Type: Package
Title: Collection of Data on Wildlife Sightings, Tourism Counts, and Weather from Australia
Version: 0.1.0
Description: This is a collection of data files for exploring sightings of wild things, relative to weather and tourism patterns in Australia.
License: MIT + file LICENSE
Encoding: UTF-8
LazyData: true
LazyDataCompression: xz
Suggests: dplyr, ggplot2, ggthemes, ggbeeswarm, sf, knitr, lubridate, quarto, testthat (≥ 3.0.0), tidyr
VignetteBuilder: quarto
SystemRequirements: Quarto
Depends: R (≥ 3.5)
URL: https://github.com/vahdatjavad/ecotourism
BugReports: https://github.com/vahdatjavad/ecotourism/issues
RoxygenNote: 7.3.2
Config/testthat/edition: 3
NeedsCompilation: no
Packaged: 2025-09-11 06:01:31 UTC; jvah0003
Author: Dianne Cook ORCID iD [aut], Lyn Cook ORCID iD [aut], Javad Vahdat Atashgah ORCID iD [aut, cre]
Maintainer: Javad Vahdat Atashgah <vahdatjavad@gmail.com>
Repository: CRAN
Date/Publication: 2025-09-16 06:00:11 UTC

Glowworms Occurrence Data (2014–2024)

Description

This dataset contains cleaned and enriched occurrence records for glowworms (*Arachnocampa tasmaniensis*) in Australia from 2014 to 2024. It includes spatial, temporal, taxonomic, and weather station metadata.

Usage

glowworms

Format

A tibble with 124 rows and 14 variables:

obs_lat

Latitude of the observation (decimal degrees)

obs_lon

Longitude of the observation (decimal degrees)

date

Observation date (YYYY-MM-DD)

time

Observation time (HH:MM:SS, character)

year

Observation year

month

Month of the observation

day

Day of the month

hour

Hour of the day (0–23)

weekday

Day of the week (ordered factor)

dayofyear

Day of the year (1–366)

sci_name

Scientific name of the observed species

record_type

Type of observation (e.g., HUMAN_OBSERVATION)

obs_state

Australian state where the observation occurred

ws_id

ID of the nearest weather station (e.g., "949610-99999")

Details

Data was sourced via the 'galah' package from the Atlas of Living Australia, filtered and cleaned, then enriched by linking each record to the nearest weather station using geospatial methods.

Source

Atlas of Living Australia via galah

Examples

data(glowworms)
head(glowworms)

Gouldian Finch Occurrence Data (2014–2024)

Description

This dataset contains cleaned and processed occurrence records for the Gouldian Finch (*Chloebia gouldiae*) in Australia between 2014 and 2024. It includes spatial coordinates, temporal details, species information, and the ID of the nearest weather station for each observation.

Usage

gouldian_finch

Format

A tibble with 3,921 rows and 14 variables:

obs_lat

Latitude of the observation (decimal degrees)

obs_lon

Longitude of the observation (decimal degrees)

date

Date of the observation (YYYY-MM-DD)

time

Time of the observation (HH:MM:SS)

year

Year of the observation

month

Month (1–12)

day

Day of the month

hour

Hour extracted from the time (0–23)

weekday

Day of the week (as ordered factor)

dayofyear

Day of the year (1–366)

sci_name

Scientific name of the species

record_type

Type of observation (e.g., HUMAN_OBSERVATION)

obs_state

Australian state where the observation was recorded

ws_id

Nearest weather station ID (e.g., "948280-99999")

Details

The data was retrieved from the Atlas of Living Australia using the galah package, then standardized, cleaned, and matched to the three closest weather stations using geospatial tools.

Source

Atlas of Living Australia via galah

See Also

glowworms, weather

Examples

data(gouldian_finch)
head(gouldian_finch)

Manta Ray Occurrence Data (2014–2024)

Description

This dataset contains occurrence records for the reef manta ray (*Mobula alfredi*) observed in Australian waters from 2014 to 2024. The data includes spatial and temporal metadata, species identifiers, and linked weather station IDs.

