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Combining shipboard in situ data with satellite data to estimate daily primary production in a coastal upwelling system: A data mining approach

机译:将船上现场数据与卫星数据相结合,以估算沿海上升流系统中的每日主要产量:一种数据挖掘方法

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This study classifies coastal time-series data according to subsurface phytoplankton vertical distributions to be able to capture the variability of primary production at fine spatial and temporal scales. Our method uses algorithms developed to extract patterns in large datasets of time-sequential data. We use short time-series of QuikSCAT surface winds, MODIS sea surface temperature and surface chlorophyll a associated with each in situ chlorophyll a profile, as well as the season and bottom depth of the in situ station to discover patterns that can be used to classify new data into 12 profile classes. We first fill in missing MODIS data using a conditional random field model so that cloudy days are not excluded. The most likely profile is then predicted using all the available data. We apply our method to the St Helena Bay area, a region within the productive Benguela Current upwelling system. A profile is predicted for each day and each pixel of 4 km resolution satellite image for 16 consecutive months. Each profile is used in a broad-band photosynthesis model to produce a daily three-dimensional estimate of gross primary production. An average production rate of 3.2 g C m(-2) day(-1) was obtained for the area, which shows very good agreement with other estimates from the region. The results show persistent high productivity near the surface throughout the year with the exception of the winter months. Deeper in the water column productivity is more seasonal. The 16 month time-series highlights the interannual, seasonal and daily variability of the system. By linking physical processes to the distribution of phytoplankton at appropriate spatio-temporal scales, we can now more rigorously investigate bottom-up driven impacts on ecosystems characterised by short-term variability. (C) 2015 Elsevier Ltd. All rights reserved.
机译:这项研究根据海底浮游植物的垂直分布对沿海时间序列数据进行分类,以便能够在精细的时空尺度上捕捉初级生产的变化。我们的方法使用开发的算法来提取时序数据的大型数据集中的模式。我们使用QuikSCAT地表风的短时间序列,MODIS海表温度和与每个原位叶绿素a分布相关的地表叶绿素a以及原地站的季节和底部深度来发现可用于分类的模式新数据分为12个配置文件类别。我们首先使用条件随机场模型填充丢失的MODIS数据,以便不排除阴天。然后,使用所有可用数据预测最可能的配置文件。我们将我们的方法应用到圣赫勒拿湾地区,该地区是本格拉水流上升流系统中的一个区域。可以连续16个月预测每天和4 km分辨率卫星图像的每个像素的轮廓。每个配置文件都用于宽带光合作用模型中,以产生每日一次总生产量的三维估算。该地区的平均生产率为3.2 g C m(-2)day(-1),与该地区的其他估计值非常吻合。结果表明,除冬季月份外,全年地面附近的生产力一直很高。水柱的生产率越高,季节性越强。 16个月的时间序列突出了系统的年际,季节和每日可变性。通过在适当的时空尺度上将物理过程与浮游植物的分布联系起来,我们现在可以更严格地研究自下而上驱动的对以短期可变性为特征的生态系统的影响。 (C)2015 Elsevier Ltd.保留所有权利。

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  • 来源
    《Progress in Oceanography》 |2015年第novaptaa期|58-76|共19页
  • 作者单位

    Univ Cape Town, Dept Oceanog, ZA-7701 Rondebosch, South Africa|Univ Cape Town, Marine Res Inst, ZA-7701 Rondebosch, South Africa;

    Univ Cape Town, Dept Oceanog, ZA-7701 Rondebosch, South Africa|Univ Cape Town, Marine Res Inst, ZA-7701 Rondebosch, South Africa;

    Univ Cape Town, Dept Oceanog, ZA-7701 Rondebosch, South Africa|Univ Cape Town, Nansen Tutu Ctr, ZA-7701 Rondebosch, South Africa;

    Univ Cape Town, Marine Res Inst, ZA-7701 Rondebosch, South Africa|Univ Cape Town, Dept Biol Sci, ZA-7701 Rondebosch, South Africa;

    Agents Res Lab, ZA-7700 Mowbray, South Africa;

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  • 正文语种 eng
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  • 入库时间 2022-08-18 03:34:18

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