments
Description
assessment_list_glance()
tidies a list of floristic quality assessment
data sets obtained from universalfqa.org,
returning summary information as a single data frame.
Usage
assessment_list_glance(assessment_list)
Arguments
assessment_list |
A list of data sets downloaded from
universalfqa.org, typically using
|
Value
A data frame with 53 columns:
assessment_id (numeric)
title (character)
date (date)
site_name (character)
city (character)
county (character)
state (character)
country (character)
fqa_db_region (character)
fqa_db_publication_year (character)
fqa_db_description (character)
custom_fqa_db_name (character)
custom_fqa_db_description (character)
practitioner (character)
latitude (character)
longitude (character)
weather_notes (character)
duration_notes (character)
community_type_notes (character)
other_notes (character)
private_public (character)
total_mean_c (numeric)
native_mean_c (numeric)
total_fqi (numeric)
native_fqi (numeric)
adjusted_fqi (numeric)
c_value_zero (numeric) Percent of c-values 0
c_value_low (numeric) Percent of c-values 1-3
c_value_mid (numeric) Percent of c-values 4-6
c_value_high (numeric) Percent of c-values 7-10
native_tree_mean_c (numeric)
native_shrub_mean_c (numeric)
native_herbaceous_mean_c (numeric)
total_species (numeric)
native_species (numeric)
non_native_species
mean_wetness (numeric)
native_mean_wetness (numeric)
tree (numeric)
shrub (numeric)
vine (numeric)
forb (numeric)
grass (numeric)
sedge (numeric)
rush (numeric)
fern (numeric)
bryophyte (numeric)
annual (numeric)
perennial (numeric)
biennial (numeric)
native_annual (numeric)
native_perennial (numeric)
native_biennial (numeric)
Examples
# While assessment_list_glance can be used with a list of .csv file downloaded
# manually from the universal FQA website, it is most typically used
# in combination with download_assessment_list().
maine <- download_assessment_list(database = 56)
assessment_list_glance(maine)
Obtain species details for a list of floristic quality assessments
Description
assessment_list_inventory()
returns a list of data frames, each of
which consists of all plant species included in a floristic quality
assessment obtained from universalfqa.org.
Usage
assessment_list_inventory(assessment_list)
Arguments
assessment_list |
A list of data sets downloaded from
universalfqa.org, typically using
|
Value
A list of data frames, each with 9 columns:
scientific_name (character)
family (character)
acronym (character)
nativity (character)
c (numeric)
w (numeric)
physiognomy (character)
duration (character)
common_name (character)
Examples
# While assessment_list_inventory can be used with a list of .csv file downloaded
# manually from the universal FQA website, it is most typically used
# in combination with download_assessment_list().
maine <- download_assessment_list(database = 56)
maine_invs <- assessment_list_inventory(maine)
Chicagoland floristic quality assessment data
Description
A data set summarizing 786 floristic quality assessments using the 2017 Chicago Region USACE database.
Usage
chicago
Format
A data frame with 52 columns:
Title (character)
Date (date)
Site Name (character)
City (character)
County (character)
State (character)
Country (character)
FQA DB Region (character)
FQA DB Publication Year (character)
FQA DB Description (character)
Custom FQA DB Name (character)
Custom FQA DB Description (character)
Practitioner (character)
Latitude (character)
Longitude (character)
Weather Notes (character)
Duration Notes (character)
Community Type Notes (character)
Other Notes (character)
Private/Public (character)
Total Mean C (numeric)
Native Mean C (numeric)
Total FQI: (numeric)
Native FQI (numeric)
Adjusted FQI (numeric)
% C value 0 (numeric)
% C value 1-3 (numeric)
% C value 4-6 (numeric)
% C value 7-10 (numeric)
Native Tree Mean C (numeric)
Native Shrub Mean C (numeric)
Native Herbaceous Mean C (numeric)
Total Species (numeric)
Native Species (numeric)
Non-native Species
Mean Wetness (numeric)
Native Mean Wetness (numeric)
Tree (numeric)
Shrub (numeric)
Vine (numeric)
Forb (numeric)
Grass (numeric)
Sedge (numeric)
Rush (numeric)
Fern (numeric)
Bryophyte (numeric)
Annual (numeric)
Perennial (numeric)
Biennial (numeric)
Native Annual (numeric)
Native Perennial (numeric)
Native Biennial (numeric)
Source
Obtain tidy summary information for a floristic quality database
Description
database_glance()
tidies a floristic quality database obtained from
universalfqa.org.
