five

Argo float vertical profile R4903252_051

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gcoos5.geos.tamu.edu2020-12-22 更新2025-03-26 收录
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These data are ocean profile data measured by profiling Argo S2A floats at a specific latitude, longitude, and date nominally from the surface to 2000 meters depth. Pressure, in situ temperature (ITS-90), and practical salinity are provided at 1-m increments through the water column. Argo data from Gulf of Mexico (GOM) LC1 (9 floats) and LC2 (12 floats) were delayed mode quality controlled and submitted to Global Data Assembly Centers (GDACs) in May 2020. All available profiles are planned to be revisited and evaluated in early 2021. Float no. 4903233 started showing drift in salinity at profile no. 77, and the salinity data will be carefully examined with a new adjustment in early 2021. _NCProperties=version=2,netcdf=4.6.3,hdf5=1.10.4 cdm_altitude_proxy=PRES cdm_data_type=Profile cdm_profile_variables=profile comment=free text contributor_email=devops@rpsgroup.com contributor_name=RPS contributor_role=editor contributor_role_vocabulary=https://vocab.nerc.ac.uk/collection/G04/current/ contributor_url=https://www.rpsgroup.com/ Conventions=CF-1.7, ACDD-1.3, IOOS-1.2, Argo-3.2, COARDS date_metadata_modified=2020-12-22T15:54:25Z Easternmost_Easting=-85.76396 featureType=Profile geospatial_bounds=POINT (-85.76396 24.72859) geospatial_bounds_crs=EPSG:4326 geospatial_lat_max=24.72859 geospatial_lat_min=24.72859 geospatial_lat_units=degrees_north geospatial_lon_max=-85.76396 geospatial_lon_min=-85.76396 geospatial_lon_units=degrees_east history=2020-06-02T22:01:08Z creation id=R4903252_051 infoUrl=http://www.argodatamgt.org/Documentation institution=GCOOS instrument=Argo instrument_vocabulary=GCMD Earth Science Keywords. Version 5.3.3 keywords_vocabulary=GCMD Science Keywords naming_authority=edu.tamucc.gulfhub Northernmost_Northing=24.72859 note_CHAR_variables=RPS METADATA ENHANCEMENT NOTE Variables of data type 'CHAR' have been altered by the xarray and netCDF4-python libraries to contain an extra dimension (often denoted as 'string1'). This is due to an underlying issue in the libraries: https://github.com/pydata/xarray/issues/1977. Upon examination, one will find the data has not been altered but only changed shape. We realize this is sub-optimal and apologize for any inconveniences this may cause. note_FillValue=RPS METADATA ENHANCEMENT NOTE Many variables in this dataset are of type 'char' and have a '_FillValue' attribute which is interpreted through NumPy as 'b', an empty byte string. This causes serialization issues. As a result, all variables of type 'char' with '_FillValue = b' have had the _FillValue attribute removed to avoid serialization conflicts. However, no data has been changed, so the _FillValue is still "b' '". platform=subsurface_float platform_name=Argo Float platform_vocabulary=IOOS Platform Vocabulary processing_level=Argo data are received via satellite transmission, decoded and assembled at national DACs. These DACs apply a set of automatic quality tests (RTQC) to the data, and quality flags are assigned accordingly. In the delayed-mode process (DMQC), data are subjected to visual examination and are re-flagged where necessary. For the float data affected by sensor drift, statistical tools and climatological comparisons are used to adjust the data for sensor drift when needed. For each float that has been processed in delayed-mode, the OWC method (Owens and Wong, 2009; Cabanes et al., 2016) is run with four different sets of spatial and temporal decorrelation scales and the latest available reference dataset. If the salinity adjustments obtained from the four runs all differ significantly from the existing adjustment, then the salinity data from the float are re-examined and a new adjustment is suggested if necessary. The usual practice is to examine the profiles in delayed-mode initially about 12 months after they are collected, and then revisit several times as more data from the floats are obtained (see details in Wong et al., 2020). program=Understanding Gulf Ocean Systems (UGOS) project=National Academy of Science Understanding Gulf Ocean Systems 'LC-Floats - Near Real-time Hydrography and Deep Velocity in the Loop Current System using Autonomous Profilers' Program references=http://www.argodatamgt.org/Documentation sea_name=Gulf of Mexico source=Argo float sourceUrl=(local files) Southernmost_Northing=24.72859 standard_name_vocabulary=CF Standard Name Table v67 subsetVariables=CYCLE_NUMBER, DIRECTION, DATA_MODE, time, JULD_QC, JULD_LOCATION, latitude, longitude, POSITION_QC, CONFIG_MISSION_NUMBER, PROFILE_PRES_QC, PROFILE_TEMP_QC, PROFILE_PSAL_QC time_coverage_duration=P0000-00-00T00:00:00 time_coverage_end=2020-05-28T19:30:07Z time_coverage_resolution=P0000-00-00T00:00:00 time_coverage_start=2020-05-28T19:30:07Z user_manual_version=3.2 Westernmost_Easting=-85.76396

