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  • PANGAEA  (73)
  • University of California Press  (2)
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  • 1
    Publication Date: 2015-10-21
    Repository Name: EPIC Alfred Wegener Institut
    Type: PANGAEA Documentation , notRev
    Format: application/pdf
    Location Call Number Limitation Availability
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  • 2
    Publication Date: 2022-06-07
    Description: The Author(s), 2022. This article is distributed under the terms of the Creative Commons Attribution License. The definitive version was published in Rabe, B., Heuze, C., Regnery, J., Aksenov, Y., Allerholt, J., Athanase, M., Bai, Y., Basque, C., Bauch, D., Baumann, T. M., Chen, D., Cole, S. T., Craw, L., Davies, A., Damm, E., Dethloff, K., Divine, D., Doglioni, F., Ebert, F., Fang, Y-C., Fer, I., Fong, A. A., Gradinger, R., Granskog, M. A., Graupner, R., Haas, C., He, H., He, Y., Hoppmann, M., Janout, M., Kadko, D., Kanzow, T., Karam, S., Kawaguchi, Y., Koenig, Z., Kong, B., Krishfield, R. A., Krumpen, T., Kuhlmey, D., Kuznetsov, I., Lan, M., Laukert, G., Lei, R., Li, T., Torres-Valdés, S., Lin, L,. Lin, L., Liu, H., Liu, N., Loose, B., Ma, X., MacKay, R., Mallet, M., Mallett, R. D. C., Maslowski, W., Mertens, C., Mohrholz, V., Muilwijk, M., Nicolaus, M., O’Brien, J. K., Perovich, D., Ren, J., Rex, M., Ribeiro, N., Rinke, A., Schaffer, J., Schuffenhauer, I., Schulz, K., Shupe, M. D., Shaw, W., Sokolov, V., Sommerfeld, A., Spreen, G., Stanton, T., Stephens, M., Su, J., Sukhikh, N., Sundfjord, A., Thomisch, K., Tippenhauer, S., Toole, J. M., Vredenborg, M., Walter, M., Wang, H., Wang, L., Wang, Y., Wendisch, M., Zhao, J., Zhou, M., & Zhu, J. Overview of the MOSAiC expedition: physical oceanography. Elementa: Science of the Anthropocene, 10(1), (2022): 1, https://doi.org/10.1525/elementa.2021.00062.
    Description: Arctic Ocean properties and processes are highly relevant to the regional and global coupled climate system, yet still scarcely observed, especially in winter. Team OCEAN conducted a full year of physical oceanography observations as part of the Multidisciplinary drifting Observatory for the Study of the Arctic Climate (MOSAiC), a drift with the Arctic sea ice from October 2019 to September 2020. An international team designed and implemented the program to characterize the Arctic Ocean system in unprecedented detail, from the seafloor to the air-sea ice-ocean interface, from sub-mesoscales to pan-Arctic. The oceanographic measurements were coordinated with the other teams to explore the ocean physics and linkages to the climate and ecosystem. This paper introduces the major components of the physical oceanography program and complements the other team overviews of the MOSAiC observational program. Team OCEAN’s sampling strategy was designed around hydrographic ship-, ice- and autonomous platform-based measurements to improve the understanding of regional circulation and mixing processes. Measurements were carried out both routinely, with a regular schedule, and in response to storms or opening leads. Here we present along-drift time series of hydrographic properties, allowing insights into the seasonal and regional evolution of the water column from winter in the Laptev Sea to early summer in Fram Strait: freshening of the surface, deepening of the mixed layer, increase in temperature and salinity of the Atlantic Water. We also highlight the presence of Canada Basin deep water intrusions and a surface meltwater layer in leads. MOSAiC most likely was the most comprehensive program ever conducted over the ice-covered Arctic Ocean. While data analysis and interpretation are ongoing, the acquired datasets will support a wide range of physical oceanography and multi-disciplinary research. They will provide a significant foundation for assessing and advancing modeling capabilities in the Arctic Ocean.