Usage

manta_rays

Format

A tibble with 1,088 rows and 14 variables:

obs_lat

Latitude of the observation (decimal degrees)

obs_lon

Longitude of the observation (decimal degrees)

date

Date of the observation (YYYY-MM-DD)

time

Time of the observation (HH:MM:SS)

year

Year of the observation

month

Month (1–12)

day

Day of the month

hour

Hour extracted from the time (0–23)

weekday

Day of the week (as ordered factor)

dayofyear

Day of the year (1–366)

sci_name

Scientific name — all observations are Mobula alfredi

record_type

Type of observation (e.g., MACHINE_OBSERVATION)

obs_state

Australian state where the observation occurred (may be missing)

ws_id

Nearest weather station ID (e.g., "947800-99999")

Details

Records were accessed using the galah package and filtered specifically for *Mobula alfredi*. Data has been cleaned and enriched with spatial proximity to weather stations for climate-related analysis.

Source

Atlas of Living Australia via galah

See Also

gouldian_finch, weather

Examples

data(manta_rays)
head(manta_rays)

Orchid Occurrence Data (2014–2024)

Description

This dataset contains over 300,000 occurrence records of orchid species (*Orchidaceae*) in Australia from 2014 to 2024. The data includes spatial, temporal, and taxonomic details, as well as associated weather station metadata for ecological analysis.

Usage

orchids

Format

A tibble with 302,123 rows and 14 variables:

obs_lat

Latitude of the observation (decimal degrees)

obs_lon

Longitude of the observation (decimal degrees)

date

Date of the observation (YYYY-MM-DD)

time

Time of the observation (HH:MM:SS)

year

Year of the observation

month

Month (1–12)

day

Day of the month

hour

Hour extracted from the time (0–23)

weekday

Day of the week (as ordered factor)

dayofyear

Day of the year (1–366)

sci_name

Scientific name of the observed orchid species

record_type

Type of observation (e.g., HUMAN_OBSERVATION, PRESERVED_SPECIMEN)

obs_state

Australian state where the observation occurred (may be missing)

ws_id

Nearest weather station ID linked to the observation

Details

The data was collected using the galah package from the Atlas of Living Australia, cleaned, and linked to nearby weather stations for ecological and climatic studies. The records span multiple orchid genera and include a range of observation types.

Source

Atlas of Living Australia via galah

See Also

glowworms, gouldian_finch, weather

Examples

data(orchids)
head(orchids)

oz_lga

Description

LGA polygons for Australia

Usage

oz_lga

Format

A spatial polygon object

Examples


head(oz_lga)

Top Weather Stations for Each Organism

Description

A lookup table identifying the top 3 most frequently linked weather stations for each focal organism in the ecotourism package. These stations were selected based on the number of linked observations across a 10-year period (2014–2024).

Usage

top_stations

Format

A tibble with 12 rows and 2 variables:

organism

Name of the organism (e.g., "glowworms", "orchids")

ws_id

Weather station ID (e.g., "948720-99999")

Details

This table was created by counting the frequency of 'ws_id' assignments within each organism dataset and selecting the top 3 stations per organism. These top stations are used for downloading daily weather data via the GSODR package.

See Also

weather, weather_stations

Examples

data(top_stations)
head(top_stations)

Quarterly Tourism Trips by Region and Purpose

Description

A dataset containing quarterly estimates of overnight tourism trips in Australia, broken down by trip purpose and tourism region.

Usage

tourism_quarterly

Format

A data frame with 'r nrow(tourism_quarterly)' rows and 4 variables: * **year**: The year of the tourism data * **quarter**: Quarter number like 1, 2, 3, 4 * **purpose**: Purpose of visit category: - '"Holiday"' - '"Business"' * **trips**: Number of overnight trips (in thousands). * **region_id**: Unique integer identifier linking to the tourism_region dataset. * **ws_id**: Identifier of the nearest Bureau of Meteorology weather station to the tourism region.