本数据集收录了由 Argo S2A 浮标在特定纬度、经度和日期下从海面至 2000 米深度的海洋剖面数据。数据以 1 米间隔提供了压力、现场温度(ITS-90)和实际盐度。墨西哥湾(GOM)LC1(9个浮标)和LC2(12个浮标)的 Argo 数据于 2020 年 5 月提交至全球数据汇编中心(GDACs),并经过延迟模式质量控制。所有可用的剖面计划于 2021 年初进行回顾和评估。浮标编号 4903233 在剖面编号 77 时开始显示盐度漂移,盐度数据将在 2021 年初进行仔细检查并作出新的调整。 数据集属性: - _NCProperties: 版本=2, netCDF=4.6.3, HDF5=1.10.4 - cdm_altitude_proxy: PRES - cdm_data_type: Profile - cdm_profile_variables: profile - comment: 自由文本 - contributor_email: devops@rpsgroup.com - contributor_name: RPS - contributor_role: editor - contributor_role_vocabulary: https://vocab.nerc.ac.uk/collection/G04/current/ - contributor_url: https://www.rpsgroup.com/ - Conventions: CF-1.7, ACDD-1.3, IOOS-1.2, Argo-3.2, COARDS - date_metadata_modified: 2020-12-22T15:54:25Z - Easternmost_Easting: -85.76396 - featureType: Profile - geospatial_bounds: POINT (-85.76396 24.72859) - geospatial_bounds_crs: EPSG:4326 - geospatial_lat_max: 24.72859 - geospatial_lat_min: 24.72859 - geospatial_lat_units: degrees_north - geospatial_lon_max: -85.76396 - geospatial_lon_min: -85.76396 - geospatial_lon_units: degrees_east - history: 2020-06-02T22:01:08Z creation - id: R4903252_051 - infoUrl: http://www.argodatamgt.org/Documentation - institution: GCOOS - instrument: Argo - instrument_vocabulary: GCMD 地球科学关键词. 版本 5.3.3 - keywords_vocabulary: GCMD 科学关键词 - naming_authority: edu.tamucc.gulfhub - Northernmost_Northing: 24.72859 - note_CHAR_variables: RPS 元数据增强注释 - Variables of data type 'CHAR' have been altered by the xarray and netCDF4-python libraries to contain an extra dimension (often denoted as 'string1'). This is due to an underlying issue in the libraries: https://github.com/pydata/xarray/issues/1977. Upon examination, one will find the data has not been altered but only changed shape. We realize this is sub-optimal and apologize for any inconveniences this may cause. - note_FillValue: RPS 元数据增强注释 - Many variables in this dataset are of type 'char' and have a '_FillValue' attribute which is interpreted through NumPy as 'b', an empty byte string. This causes serialization issues. As a result, all variables of type 'char' with '_FillValue = b' have had the _FillValue attribute removed to avoid serialization conflicts. However, no data has been changed, so the _FillValue is still "b' ''". - platform: subsurface_float - platform_name: Argo Float - platform_vocabulary: IOOS 平台词汇表 - processing_level: Argo 数据通过卫星传输接收,在国家 DACs 解码和汇编。这些 DACs 对数据应用一系列自动质量测试(RTQC),并相应地分配质量标志。在延迟模式处理(DMQC)中,数据受到视觉检查,并在必要时重新标记。对于受传感器漂移影响的浮标数据,当需要时,使用统计工具和气候比较来调整数据以补偿传感器漂移。对于每个经过延迟模式处理的浮标,使用 OWC 方法(Owens 和 Wong,2009;Cabanes 等,2016)运行四个不同的空间和时间去相关尺度以及最新的可用参考数据集。如果从四个运行中获得的盐度调整与现有调整有显著差异,则重新检查浮标的盐度数据,并在必要时提出新的调整。通常的做法是在收集后大约 12 个月后初步检查延迟模式中的剖面,然后随着从浮标获得更多数据而多次回顾(详见 Wong 等,2020 年)。 - program: 理解墨西哥湾海洋系统(UGOS) - project: 国家科学院理解墨西哥湾海洋系统 'LC-Floats - 使用自主剖面仪的近实时水文和环流的近海底速度' 项目 - references: http://www.argodatamgt.org/Documentation - sea_name: 墨西哥湾 - source: Argo 浮标 - sourceUrl: (本地文件) - Southernmost_Northing: 24.72859 - standard_name_vocabulary: CF 标准名称表 v67 - subsetVariables: CYCLE_NUMBER, DIRECTION, DATA_MODE, time, JULD_QC, JULD_LOCATION, latitude, longitude, POSITION_QC, CONFIG_MISSION_NUMBER, PROFILE_PRES_QC, PROFILE_TEMP_QC, PROFILE_PSAL_QC - time_coverage_duration: P0000-00-00T00:00:00 - time_coverage_end: 2020-05-28T19:30:07Z - time_coverage_resolution: P0000-00-00T00:00:00 - time_coverage_start: 2020-05-28T19:30:07Z - user_manual_version: 3.2 - Westernmost_Easting: -85.76396
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