Usage
database_glance(database)
Arguments
database |
A database downloaded from
universalfqa.org either manually or using
|
Value
A data frame with 8 columns:
region (character)
year (numeric)
description (character)
total_species (numeric)
native_species (numeric)
non_native_species (numeric)
total_mean_c (numeric)
native_mean_c (numeric)
Examples
# While database_glance can be used with a .csv file downloaded manually
# from the universal FQA website, it is most typically used in combination
# with download_database().
chicago_db <- download_database(database_id = 1)
chicago_db_summary <- database_glance(chicago_db)
Obtain species details for a floristic quality database
Description
database_inventory()
returns a data frame of all plant species
included in a floristic quality database obtained from
universalfqa.org.
Usage
database_inventory(database)
Arguments
database |
A database downloaded from
universalfqa.org either manually or using
|
Value
A data frame with 9 columns:
scientific_name (character)
family (character)
acronym (character)
nativity (character)
c (numeric)
w (numeric)
physiognomy (character)
duration (character)
common_name (character)
Examples
# While database_glance can be used with a .csv file downloaded
# manually from the universal FQA website, it is most typically used
# in combination with download_database().
chicago_db <- download_database(database_id = 1)
chicago_species <- database_inventory(chicago_db)
Download a single floristic quality assessment
Description
download_assessment()
retrieves a specified floristic quality
assessment from universalfqa.org. ID
numbers for assessments in various databases can be found using the
index_fqa_assessments()
function.
Usage
download_assessment(assessment_id, timeout = 4)
Arguments
assessment_id |
A numeric identifier of the desired floristic quality
assessment, as specified by
universalfqa.org. ID numbers for
assessments in specified databases can be viewed with the
|
timeout |
Number of seconds to query UniversalFQA before timing out. |
Value
An untidy data frame in the original format of the Universal FQA
website, except that the assessment id number has been appended in the
first row. Use assessment_glance()
for a
tidy summary and
assessment_inventory()
for
species-level data.
Examples
databases <- index_fqa_databases() # Database 1 is the original 1994 Chicago edition.
chicago_assessments <- index_fqa_assessments(1) # Edison dune and swale has id number 25002.
edison <- download_assessment(25002)
edison_tidy <- assessment_glance(edison)
Download multiple floristic quality assessments
Description
download_assessment_list()
searches a specified floristic quality
assessment database and retrieves all matches from
universalfqa.org. Download speeds from that
website may be slow, causing delays in the evaluation of this function.
Usage
download_assessment_list(database_id, ...)
Arguments
database_id |
Numeric identifier of the desired floristic quality
assessment database, as specified by
universalfqa.org. Database id numbers can
be viewed with the
|
... |
|
Value
A list of data frames matching the search criteria. Each is an untidy
data frame in the original format of the Universal FQA website. Use
assessment_list_glance()
for a tidy
summary.
Examples
databases <- index_fqa_databases() # Database 1 is the original 1994 Chicago edition.
somme_assessments <- download_assessment_list(1, site == "Somme Woods")
somme_summary <- assessment_list_glance(somme_assessments)
Download a single floristic quality database
Description
download_database()
retrieves a specified floristic quality database
from universalfqa.org. A list of available
databases can be found using the
index_fqa_databases()
function.
Usage
download_database(database_id, timeout = 4)
Arguments
database_id |
A numeric identifier of the desired floristic quality
database, as specified by
universalfqa.org. ID numbers for
databases recognized this site can be viewed with the
|
timeout |
Number of seconds to query UniversalFQA before timing out. |
Value
An untidy data frame in the original format of the Universal FQA
website. Use database_glance()
for a tidy
summary and database_inventory()
for
species-level data.
Examples
databases <- index_fqa_databases() # Database 1 is the original 1994 Chicago edition.
chicago_database <- download_database(1)
Download a single floristic quality transect assessment
Description
download_transect()
retrieves a specified floristic quality transect
assessment from universalfqa.org. ID
numbers for transect assessments in various databases can be found using the
index_fqa_transects()
function.
Usage
download_transect(transect_id, timeout = 4)
Arguments
transect_id |
A numeric identifier of the desired floristic quality
transect assessment, as specified by
universalfqa.org. ID numbers for transect
assessments in specified databases can be viewed with the
|
timeout |
Number of seconds to query UniversalFQA before timing out. |
Value
An untidy data frame in the original format of the Universal FQA
website, except that the transect id number has been appended in the
first row.. Use transect_glance()
for a tidy
summary, transect_phys()
for a
physiognometric overview, and
transect_inventory()
for species-level
data.
