Distinguishing local and global correlates of population change in migratory species

Aim: Understanding the processes driving population declines in migratory species can be challenging. Not only are monitoring data spatially and temporally sparse, but conditions in one location can carry over to indirectly (and disproportionately) affect the population in another location. Here, we...

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Main Authors: Dhanjal-Adams, KL, Fuller, RA, Murray, NJ, Studds, CE, Wilson, HB, Milton, DA, Kendall, BE
Format: Article in Journal/Newspaper
Language:unknown
Published: eScholarship, University of California 2019
Subjects:
Online Access:https://escholarship.org/uc/item/10n91225
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spelling ftcdlib:oai:escholarship.org/ark:/13030/qt10n91225 2023-05-15T15:16:30+02:00 Distinguishing local and global correlates of population change in migratory species Dhanjal-Adams, KL Fuller, RA Murray, NJ Studds, CE Wilson, HB Milton, DA Kendall, BE 797 - 808 2019-05-01 https://escholarship.org/uc/item/10n91225 unknown eScholarship, University of California qt10n91225 https://escholarship.org/uc/item/10n91225 public Diversity and Distributions, vol 25, iss 5 carry-over effects climate sensitivity growth rate migration N-mixture model shorebirds Ecology Environmental Sciences Biological Sciences article 2019 ftcdlib 2021-03-28T08:19:02Z Aim: Understanding the processes driving population declines in migratory species can be challenging. Not only are monitoring data spatially and temporally sparse, but conditions in one location can carry over to indirectly (and disproportionately) affect the population in another location. Here, we explore whether remote factors can sequentially, and potentially cumulatively, influence local population fluctuations in declining populations of shorebirds. Location: Moreton Bay (Australia) and the East Asian–Australasian Flyway. Methods: We use N-mixture models to account for variable observer effort and estimate yearly population growth rate. We then use least squares regressions to correlate population growth rates with remotely sensed climate anomalies at different migratory stages. From this, we estimate species-specific climate sensitivity indices and explore whether species which are declining more rapidly, or which rely more heavily on areas undergoing rapid habitat loss, have higher climate sensitivity indices. Results: We find that species which rely more on the Yellow Sea during migratory stopover (a region which has undergone severe habitat loss) are more sensitive to rainfall anomalies in their Arctic breeding grounds, suggesting that habitat loss reduces the resilience of shorebirds to climate extremes. Furthermore, species with higher sensitivities to climatic conditions during stopover are also those which are declining quickest, suggesting that declining populations may also be less resilient to climate fluctuations at bottleneck sites. We also observed species-specific correlations between climate anomalies at all migratory stages and population growth rates, primarily for eastern curlew and lesser sand plover. Main conclusion: By applying methods in combination, it is possible to use citizen science data from a single location in a flyway of over 160 sites up to 11,680km apart, to investigate how different stressors correlate with local population dynamics. Article in Journal/Newspaper Arctic University of California: eScholarship Arctic Moreton ENVELOPE(-46.033,-46.033,-60.616,-60.616) Moreton Bay ENVELOPE(-117.952,-117.952,75.734,75.734)
institution Open Polar
collection University of California: eScholarship
op_collection_id ftcdlib
language unknown
topic carry-over effects
climate sensitivity
growth rate
migration
N-mixture model
shorebirds
Ecology
Environmental Sciences
Biological Sciences
spellingShingle carry-over effects
climate sensitivity
growth rate
migration
N-mixture model
shorebirds
Ecology
Environmental Sciences
Biological Sciences
Dhanjal-Adams, KL
Fuller, RA
Murray, NJ
Studds, CE
Wilson, HB
Milton, DA
Kendall, BE
Distinguishing local and global correlates of population change in migratory species
topic_facet carry-over effects
climate sensitivity
growth rate
migration
N-mixture model
shorebirds
Ecology
Environmental Sciences
Biological Sciences
description Aim: Understanding the processes driving population declines in migratory species can be challenging. Not only are monitoring data spatially and temporally sparse, but conditions in one location can carry over to indirectly (and disproportionately) affect the population in another location. Here, we explore whether remote factors can sequentially, and potentially cumulatively, influence local population fluctuations in declining populations of shorebirds. Location: Moreton Bay (Australia) and the East Asian–Australasian Flyway. Methods: We use N-mixture models to account for variable observer effort and estimate yearly population growth rate. We then use least squares regressions to correlate population growth rates with remotely sensed climate anomalies at different migratory stages. From this, we estimate species-specific climate sensitivity indices and explore whether species which are declining more rapidly, or which rely more heavily on areas undergoing rapid habitat loss, have higher climate sensitivity indices. Results: We find that species which rely more on the Yellow Sea during migratory stopover (a region which has undergone severe habitat loss) are more sensitive to rainfall anomalies in their Arctic breeding grounds, suggesting that habitat loss reduces the resilience of shorebirds to climate extremes. Furthermore, species with higher sensitivities to climatic conditions during stopover are also those which are declining quickest, suggesting that declining populations may also be less resilient to climate fluctuations at bottleneck sites. We also observed species-specific correlations between climate anomalies at all migratory stages and population growth rates, primarily for eastern curlew and lesser sand plover. Main conclusion: By applying methods in combination, it is possible to use citizen science data from a single location in a flyway of over 160 sites up to 11,680km apart, to investigate how different stressors correlate with local population dynamics.
format Article in Journal/Newspaper
author Dhanjal-Adams, KL
Fuller, RA
Murray, NJ
Studds, CE
Wilson, HB
Milton, DA
Kendall, BE
author_facet Dhanjal-Adams, KL
Fuller, RA
Murray, NJ
Studds, CE
Wilson, HB
Milton, DA
Kendall, BE
author_sort Dhanjal-Adams, KL
title Distinguishing local and global correlates of population change in migratory species
title_short Distinguishing local and global correlates of population change in migratory species
title_full Distinguishing local and global correlates of population change in migratory species
title_fullStr Distinguishing local and global correlates of population change in migratory species
title_full_unstemmed Distinguishing local and global correlates of population change in migratory species
title_sort distinguishing local and global correlates of population change in migratory species
publisher eScholarship, University of California
publishDate 2019
url https://escholarship.org/uc/item/10n91225
op_coverage 797 - 808
long_lat ENVELOPE(-46.033,-46.033,-60.616,-60.616)
ENVELOPE(-117.952,-117.952,75.734,75.734)
geographic Arctic
Moreton
Moreton Bay
geographic_facet Arctic
Moreton
Moreton Bay
genre Arctic
genre_facet Arctic
op_source Diversity and Distributions, vol 25, iss 5
op_relation qt10n91225
https://escholarship.org/uc/item/10n91225
op_rights public
_version_ 1766346805524561920