| Literature DB >> 34895345 |
Sarah R Supp1, Gil Bohrer2, John Fieberg3, Frank A La Sorte4.
Abstract
As human and automated sensor networks collect increasingly massive volumes of animal observations, new opportunities have arisen to use these data to infer or track species movements. Sources of broad scale occurrence datasets include crowdsourced databases, such as eBird and iNaturalist, weather surveillance radars, and passive automated sensors including acoustic monitoring units and camera trap networks. Such data resources represent static observations, typically at the species level, at a given location. Nonetheless, by combining multiple observations across many locations and times it is possible to infer spatially continuous population-level movements. Population-level movement characterizes the aggregated movement of individuals comprising a population, such as range contractions, expansions, climate tracking, or migration, that can result from physical, behavioral, or demographic processes. A desire to model population movements from such forms of occurrence data has led to an evolving field that has created new analytical and statistical approaches that can account for spatial and temporal sampling bias in the observations. The insights generated from the growth of population-level movement research can complement the insights from focal tracking studies, and elucidate mechanisms driving changes in population distributions at potentially larger spatial and temporal scales. This review will summarize current broad-scale occurrence datasets, discuss the latest approaches for utilizing them in population-level movement analyses, and highlight studies where such analyses have provided ecological insights. We outline the conceptual approaches and common methodological steps to infer movements from spatially distributed occurrence data that currently exist for terrestrial animals, though similar approaches may be applicable to plants, freshwater, or marine organisms.Entities:
Keywords: Acoustic monitoring; Camera trap; Crowdsourced data; Migration; Occurrence data; Population-level movement; Range expansion; Terrestrial animals; Weather surveillance radar; eBird
Year: 2021 PMID: 34895345 PMCID: PMC8665594 DOI: 10.1186/s40462-021-00294-2
Source DB: PubMed Journal: Mov Ecol ISSN: 2051-3933 Impact factor: 3.600
Fig. 1Map of the Western Hemisphere displaying locations of Broad-winged Hawk (Buteo platypterus) during spring and autumn migration. The top row shows 7394 locations from 21 GPS-tracked individuals compiled from 2014 to 2020,
accessed from Movebank.org (study name “Broad-winged Hawk habitat use, range, and movement ecology, study ID 28691134) on 19 May 2021. The bottom row shows 277, 398 unique Broad-winged Hawk occurrence locations in eBird from 2014 to 2020 [36]
Fig. 2A population-level framework for movement ecology. Measures of population-level geographic distributions and ranges and their quantified movement through time emerge from multiple processes including individual behaviors (sensu the movement ecology framework, [42]) and demographic processes, both of which occur within the context of external factors. Additionally, observation processes may influence observed population-level patterns and must be accounted for to obtain reliable inferences. Population-level movement can be estimated across a broad range of spatial and temporal scales beyond individual-level movement. Population-level and individual-level measures are each capable of capturing movement phenomena with some overlap between approaches such as patterns related to migration, vagrancy, and nomadism
Examples of occurrence datasets that are publicly available or can be accessed through a registered user account
| Example occurrence dataset | Sensor type | Taxa | Spatial extent | Temporal extent |
|---|---|---|---|---|
| iNaturalist; | Crowdsourced human observers | Any | Global | 2008–present |
| Global Biodiversity Information Facility (GBIF); | Professional, governmental, and crowdsourced human observers | Any | Global | 2001–present |
| eBird; | CROWDSOURCED human observers | Birds | Global | 1800–present |
| Herpmapper | Crowdsourced human observers | Herptiles | Global | 2013–present |
| eButterfly; | Crowdsourced human observers | Lepidoptera | North America | 2011–present |
| UK Butterfly Monitoring Scheme; | Volunteer, professional, and governmental human observers | Lepidoptera | United Kingdom | 1976–present |
| United States weather surveillance radar [ | Weather surveillance radar | Aerofauna | North America | 1991–present |
| European weather surveillance radar; OPERA [ | Weather surveillance radar | Aerofauna | Europe | 2012–present |
| North American Bat Monitoring Program; [ | Professional and governmental acoustic surveys | Bats | North America | 2009–present |
Snapshot USA (eMammal); | Crowdsourced camera traps | Terrestrial mammals | United States | 2019–present |
FrogID; [ | Crowdsourced human observers via acoustic app | Frogs | Australia | 2017–present |
The temporal extent is noted for each dataset, though it is important to recognize that most of these efforts have a significant “ramp up” period, and the frequency and quality of data from the earliest years may not be high enough to support broad-scale analyses. This list is not exhaustive and is meant to illustrate different taxonomic examples across the globe that could be used to infer population-level movement
Key terminology needed to use this review as a guide
| Glossary | |
|---|---|
Thematic research areas and specific research questions that are important to the emerging field of population-level movement ecology
| Example research categories and question types | |
|---|---|