Examples
databases <- index_fqa_databases() # Database 1 is the original 1994 Chicago edition.
chicago_transects <- index_fqa_transects(1) # CBG Sand prairie swale fen A has id number 5932.
cbg <- download_transect(5932, timeout = 10)
Download multiple floristic quality transect assessments
Description
download_transect_list()
searches a specified floristic quality
assessment database and retrieves all matches from
universalfqa.org. Download speeds from that
website may be slow, causing delays in the evaluation of this function.
Usage
download_transect_list(database_id, ...)
Arguments
database_id |
Numeric identifier of the desired floristic quality
assessment database, as specified by
universalfqa.org. Database id numbers can
be viewed with the
|
... |
|
Value
A list of data frames matching the search criteria. Each is an untidy
data frame in the original format of the Universal FQA website. Use
transect_list_glance()
for a tidy
summary.
Examples
databases <- index_fqa_databases() # Database 1 is the original 1994 Chicago edition.
dupont <- download_transect_list(1, site == "DuPont Natural Area")
List all available public floristic quality assessments
Description
For any given database, index_fqa_assessments()
produces a data frame
of all floristic quality assessments publicly available at
universalfqa.org.
Usage
index_fqa_assessments(database_id, timeout = 4)
Arguments
database_id |
A numeric identifier of the desired database, as specified
by universalfqa.org. The id numbers can
be viewed with the
|
timeout |
Number of seconds to query UniversalFQA before timing out. |
Value
A data frame with 5 columns:
id (numeric)
assessment (character)
date (date)
site (character)
practitioner (character)
Examples
databases <- index_fqa_databases() # The 2017 Chicago database has id_number 149
chicago_2017_assessments <- index_fqa_assessments(149)
List all available floristic quality assessment databases
Description
index_fqa_databases()
produces a data frame showing all floristic
quality assessment databases publicly available at
universalfqa.org.
Usage
index_fqa_databases(timeout = 5)
Arguments
timeout |
Number of seconds to query UniversalFQA before timing out. |
Value
A data frame with 4 columns:
database_id (numeric)
region (character)
year (numeric)
description (character)
Examples
databases <- index_fqa_databases()
List all available public floristic quality transect assessments
Description
For any given database, index_fqa_transects()
produces a data frame
of all floristic quality transect assessments publicly available at
universalfqa.org.
Usage
index_fqa_transects(database_id, timeout = 4)
Arguments
database_id |
A numeric identifier of the desired database, as specified
by universalfqa.org. The id numbers can
be viewed with the
|
timeout |
Number of seconds to query UniversalFQA before timing out. |
Value
A data frame with 5 columns:
id (numeric)
assessment (character)
date (date)
site (character)
practitioner (character)
Examples
databases <- index_fqa_databases() # The 2017 Chicago database has id_number 149
chicago_2017_transects <- index_fqa_transects(149)
Missouri floristic quality assessment data
Description
A data set summarizing 216 floristic quality assessments using the 2015 Missouri database.
Usage
missouri
Format
A data frame with 52 columns:
Title (character)
Date (date)
Site Name (character)
City (character)
County (character)
State (character)
Country (character)
FQA DB Region (character)
FQA DB Publication Year (character)
FQA DB Description (character)
Custom FQA DB Name (character)
Custom FQA DB Description (character)
Practitioner (character)
Latitude (character)
Longitude (character)
Weather Notes (character)
Duration Notes (character)
Community Type Notes (character)
Other Notes (character)
Private/Public (character)
Total Mean C (numeric)
Native Mean C (numeric)
Total FQI: (numeric)
Native FQI (numeric)
Adjusted FQI (numeric)
% C value 0 (numeric)
% C value 1-3 (numeric)
% C value 4-6 (numeric)
% C value 7-10 (numeric)
Native Tree Mean C (numeric)
Native Shrub Mean C (numeric)
Native Herbaceous Mean C (numeric)
Total Species (numeric)
Native Species (numeric)
Non-native Species
Mean Wetness (numeric)
Native Mean Wetness (numeric)
Tree (numeric)
Shrub (numeric)
Vine (numeric)
Forb (numeric)
Grass (numeric)
Sedge (numeric)
Rush (numeric)
Fern (numeric)
Bryophyte (numeric)
Annual (numeric)
Perennial (numeric)
Biennial (numeric)
Native Annual (numeric)
Native Perennial (numeric)
Native Biennial (numeric)
Source
Acronym of a species in a specified database
Description
species_acronym()
accepts a species and a database inventory and
returns the acronym of the species within that database. Either a numeric
database ID from universalfqa.org or a
homemade inventory with the same format may be specified.
