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The FORCIS database: A global census of planktonic Foraminifera from ocean waters.

Sonia ChaabaneThibault de Garidel-ThoronXavier GiraudRalf SchiebelGregory BeaugrandGeert-Jan BrummerNicolas CasajusMattia GrecoMaria GrigoratouHélène HowaLukas JonkersMichal KuceraAzumi KuroyanagiJulie MeillandFanny MonteiroP Graham MortynAhuva Almogi-LabinHirofumi AsahiSimona Avnaim-KatavFranck BassinotCatherine V DavisDavid B FieldIván Hernández-AlmeidaBarak HerutGraham HosieWill HowardAnna JentzenDavid G JohnsLloyd KeigwinJohn KitchenerKaren E KohfeldDouglas V O LessaClara MannoMargarita MarchantSiri OfstadJoseph D OrtizAlexandra L PostAndres Rigual-HernandezMarina C RilloKaren RobinsonTakuya SagawaFrancisco Javier SierroKunio T TakahashiAdi TorfsteinIgor VenancioMakoto YamasakiPatrizia Ziveri
Published in: Scientific data (2023)
Planktonic Foraminifera are unique paleo-environmental indicators through their excellent fossil record in ocean sediments. Their distribution and diversity are affected by different environmental factors including anthropogenically forced ocean and climate change. Until now, historical changes in their distribution have not been fully assessed at the global scale. Here we present the FORCIS (Foraminifera Response to Climatic Stress) database on foraminiferal species diversity and distribution in the global ocean from 1910 until 2018 including published and unpublished data. The FORCIS database includes data collected using plankton tows, continuous plankton recorder, sediment traps and plankton pump, and contains ~22,000, ~157,000, ~9,000, ~400 subsamples, respectively (one single plankton aliquot collected within a depth range, time interval, size fraction range, at a single location) from each category. Our database provides a perspective of the distribution patterns of planktonic Foraminifera in the global ocean on large spatial (regional to basin scale, and at the vertical scale), and temporal (seasonal to interdecadal) scales over the past century.
Keyphrases
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