Premium
Improving waterbird monitoring and conservation in the Sahel using remote sensing: a case study with the International Waterbird Census in Sudan
Author(s) -
Suet Marie,
LozanoArango Juan Guillermo,
Defos Du Rau Pierre,
Deschamps ClÉmence,
Abdalgader Mohammed Mohammed Adam,
Elbashary Adam Elfirdous,
Mohammed Eldegair Eltayeb,
Ali Elbadawi Mohamed Elmekki,
Mohammed Hashim Ibrahim,
Kirrem Kpoore Noman,
Mohammed Mohammed Adam,
Mohammed Ibrahim Bihery Manal,
Adam Mutassim Essa Abdallah,
Pineau Olivier,
MondainMonval JeanYves
Publication year - 2021
Publication title -
ibis
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.933
H-Index - 80
eISSN - 1474-919X
pISSN - 0019-1019
DOI - 10.1111/ibi.12911
Subject(s) - geography , census , abundance (ecology) , habitat , distribution (mathematics) , floodplain , scale (ratio) , distance sampling , ecology , physical geography , environmental resource management , cartography , environmental science , population , biology , demography , mathematical analysis , mathematics , sociology
In several regions of the world, the remoteness of potential bird hotspots and lack of trained observers have often prevented countries from effectively designing proper monitoring schemes at a national scale. For many countries, it is not known whether certain bird strongholds have been missed that should be included for more complete censuses. Such gaps at national scales, sometimes large, may be detrimental for global monitoring schemes. To address this, we used the irregular participation of Sudan to the International Waterbird Census (IWC) as a case study. We designed and tested a method based on remote‐sensing data of the country’s lowlands to detect open water bodies in order to develop predictive models of the potential distribution of waterbird abundance and diversity. To identify open water bodies and their flooding duration, we used a Modified Normalized Difference Water Index (MNDWI) derived from Landsat 8 data. Field ornithological surveys were then used as ground‐truth data to estimate the method’s accuracy. The statistical results (overall accuracy = 0.972; Kappa index = 0.93) confirmed its effectiveness. Remotely sensed water bodies and additional environmental covariates were then used to build simple habitat models of the distribution of waterbird abundance and diversity based on IWC field survey data. Of the 3119 remotely sensed clusters of open water bodies, three were predicted to host more than 10 000 waterbirds, 89 more than 1000 waterbirds and five more than 30 waterbird species. Located mainly in the southern agricultural floodplains along the main rivers, these predicted waterbird strongholds are therefore recommended for inclusion in the next IWC survey in Sudan. Our findings indicate that using remote sensing to identify open water bodies combined with simple statistical modelling is likely to be a cost‐effective solution to improve IWC sampling and to enhance both waterbird and wetland monitoring in vast under‐surveyed regions.