Usage
species_acronym(species, database_id = NULL, database_inventory = NULL)
Arguments
species |
The scientific name of the plant species of interest |
database_id |
ID number of an existing database on
universalfqa.org. Use
|
database_inventory |
An inventory of species having the same form as one
created using
|
Value
The acronym of the given species within the given database.
Examples
species_acronym("Anemone canadensis", database_id = 149)
C-value of a species in a specified database
Description
species_c()
accepts a species and a database inventory and returns the
c-value of that species. Either a numeric database ID from
universalfqa.org or a homemade inventory
with the same format may be specified.
Usage
species_c(species, database_id = NULL, database_inventory = NULL)
Arguments
species |
The scientific name of the plant species of interest |
database_id |
ID number of an existing database on
universalfqa.org. Use
|
database_inventory |
An inventory of species having the same form as one
created using
|
Value
The C-value of the given species within the given database.
Examples
species_c("Anemone canadensis", database_id = 149)
Common name of a species in a specified database
Description
species_common name()
accepts the scientific name of a species and a
database inventory and returns the common name of that species. Either a numeric
database ID from universalfqa.org or a
homemade inventory with the same format may be specified.
Usage
species_common_name(species, database_id = NULL, database_inventory = NULL)
Arguments
species |
The scientific name of the plant species of interest |
database_id |
ID number of an existing database on
universalfqa.org. Use
|
database_inventory |
An inventory of species having the same form as one
created using
|
Value
The common name of the given species within the given database.
Examples
species_common_name("Anemone canadensis", database_id = 149)
Nativity of a species in a specified database
Description
species_nativity()
accepts a species and a database inventory and returns the
nativity of that species. Either a numeric database ID from
universalfqa.org or a homemade inventory
with the same format may be specified.
Usage
species_nativity(species, database_id = NULL, database_inventory = NULL)
Arguments
species |
The scientific name of the plant species of interest |
database_id |
ID number of an existing database on
universalfqa.org. Use
|
database_inventory |
An inventory of species having the same form as one
created using
|
Value
The nativity of the given species within the given database, either native or non-native.
Examples
species_nativity("Anemone canadensis", database_id = 149)
Physiognomy of a species in a specified database
Description
species_phys()
accepts a species and a database inventory and returns the
physiognomy of that species. Either a numeric database ID from
universalfqa.org or a homemade inventory
with the same format may be specified.
Usage
species_phys(species, database_id = NULL, database_inventory = NULL)
Arguments
species |
The scientific name of the plant species of interest |
database_id |
ID number of an existing database on
universalfqa.org. Use
|
database_inventory |
An inventory of species having the same form as one
created using
|
Value
The physiognomy of the given species within the given database
Examples
species_phys("Anemone canadensis", database_id = 149)
Generate the co-occurrence profile for a species
Description
species_profile()
accepts a species and list of inventories like those
generated by
assessment_list_inventory()
and
returns the co-occurrence profile of that species. Repeated co-occurrences
across multiple assessments are included in summary calculations but self
co-occurrences are not.
Usage
species_profile(species, inventory_list, native = FALSE)
Arguments
species |
The scientific name of the target plant species |
inventory_list |
A list of site inventories having the format of
|
native |
Logical indicating whether only native co-occurrences should be considered. |
Value
A data frame with 14 columns:
target_species (character)
target_species_c (numeric)
cospecies_n (numeric)
cospecies_native_n (numeric)
cospecies_mean_c (numeric)
cospecies_native_mean_c (numeric)
cospecies_std_dev_c (numeric)
cospecies_native_std_dev_c (numeric)
percent_native (numeric)
percent_nonnative (numeric)
percent_native_low_c (numeric)
percent_native_med_c (numeric)
percent_native_high_c (numeric)
discrepancy_c (numeric)
Examples
# species_profile() is best used in combination with
# download_assessment_list() and assessment_list_inventory().
ontario <- download_assessment_list(database = 2)
ontario_invs <- assessment_list_inventory(ontario)
species_profile("Aster lateriflorus", ontario_invs)
Plot the co-occurrence profile of a species
Description
species_profile_plot()
accepts a species and list of inventories like
those generated by
assessment_list_inventory()
and
generates a histogram of the co-occurrence profile of that species. Repeated
co-occurrences across multiple assessments are included in summary
calculations but self co-occurrences are not.