    Description: The following projects and funding agencies contributed to this work: Why is the deep Arctic Ocean Warming is funded by the Swedish Research Council, project number 2018-03859, and berth fees for this project were covered by the Swedish Polar Research Secretariat; The Changing Arctic Ocean (CAO) program, jointly funded by the United Kingdom Research and Innovation (UKRI) Natural Environment Research Council (NERC) and the Bundesministerium für Bildung und Forschung (BMBF), in particular, the CAO projects Advective Pathways of nutrients and key Ecological substances in the ARctic (APEAR) grants NE/R012865/1, NE/R012865/2, and #03V01461, and the project Primary productivity driven by Escalating Arctic NUTrient fluxeS grant #03F0804A; The Research Council of Norway (AROMA, grant no 294396; HAVOC, grant no 280292; and CAATEX, grant no 280531); Collaborative Research: Thermodynamics and Dynamic Drivers of the Arctic Sea Ice Mass Budget at Multidisciplinary drifting Observatory for the Study of the Arctic Climate; National Science Foundation (NSF) projects 1723400, Stanton; OPP-1724551, Shupe; The Helmholtz society strategic investment Frontiers in Arctic Marine monitoring (FRAM); Deutsche Forschungsgemeinschaft (German Research Foundation) through the Transregional Collaborative Research Centre TRR 172 “ArctiC Amplification: Climate Relevant Atmospheric and SurfaCe Processes, and Feedback Mechanisms (AC)3” (grant 268020496); The Japan Society for the Promotion of Science (grant numbers JP18H03745, JP18KK0292, and JP17KK0083) and the COLE grant of U. Tokyo; National Key Research and Development Plan Sub-Project of Ministry of Science and Technology of China (2016YFA0601804), “Simulation, Prediction and Regional Climate Response of Global Warming Hiatus”, 2016/07-2021/06; National Science Foundation grant number OPP-1756100 which funded two of the Ice-Tethered Profilers and all the Ice-Tethered Profiler deployments; Chinese Polar Environmental Comprehensive Investigation and Assessment Programs, funded by the Chinese Arctic and Antarctic Administration; Marine Science and Technology Fund of Shandong Province for Qingdao National Laboratory for Marine Science and Technology (Grant: 2018SDKJ0104-1) and Chinese Natural Science Foundation (Grant: 41941012); UK NERC Long-term Science Multiple Centre National Capability Programme “North Atlantic Climate System Integrated Study (ACSIS)”, grant NE/N018044/1; The London NERC Doctoral Training Partnership grant (NE/L002485/1) which funded RDCM; NSF grant number OPP-1753423, which funded the 7Be tracer –measurements; and The Alfred-Wegener-Institut Helmholtz-Zentrum für Polar- und Meeresforschung (AWI) through its projects: AWI_OCEAN, AWI_ROV, AWI_ICE, AWI_SNOW, AWI_ECO, AWI_ATMO, and AWI_BGC.
    Keywords: Physical oceanography ; MOSAiC ; Arctic ; Coupled ; Drift ; Sea ice
    Repository Name: Woods Hole Open Access Server
    Type: Article
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  • 3
    Publication Date: 2024-05-08
    Description: The rapid melt of snow and sea ice during the Arctic summer provides a significant source of low-salinity meltwater to the surface ocean on the local scale. The accumulation of this meltwater on, under, and around sea ice floes can result in relatively thin meltwater layers in the upper ocean. Due to the small-scale nature of these upper-ocean features, typically on the order of 1 m thick or less, they are rarely detected by standard methods, but are nevertheless pervasive and critically important in Arctic summer. Observations during the Multidisciplinary drifting Observatory for the Study of Arctic Climate (MOSAiC) expedition in summer 2020 focused on the evolution of such layers and made significant advancements in understanding their role in the coupled Arctic system. Here we provide a review of thin meltwater layers in the Arctic, with emphasis on the new findings from MOSAiC. Both prior and recent observational datasets indicate an intermittent yet longlasting (weeks to months) meltwater layer in the upper ocean on the order of 0.1 m to 1.0 m in thickness, with a large spatial range. The presence of meltwater layers impacts the physical system by reducing bottom ice melt and allowing new ice formation via false bottom growth. Collectively, the meltwater layer and false bottoms reduce atmosphere-ocean exchanges of momentum, energy, and material.The impacts on the coupled Arctic system are far-reaching, including acting as a barrier for nutrient and gas exchange and impacting ecosystem diversity and productivity.