1. How does the geographic center of a population change seasonally and through time? What is the distance covered, rate of temporal change or speed, directionality, and intra- and inter-annual variation? What is the timing of migration and how does the distribution of a population change during migration? 2. How does the location of range boundaries or population clusters within a species’ range, change seasonally and through time? 3. How does the population’s movement compare to other populations or species? | |
4. How is population movement constrained or facilitated by average behavioral, physiological, or morphological traits of the species? 5. For migratory species, how do migration strategies (e.g., partial, full, differential, irruptive), migration distance, morphology (e.g., body mass), or behavior (e.g., diet) impact movements? 6. To what extent are observed differences among species explained by their traits? | |
7. Which external factors (ecological, environmental, geographic, or anthropogenic) correlate with population-level movement? How and where do populations move in relation to these external factors? 8. What are the most relevant spatial and temporal scales for biotic or abiotic interactions to impact movement? 9. Can we develop empirical mechanistic models of population-level movement based on the observed occurrencees and external factors? | |
10. How does the population’s movement or the movement of it’s range center or edges contribute to or change biodiversity patterns? 11. What environmental or landscape factors are needed to maintain or improve population movement efficiency or to reduce risk during movement? How are the consequences of global change (climate change, land-use change, and environmental pollution) affecting, or forecasted to affect, population-level movements? 12. Do movement trends and associations with environmental drivers suggest changes to location or range that could help guide priority concern or management strategies? Are there natural or anthropogenic barriers to movement that might be important when considering conservation under changing climate, where species may seek to move to colder areas at higher latitudes or elevations? |
These categories originate from the new population-level movement framework proposed here, and the constraints that limit certain types of analyses when individuals identities cannot be retained
Fig. 3Schematic of the steps from data selection to data processing and analysis that could be used to evaluate population-level movement from occurrence data. An example is shown using eBird occurrence data from the western and eastern flyways of the Yellow-rumped Warbler (Setophaga coronata) in 2019 [36], but the same general workflow could be applied to other occurrence datasets. Yellow-rumped Warbler silhouette was created by Cornell Lab of Ornithology and is used with permission
Fig. 4A worked example exploring observation trends in eBird occurrence data from 2008 to 2019 for two closely related species: migratory Black-chinned Hummingbird (Archilochus alexandri) and range-expanding Anna’s Hummingbird (Calypte anna) [125] from the western flyway of North America [36]. Even closely related species can display different dynamics, which can dramatically affect how the data is structured across space and time. (A) The total number of checklists (log10 transformed) containing each species increases through time, which is expected as the crowdsourced platform gains new observers. It does not represent an increase in the total number of hummingbirds. (B) In contrast, the percent of all checklists containing each species within regions where each occurs is declining for Black-chinned Hummingbirds, and increasing for Anna’s Hummingbirds, which may reflect changes in observer behavior, expertise, or geographic coverage through time. (C) After spatially binning the data, the number of unique grid cells in which each species is observed increases slightly through time, but is relatively flat in recent years, giving some confidence that the species’ locations have been adequately covered through the time frame and within the spatial area. (D) The number of days that the species was observed in each year is flat for Anna’s Hummingbird after 2008, indicating that they were observed every day in each subsequent year. In contrast, Black-chinned Hummingbirds show a strong increasing trend, which suggests a need to further explore the data to see whether it indicates increased observer effort in general, or at particular locations or times of the year, or if it represents a meaningful ecological trend in the occurrence phenology of the species
Examples of new ecological insights that have been gained in each thematic area with citations
| Ecological insights | |
|---|---|
• Broad scale migration patterns, including looped migration, and directionality [ • Migration timing, including when animals migrate and how quickly they migrate [ • Estimates of range expansion or contraction, overall shift in center, area, or edges of range [ | |
• Species traits impact range expansion [ [ • Species traits (body mass, total migration distance) impact avian migration patterns [ • Species migratory traits affect sensitivity to migration phenology [ | |
• Distance in range shift relative to temperature change, climatic debt [ • Importance of topography and tailwind for migration [ • Environmental correlates of migration including atmospheric conditions [ • Assess whether species presence or absence across sites is affected by other species presence relative to timing of migration [ | |
• Association of migratory birds with protected areas and land-cover categories across the annual cycle [ • Impacts to moving species from projected changes in climate and land use [ • Impacts to society from range movement or redistribution due to climate change [ • Potential environmental barriers to migration [ • Urban effects on occurrence of birds and mammals [ • Conservation planning based on movement and abundance across species’ annual cycles [ |