Usage
species_profile_plot(species, inventory_list, native = FALSE)
Arguments
species |
The scientific name of the target plant species |
inventory_list |
A list of site inventories having the format of
|
native |
Logical indicating whether only native co-occurrences should be considered. |
Examples
# species_profile_plot() is best used in combination with
# download_assessment_list() and assessment_list_inventory().
ontario <- download_assessment_list(database = 2)
ontario_invs <- assessment_list_inventory(ontario)
species_profile_plot("Aster lateriflorus", ontario_invs, native = TRUE)
Wetness value of a species in a specified database
Description
species_w()
accepts a species and a database inventory and returns the
wetness value of that species. Either a numeric database ID from
universalfqa.org or a homemade inventory
with the same format may be specified.
Usage
species_w(species, database_id = NULL, database_inventory = NULL)
Arguments
species |
The scientific name of the plant species of interest |
database_id |
ID number of an existing database on
universalfqa.org. Use
|
database_inventory |
An inventory of species having the same form as one
created using
|
Value
The wetness value of the given species within the given database.
Examples
species_w("Anemone canadensis", database_id = 149)
Obtain tidy summary information for a floristic quality transect assessment
Description
transect_glance()
tidies a floristic quality transect assessment data
set obtained from universalfqa.org.
Usage
transect_glance(data_set)
Arguments
data_set |
A data set downloaded from
universalfqa.org either manually or using
|
Value
A data frame with 1 row and 55 columns:
transect_id (numeric)
title (character)
date (date)
site_name (character)
city (character)
county (character)
state (character)
country (character)
omernik_level_three_ecoregion (character)
fqa_db_region (character)
fqa_db_publication_year (character)
fqa_db_description (character)
fqa_db_selection_name (character)
custom_fqa_db_name (character)
custom_fqa_db_description (character)
practitioner (character)
latitude (character)
longitude (character)
community_code (character)
community_name (character)
community_type_notes (character)
weather_notes (character)
duration_notes (character)
environment_description (character)
other_notes (character)
transect_plot_type (character)
plot_size (numeric) Plot size in square meters
quadrat_subplot_size (numeric) Quadrat or subplot size in square meters
transect_length (numeric) Transect length in meters
sampling_design_description (character)
cover_method (character)
private_public (character)
total_mean_c (numeric)
cover_weighted_mean_c (numeric)
native_mean_c (numeric)
total_fqi (numeric)
native_fqi (numeric)
cover_weighted_fqi (numeric)
cover_weighted_native_fqi (numeric)
adjusted_fqi (numeric)
c_value_zero (numeric) Percent of c-values 0
c_value_low (numeric) Percent of c-values 1-3
c_value_mid (numeric) Percent of c-values 4-6
c_value_high (numeric) Percent of c-values 7-10
total_species (numeric)
native_species (numeric)
non_native_species (numeric)
mean_wetness (numeric)
native_mean_wetness (numeric)
annual (numeric)
perennial (numeric)
biennial (numeric)
native_annual (numeric)
native_perennial (numeric)
native_biennial (numeric)
Examples
# While transect_glance can be used with a .csv file downloaded manually
# from the universal FQA website, it is most typically used in combination
# with download_transect().
tyler <- download_transect(6352)
transect_glance(tyler)
Obtain species details for a floristic quality transect assessment
Description
transect_inventory()
returns a data frame of all plant species
included in a floristic quality transect assessment obtained from
universalfqa.org.
Usage
transect_inventory(data_set)
Arguments
data_set |
A data set downloaded from
universalfqa.org either manually or using
|
Value
A data frame with 13 columns:
species (character)
family (character)
acronym (character)
nativity (character)
c (numeric)
w (numeric)
physiognomy (character)
duration (character)
frequency (numeric)
coverage (numeric)
relative_frequency_percent (numeric)
relative_coverage_percent (numeric)
relative_importance_value (numeric)
Examples
# while transect_glance can be used with a .csv file downloaded
# manually from the universal FQA website, it is most typically used
# in combination with download_transect().
tyler <- download_transect(6352)
transect_inventory(tyler)
Obtain tidy summary information for multiple floristic quality transect assessments
Description
transect_list_glance()
tidies a list of floristic quality transect
assessment data sets obtained from
universalfqa.org, returning summary
information as a single data frame.