    Repository Name: EPIC Alfred Wegener Institut
    Type: Article , isiRev
    Format: application/pdf
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  • 4
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    PANGAEA
    In:  Supplement to: Hole, Lars Robert; Fer, Ilker; Peddie, David (2016): Directional wave measurements using an autonomous vessel. Ocean Dynamics, 66(9), 1087-1098, https://doi.org/10.1007/s10236-016-0969-4
    Publication Date: 2023-01-13
    Description: An autonomous vessel, the Offshore Sensing Sailbuoy, was used for wave measurements near the Ekofisk oil platform complex in the North Sea (56.5 N, 3.2 E, operated by ConocoPhilllips) from 6 to 20 November 2015. Being 100% wind propelled, the Sailbuoy has two-way communication via the Iridium network and has the capability for missions of six months or more. It has previously been deployed in the Arctic, Norwegian Sea and the Gulf of Mexico, but this was the first real test for wave measurements. During the campaign it held position about 20km northeast of Ekofisk (on the lee side) during rough conditions. Mean wind speed measured at Ekofisk during the campaign was near 9.8m/s, with a maximum of 20.4m/s, with wind mostly from south and south west. A Datawell MOSE G1000 GPS based 2Hz wave sensor was mounted on the Sailbuoy. Mean significant wave height (Hs 1hr) measured was 3m, whereas maximum Hs was 6m. Mean wave period was 7.7s, while maximum wave height, Hmax, was 12.6m. These measurements have been compared with non-directional Waverider observations at the Ekofisk complex. Mean Hs at Ekofisk was 3.1m, while maximum Hs was 6.5m. Nevertheless, the correlation between the two measurements was high (97%). Spectra comparison was also good, except for low Hs (~1m), where the motion of the vessel seemed to influence the measurements. Nevertheless, the Sailbuoy performed well during this campaign, and results suggests that it is a suitable platform for wave measurements in rather rough sea conditions.
    Keywords: Buoy; BUOY; DATE/TIME; File size; File type; NorthSea_Ekofisk; Uniform resource locator/link to file
    Type: Dataset
    Format: text/tab-separated-values, 3 data points
    Location Call Number Limitation Availability
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  • 5
    Publication Date: 2023-01-13
    Keywords: Conductivity sensor, SEA-BIRD SBE 4; DATE/TIME; DEPTH, water; Ernest Shackleton; ES033; ES033_vmp_004; ES033_vmp_005; ES033_vmp_006; ES033_vmp_007; ES033_vmp_008; ES033_vmp_009; ES033_vmp_010; ES033_vmp_011; ES033_vmp_012; ES033_vmp_013; ES033_vmp_015; ES033_vmp_016; ES033_vmp_017; ES033_vmp_018; ES033_vmp_019; ES033c_vmp_000; ES033c_vmp_002; ES033c_vmp_003; ES033c_vmp_004; ES033c_vmp_006; ES033c_vmp_007; ES033c_vmp_008; ES033c_vmp_009; ES033c_vmp_010; ES033c_vmp_011; ES033c_vmp_012; ES033c_vmp_013; ES033c_vmp_014; ES033c_vmp_015; ES033c_vmp_016; ES033c_vmp_017; ES033c_vmp_018; ES033c_vmp_019; ES033c_vmp_020; ES033c_vmp_021; ES033c_vmp_022; ES033c_vmp_023; ES033c_vmp_024; Event label; LATITUDE; LONGITUDE; MSD; Multi Sensor Device; Pressure, water; Rate of turbulent kinetic energy dissipation; Salinity; Sample elevation; Temperature, water; Temperature sensor, SEA-BIRD SBE 3; Vertical Microstructure Profiler, Rockland Scientific, VMP-2000 SN 009
