TY - JOUR
T1 - Using geolocator tracking data and ringing archives to validate citizen-science based seasonal predictions of bird distribution in a data-poor region
AU - Heim, Wieland
AU - Heim, Ramona J.
AU - Beermann, Ilka
AU - Burkovskiy, Oleg A.
AU - Gerasimov, Yury
AU - Ktitorov, Pavel
AU - Ozaki, Kiyoaki
AU - Panov, Ilya
AU - Sander, Martha Maria
AU - Sjöberg, Sissel
AU - Smirenski, Sergei M.
AU - Thomas, Alexander
AU - Tøttrup, Anders P.
AU - Tiunov, Ivan M.
AU - Willemoes, Mikkel
AU - Hölzel, Norbert
AU - Thorup, Kasper
AU - Kamp, Johannes
PY - 2020
Y1 - 2020
N2 - Unstructured citizen-science data are increasingly used for analysing the abundance and distribution of species. Here we test the usefulness of such data to predict the seasonal distribution of migratory songbirds, and to analyse patterns of migratory connectivity.We used bird occurrence data from eBird, one of the largest global citizen science databases, to predict the year-round distribution of eight songbird taxa (Agropsar philippensis, Calliope calliope, Cecropis daurica, Emberiza aureola, Hirundo rustica, Locustella certhiola, Oriolus chinensis, Saxicola torquatus stejnegeri) that migrate through East Asia, a region especially poor in data but globally important for the conservation of migratory land birds. Maximum entropy models were built to predict spring stopover, autumn stopover and wintering areas. Ring recovery and geolocator tracking data were then used to evaluate, how well the predicted occurrence at a given period of the annual cycle matched sites where the species were known to be present from ringing and tracking data.Predicted winter ranges were generally smaller than those on published extent-of-occurrence maps (the hitherto only available source of distribution information). There was little overlap in stopover regions. The overlap between areas predicted as suitable from the eBird data and areas that had records from geolocator tracking was high in winter, and lower for spring and autumn migration. Less than 50% of the ringing recoveries came from locations within the seasonal predicted areas, with the highest overlap in autumn. The seasonal range size of a species affected the matching of tracking/ringing data with the predictions. Strong migratory connectivity was evident in Siberian Rubythroats and Barn Swallows. We identified two migration corridors, one over the eastern mainland of China, and one along a chain of islands in the Pacific.We show that the combination of disparate data sources has great potential to gain a better understanding of the non-breeding distribution and migratory connectivity of Eastern Palearctic songbirds. Citizen-science observation data are useful even in remote areas to predict the seasonal distribution of migratory species, especially in periods when birds are sedentary and when supplemented with tracking data. (C) 2020 The Authors. Published by Elsevier B.V.
AB - Unstructured citizen-science data are increasingly used for analysing the abundance and distribution of species. Here we test the usefulness of such data to predict the seasonal distribution of migratory songbirds, and to analyse patterns of migratory connectivity.We used bird occurrence data from eBird, one of the largest global citizen science databases, to predict the year-round distribution of eight songbird taxa (Agropsar philippensis, Calliope calliope, Cecropis daurica, Emberiza aureola, Hirundo rustica, Locustella certhiola, Oriolus chinensis, Saxicola torquatus stejnegeri) that migrate through East Asia, a region especially poor in data but globally important for the conservation of migratory land birds. Maximum entropy models were built to predict spring stopover, autumn stopover and wintering areas. Ring recovery and geolocator tracking data were then used to evaluate, how well the predicted occurrence at a given period of the annual cycle matched sites where the species were known to be present from ringing and tracking data.Predicted winter ranges were generally smaller than those on published extent-of-occurrence maps (the hitherto only available source of distribution information). There was little overlap in stopover regions. The overlap between areas predicted as suitable from the eBird data and areas that had records from geolocator tracking was high in winter, and lower for spring and autumn migration. Less than 50% of the ringing recoveries came from locations within the seasonal predicted areas, with the highest overlap in autumn. The seasonal range size of a species affected the matching of tracking/ringing data with the predictions. Strong migratory connectivity was evident in Siberian Rubythroats and Barn Swallows. We identified two migration corridors, one over the eastern mainland of China, and one along a chain of islands in the Pacific.We show that the combination of disparate data sources has great potential to gain a better understanding of the non-breeding distribution and migratory connectivity of Eastern Palearctic songbirds. Citizen-science observation data are useful even in remote areas to predict the seasonal distribution of migratory species, especially in periods when birds are sedentary and when supplemented with tracking data. (C) 2020 The Authors. Published by Elsevier B.V.
KW - East Asian flyway
KW - eBird
KW - MaxEnt
KW - Migration
KW - Species distribution model
KW - Tracking
KW - LONG-DISTANCE MIGRANT
KW - SPECIES DISTRIBUTION
KW - MOVEMENT PATTERNS
KW - MIGRATION
KW - NICHES
KW - BIODIVERSITY
KW - EVOLUTION
KW - EXPANSION
KW - RICHNESS
KW - DUALITY
U2 - 10.1016/j.gecco.2020.e01215
DO - 10.1016/j.gecco.2020.e01215
M3 - Journal article
SN - 2351-9894
VL - 24
JO - Global Ecology and Conservation
JF - Global Ecology and Conservation
M1 - e01215
ER -