Usage
transect_list_glance(transect_list)
Arguments
transect_list |
A list of data sets downloaded from
universalfqa.org, typically using
|
Value
A data frame with 1 row and 55 columns:
transect_id (numeric)
title (character)
date (date)
site_name (character)
city (character)
county (character)
state (character)
country (character)
omernik_level_three_ecoregion (character)
fqa_db_region (character)
fqa_db_publication_year (character)
fqa_db_description (character)
fqa_db_selection_name (character)
custom_fqa_db_name (character)
custom_fqa_db_description (character)
practitioner (character)
latitude (character)
longitude (character)
community_code (character)
community_name (character)
community_type_notes (character)
weather_notes (character)
duration_notes (character)
environment_description (character)
other_notes (character)
transect_plot_type (character)
plot_size (numeric) Plot size in square meters
quadrat_subplot_size (numeric) Quadrat or subplot size in square meters
transect_length (numeric) Transect length in meters
sampling_design_description (character)
cover_method (character)
private_public (character)
total_mean_c (numeric)
cover_weighted_mean_c (numeric)
native_mean_c (numeric)
total_fqi (numeric)
native_fqi (numeric)
cover_weighted_fqi (numeric)
cover_weighted_native_fqi (numeric)
adjusted_fqi (numeric)
c_value_zero (numeric) Percent of c-values 0
c_value_low (numeric) Percent of c-values 1-3
c_value_mid (numeric) Percent of c-values 4-6
c_value_high (numeric) Percent of c-values 7-10
total_species (numeric)
native_species (numeric)
non_native_species (numeric)
mean_wetness (numeric)
native_mean_wetness (numeric)
annual (numeric)
perennial (numeric)
biennial (numeric)
native_annual (numeric)
native_perennial (numeric)
native_biennial (numeric)
Examples
# While transect_list_glance can be used with a list of .csv file downloaded
# manually from the universal FQA website, it is most typically used in
# combination with download_transect_list().
transect_list <- download_transect_list(149, id %in% c(3400, 3427))
transect_list_glance(transect_list)
Obtain species details for a list of transect assessments
Description
transect_list_inventory()
returns a list of data frames, each of which
consists of all plant species included in a floristic quality assessment of a
transect obtained from universalfqa.org.
Usage
transect_list_inventory(transect_list)
Arguments
transect_list |
A list of data sets downloaded from
universalfqa.org, typically using
|
Value
A list of data frames, each with 13 columns:
species (character)
family (character)
acronym (character)
nativity (character)
c (numeric)
w (numeric)
physiognomy (character)
duration (character)
frequency (numeric)
coverage (numeric)
relative_frequency_percent (numeric)
relative_coverage_percent (numeric)
relative_importance_value (numeric)
Examples
# While transect_list_inventory can be used with a list of .csv file downloaded
# manually from the universal FQA website, it is most typically used
# in combination with download_transect_list()
chicago <- download_transect_list(database = 149)
chicago_invs <- transect_list_inventory(chicago)
Obtain physiognometric information for a floristic quality transect assessment
Description
transect_phys()
returns a data frame with physiognometric information
for a floristic quality transect assessment obtained from
universalfqa.org.
Usage
transect_phys(data_set)
Arguments
data_set |
A data set downloaded from
universalfqa.org either manually or using
|
Value
A data frame with 6 columns:
physiognomy (character)
frequency (numeric)
coverage (numeric)
relative_frequency_percent (numeric)
relative_coverage_percent (numeric)
relative_importance_value_percent (numeric)
Examples
# While transect_phys can be used with a .csv file downloaded
# manually from the universal FQA website, it is most typically used
# in combination with download_transect().
tyler <- download_transect(6352)
transect_phys(tyler)
Extract quadrat/subplot-level inventories from a transect assessment
Description
transect_subplot_inventories()
accepts a floristic quality transect
assessment data set obtained from
universalfqa.org and returns a list of
species inventories, one per quadrat/subplot.
Usage
transect_subplot_inventories(transect)
Arguments
transect |
A data set downloaded from
universalfqa.org either manually or using
|
Value
A list of data frames, each with 9 columns:
scientific_name (character)
family (character)
acronym (character)
nativity (character)
c (numeric)
w (numeric)
physiognomy (character)
duration (character)
common_name (character)
Examples
cbg_fen <- download_transect(5932)
cbg_inventories <- transect_subplot_inventories(cbg_fen)