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<resTitle Sync="FALSE">Beaufort Sea Marine Fishes Project (BSMFP) 2013 - Sampling Stations/Projet de 2013 sur les poissons marins de la mer de Beaufort – Stations d'échantillonnage</resTitle>
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<idPurp>From August 2nd to September 9th, 2013, Fisheries and Oceans Canada conducted a baseline survey of marine fishes and their habitats on the Canadian Beaufort Shelf and slope. Sampling was conducted from the F/V Frosti at 64 stations along ten transects. Standardized sampling was conducted on the transects at pre-determined depth stations (20-40, 75, 200, 350, 500, 750, and 1000 m) using a variety of sampling equipment including benthic fishing trawls, plankton nets, sediment cores, and CTD and water sample profiles. A specialized CTD probe (UCTD) was deployed at an additional 72 locations while the ship was underway.Presented here is the information on the sampling locations, and the sampling gear deployed at each station.
Du 2 août au 9 septembre 2013, Pêches et Océans Canada a effectué un relevé initial des poissons marins et de leurs habitats sur le plateau et le talus canadien de la mer de Beaufort. L’échantillonnage a été effectué à partir du F/V Frosti à 64 stations réparties le long de dix transects. Un échantillonnage normalisé a été effectué à des stations de profondeur prédéterminée (20 à 40, 75, 200, 350, 500, 750 et 1 000 m) à l’aide de divers équipements d’échantillonnage, notamment des chaluts benthiques, des filets à plancton, des carottiers à sédiments, des instruments de mesure CTP et un échantillonneur d’eau. Une sonde CTP spécialisée (CTP-en cours) a été déployée aux 72 stations supplémentaires pendant que le navire était en route. Voici l’information sur les lieux d’échantillonnage et l’équipement d’échantillonnage déployé à chaque station.</idPurp>
<idAbs>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;The Beaufort Regional Environmental Assessment (BREA) was administered by Aboriginal Affairs and Northern Development Canada (AANDC) between 2010 and 2015, and gathered information on regional environmental and socio-economic topics to support regulatory and management issues surrounding potential oil and gas development in the Beaufort Sea. Offshore marine fishes and habitats in the Beaufort Sea were identified as Tier 1 knowledge gaps by the BREA. In response, Fisheries and Oceans Canada (DFO) conducted a baseline survey of marine fishes and associated habitat and food web parameters in the offshore Beaufort Sea, called the Beaufort Sea Marine Fishes Project (BSMFP)&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&lt;SPAN&gt;The objectives of the BSMFP were to establish regional baselines for 1) occurrences, diversity, relative abundances and distributions of offshore marine fishes; 2) associations between fishes, physical/chemical habitat parameters, and prey availability; and, 3) ecosystem linkages and energy pathways within and amongst marine habitats (i.e., nearshore-shelf, offshore shelf, slope, deepwater slope, and pelagic).&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&lt;SPAN /&gt;&lt;/P&gt;&lt;P&gt;&lt;SPAN&gt;L’évaluation environnementale régionale de Beaufort (EERB), qui a été administrée par Affaires autochtones et Développement du Nord Canada (AADNC) entre 2010 et 2015, a permis de recueillir des informations sur des sujets environnementaux et socioéconomiques régionaux afin d’étayer des questions de réglementation et de gestion concernant l’exploitation potentielle du pétrole et du gaz dans la mer de Beaufort. L’EERB a permis de déterminer que des lacunes dans les connaissances de niveau 1 existaient pour les poissons et les habitats marins au large de la mer de Beaufort. Pêches et Océans Canada (MPO) a donc effectué un relevé initial des poissons marins et des paramètres connexes de l’habitat et du réseau trophique de la mer de Beaufort, soit le Projet sur les poissons marins de la mer de Beaufort.&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&lt;SPAN&gt;Les objectifs du Projet sur les poissons marins de la mer de Beaufort étaient d’établir des valeurs de référence régionales pour : 1) l’occurrence, la diversité, l’abondance relative et la répartition des poissons marins hauturiers; 2) les associations entre les poissons, les paramètres physiques et chimiques de l’habitat et la disponibilité des proies; 3) les liens existant avec les écosystèmes et les flux énergétiques à l’intérieur des habitats marins et entre ceux-ci (c.-à-d. plateau côtier, plateau extracôtier, talus, talus en eau profonde et zone pélagique).&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</idAbs>
<idCredit>Government of Canada; Fisheries and Oceans Canada</idCredit>
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