    Type: Dataset
    Format: text/tab-separated-values, 53577 data points
    Location Call Number Limitation Availability
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  • 6
    Publication Date: 2023-02-20
    Keywords: Acoustic Doppler Current Profiling (LADCP) [lowered with CTD]; Current velocity, east-west; Current velocity, error; Current velocity, north-south; DATE/TIME; DEPTH, water; Ernest Shackleton; ES033; ES033_ctd_002; ES033_ctd_003; ES033_ctd_004; ES033_ctd_005; ES033_ctd_006; ES033_ctd_007; ES033_ctd_008; ES033_ctd_009; ES033_ctd_010; ES033_ctd_011; ES033_ctd_012; ES033_ctd_013; ES033_ctd_014; ES033_ctd_015; ES033_ctd_016; ES033_ctd_017; ES033_ctd_018; ES033_ctd_019; ES033_ctd_020; ES033_ctd_021; ES033_ctd_022; ES033_ctd_023; ES033_ctd_024; ES033_ctd_025; ES033_ctd_026; ES033_ctd_027; ES033_ctd_028; ES033_ctd_029; ES033_ctd_030; ES033_ctd_031; ES033_ctd_032; ES033_ctd_033; ES033_ctd_034; ES033_ctd_035; ES033_ctd_036; ES033_ctd_037; ES033_ctd_038; ES033_ctd_039; ES033_ctd_040; ES033_ctd_041; ES033_ctd_042; ES033_ctd_043; ES033_ctd_044; ES033_ctd_045; ES033_ctd_046; ES033_ctd_047; ES033_ctd_048; ES033_ctd_049; ES033_ctd_050; ES033_ctd_051; ES033_ctd_052; ES033_ctd_053; ES033_ctd_054; ES033_ctd_055; ES033_ctd_056; ES033_ctd_057; ES033_ctd_058; ES033_ctd_059; ES033_ctd_087; ES033_ctd_088; ES033_ctd_089; ES033_ctd_090; ES033_ctd_091; ES033_ctd_092; ES033_ctd_093; ES033_ctd_094; ES033_ctd_095; ES033_ctd_096; ES033_ctd_097; ES033_ctd_098; ES033_ctd_099; ES033_ctd_100; ES033_ctd_101; ES033_ctd_102; ES033_ctd_103; ES033_ctd_104; ES033_ctd_105; ES033_ctd_106; ES033_ctd_107; ES033_ctd_108; ES033_ctd_109; ES033_ctd_110; ES033_ctd_111; ES033_ctd_112; ES033_ctd_113; ES033_ctd_114; ES033_ctd_115; ES033_ctd_116; ES033_ctd_117; ES033_ctd_118; ES033_ctd_119; ES033_ctd_120; ES033_ctd_121; ES033_ctd_122; ES033_ctd_123; ES033_ctd_124; ES033_ctd_125; ES033_ctd_126; ES033_ctd_127; ES033_ctd_128; ES033_ctd_129; ES033_ctd_130; ES033_ctd_131; ES033_ctd_132; ES033_ctd_133; ES033_ctd_134; ES033_ctd_135; ES033_ctd_136; ES033_ctd_137; ES033_ctd_138; ES033_ctd_139; ES033_ctd_140; ES033_ctd_141; ES033_ctd_142; ES033_ctd_143; ES033_ctd_144; ES033_ctd_145; ES033_ctd_146; ES033_ctd_147; ES033_ctd_148; ES033_ctd_149; ES033_ctd_150; ES033_ctd_151; ES033_ctd_152; ES033_ctd_153; ES033_ctd_154; ES033_ctd_155; ES033_ctd_156; ES033_ctd_157; ES033_ctd_158; ES033_ctd_159; ES033_ctd_160; ES033_ctd_161; ES033_ctd_162; ES033_ctd_163; ES033_ctd_164; ES033_ctd_166; Event label; LATITUDE; LONGITUDE; Pressure, water; Sample amount; Sample elevation
    Type: Dataset
    Format: text/tab-separated-values, 236304 data points
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  • 7
    facet.materialart.