Details

Tourism regions are formed through the aggregation of Statistical Local Areas (SLAs) or similar ABS-defined geographies, as determined by state and territory tourism authorities. This dataset is designed for analysis of seasonal tourism patterns and can be joined to tourism_region for spatial analysis.

References

Tourism Research Australia: https://www.tra.gov.au

Examples

data(tourism_quarterly)
head(tourism_quarterly)

Tourism Regions and Nearest Weather Stations

Description

A dataset containing the locations of Australian tourism regions, their geographic coordinates, and the nearest Bureau of Meteorology weather station. Each region is assigned a unique identifier for linking to other tourism datasets.

Usage

tourism_region

Format

A data frame with 'r nrow(tourism_region)' rows and 5 variables: * **region**: Name of the tourism region. Tourism regions are defined by Tourism Research Australia and generally formed through the aggregation of Statistical Local Areas (SLAs) or other ABS-defined geographies. * **lon**: Longitude of the tourism region representative point (WGS84). * **lat**: Latitude of the tourism region representative point (WGS84). * **region_id**: Unique integer identifier for the tourism region. Useful for joining with other tourism-related datasets. * **ws_id**: Identifier of the nearest Bureau of Meteorology weather station to the tourism region.

Details

Coordinates for each tourism region are intended to represent a central location within the region (e.g., polygon centroid). The nearest weather station is determined using great-circle distance calculations based on the Bureau of Meteorology's official station list.

References

Tourism Research Australia: https://www.tra.gov.au Australian Bureau of Meteorology: http://www.bom.gov.au

Examples

data(tourism_region)
head(tourism_region)

Daily Weather Data for Top Stations (2014–2024)

Description

This dataset contains daily weather observations for the top weather stations associated with focal species in the ecotourism package. Data spans from 2014 to 2024 and includes temperature, humidity, precipitation, and wind measures.

Usage

weather

Format

A tibble with 35,527 rows and 18 variables:

ws_id

Weather station ID (e.g., "948720-99999")

stn_lat

Latitude of the weather station

stn_lon

Longitude of the weather station

date

Observation date (YYYY-MM-DD)

year

Year of observation

month

Month of observation (1–12)

day

Day of the month

weekday

Day of the week (as ordered factor)

dayofyear

Day of the year (1–366)

temp

Average temperature (°C)

min

Minimum temperature (°C)

max

Maximum temperature (°C)

dewp

Dew point temperature (°C)

rh

Relative humidity (%)

prcp

Precipitation (mm)

rainy

Binary flag indicating whether PRCP > 5 mm (1 = rainy day)

wind_speed

Average wind speed (m/s)

max_speed

Maximum sustained wind speed (m/s)

Details

The weather data was retrieved from the Global Surface Summary of the Day (GSOD) dataset via the GSODR package for the top 3 weather stations per organism in the ecotourism project. This data supports climate-biodiversity interaction analyses.

Source

GSOD via GSODR

See Also

top_stations, glowworms, gouldian_finch, weather_stations

Examples

data(weather)
head(weather)

Australian Weather Station Metadata

Description

This dataset contains metadata for 732 weather stations across Australia, including coordinates, station names, and geocoded location details.

Usage

weather_stations

Format

A tibble with 732 rows and 7 variables:

ws_id

Weather station ID (e.g., "941000-99999")

stname

Station name (e.g., "KALUMBURU")

stn_lat

Latitude of the station (decimal degrees)

stn_lon

Longitude of the station (decimal degrees)

address

Full geocoded address (from reverse geocoding)

stn_city

Parsed city or locality name

stn_state

Australian state or territory

Details

This data was derived from the GSOD inventory using the GSODR package, filtered for Australian stations, and geocoded using OpenStreetMap APIs. It is used to match ecological observations with relevant local weather conditions.

Source

GSOD inventory via GSODR; geocoded with OpenStreetMap

See Also

weather, top_stations, gouldian_finch

Examples

data(weather_stations)
head(weather_stations)