    Unknown
    PANGAEA
    In:  Geophysical Institute, University of Bergen
    Publication Date: 2023-03-02
    Keywords: CTD-Acoustic Doppler Current Profiler; CTD-ADCP; DATE/TIME; DEPTH, water; Dissipation rate; Event label; Håkon Mosby; HM2012610; HM2012610_cast_002; HM2012610_cast_003; HM2012610_cast_004; HM2012610_cast_005; HM2012610_cast_006; HM2012610_cast_007; HM2012610_cast_008; HM2012610_cast_009; HM2012610_cast_010; HM2012610_cast_011; HM2012610_cast_012; HM2012610_cast_013; HM2012610_cast_014; HM2012610_cast_015; HM2012610_cast_016; HM2012610_cast_017; HM2012610_cast_018; HM2012610_cast_019; HM2012610_cast_020; HM2012610_cast_021; HM2012610_cast_022; HM2012610_cast_023; HM2012610_cast_024; HM2012610_cast_025; HM2012610_cast_026; HM2012610_cast_027; HM2012610_cast_028; HM2012610_cast_030; HM2012610_cast_031; HM2012610_cast_032; HM2012610_cast_033; HM2012610_cast_034; HM2012610_cast_035; HM2012610_cast_036; HM2012610_cast_037; HM2012610_cast_039; HM2012610_cast_040; HM2012610_cast_041; HM2012610_cast_043; HM2012610_cast_044; HM2012610_cast_045; HM2012610_cast_046; HM2012610_cast_047; HM2012610_cast_048; HM2012610_cast_049; HM2012610_cast_050; HM2012610_cast_051; HM2012610_cast_052; HM2012610_cast_053; HM2012610_cast_054; HM2012610_cast_055; HM2012610_cast_056; HM2012610_cast_057; HM2012610_cast_058; HM2012610_cast_059; HM2012610_cast_060; HM2012610_cast_061; HM2012610_cast_063; HM2012610_cast_064; HM2012610_cast_065; HM2012610_cast_066; HM2012610_cast_067; HM2012610_cast_068; HM2012610_cast_069; HM2012610_cast_070; HM2012610_cast_071; HM2012610_cast_072; HM2012610_cast_073; HM2012610_cast_074; HM2012610_cast_075; HM2012610_cast_076; HM2012610_cast_077; HM2012610_cast_078; HM2012610_cast_079; HM2012610_cast_080; HM2012610_cast_081; HM2012610_cast_082; HM2012610_cast_083; HM2012610_cast_084; HM2012610_cast_085; HM2012610_cast_086; HM2012610_cast_087; HM2012610_cast_088; HM2012610_cast_089; HM2012610_cast_090; HM2012610_cast_091; HM2012610_cast_092; HM2012610_cast_093; HM2012610_cast_094; LATITUDE; LONGITUDE; Pressure, water; Salinity; Sample elevation; Temperature, water; Vertical Microstructure Profiler, Rockland Scientific, VMP-2000 SN 009
    Type: Dataset
    Format: text/tab-separated-values, 165648 data points
    Location Call Number Limitation Availability
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  • 8
    facet.materialart.
    Unknown
    PANGAEA
    In:  Geophysical Institute, University of Bergen
    Publication Date: 2023-09-06
    Keywords: Current velocity, east-west; Current velocity, north-south; DATE/TIME; DEPTH, water; Ernest Shackleton; ES033; Gear identification number; M2_UV; Mooring (long time); MOORY
    Type: Dataset
    Format: text/tab-separated-values, 1353968 data points
    Location Call Number Limitation Availability
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  • 9
    Publication Date: 2023-09-06
    Keywords: Current velocity, east-west; Current velocity, north-south; DATE/TIME; DEPTH, water; FBC2012_S2; Håkon Mosby; HM2012610; MOOR; Mooring; Temperature, water
    Type: Dataset
    Format: text/tab-separated-values, 1162335 data points
    Location Call Number Limitation Availability
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  • 10
    Publication Date: 2023-09-06
    Keywords: 74EE20121210; Acoustic Doppler Current Profiling (ADCP), RDI Sentinel, 300 kHz, SN 8026; Current velocity, east-west; Current velocity, north-south; Current velocity, vertical; DATE/TIME; DEPTH, water; Ernest Shackleton; ES060; ES060_SD-uvw; Mooring (long time); MOORY; Weddell Sea
    Type: Dataset
    Format: text/tab-separated-values, 1963873 data points
    Location Call Number Limitation Availability
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