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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Sampling biases in MODIS and SeaWiFS ocean chlorophyll data
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Sampling biases in MODIS and SeaWiFS ocean chlorophyll data

机译:MODIS和SeaWiFS海洋叶绿素数据中的抽样偏差

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Although modern ocean color sensors, such as MODIS and SeaWiFS, are often considered global missions, in reality it takes many days, even months, to sample the ocean surface enough to provide complete global coverage. The irregular temporal sampling of ocean color sensors can produce biases in monthly and annual mean chlorophyll estimates. We quantified the biases due to sampling using data assimilation to create a "truth field", which we then sub-sampled using the observational patterns of MODIS and SeaWiFS. Monthly and annual mean chlorophyll estimates from these sub-sampled, incomplete daily fields were constructed and compared to monthly and annual means from the complete daily fields of the assimilation model, at a spatial resolution of 1.25 degrees longitude by 0.67 degrees latitude. The results showed that global annual mean biases were positive, reaching nearly 8% (MODIS) and > 5% (SeaWiFS). For perspective the maximum interannual variability in the SeaWiFS chlorophyll record was about 3%. Annual mean sampling biases were low (< 3%) in the mid-latitudes (between -40 degrees and 40). Low interannual variability in the global annual mean sampling biases suggested that global scale trend analyses were valid. High latitude biases were much higher than the global annual means, up to 20% as a basin annual mean, and over 80% in some months. This was the result of the high solar zenith angle exclusion in the processing algorithms. Only data where the solar angle is < 75 degrees are permitted, in contrast to the assimilation which samples regularly over the entire area and month. High solar zenith angles do not facilitate phytoplankton photosynthesis and low chlorophyll concentrations occurring here are missed by the data sets. Ocean color sensors selectively sample in locations and times of favorable phytoplankton growth, producing overestimates of chlorophyll. The biases derived from lack of sampling in the high latitudes varied monthly, leading to artifacts in the apparent seasonal cycle from ocean color sensors. A false secondary peak in chlorophyll occurred in May-August, which resulted from lack of sampling in the Antarctic. Persistent clouds, characteristic in the North Pacific, also produced overestimates, again by selectively sampling only the high growth periods. In contrast, areas characterized by thick aerosols showed chlorophyll underestimates to nearly -30% in basin monthly means. This was the result of selective sampling in lower aerosol thickness periods, which corresponded with lower phytoplankton growth periods. A combination of MODIS and SeaWiFS sampling was most effective at reducing mid-latitude biases due to inter-orbit gaps, sun glint, and sensor tilt changes. But these biases were low using a single sensor, suggesting multiple sensors had little effect in reducing global and regional monthly and annual mean biases. Ocean color data are an invaluable source of information about global biological processes. However, these results suggest that sampling errors need to be considered in applications involving global and regional mean chlorophyll biomasses as well as seasonal variability and regional trend analysis. (c) 2007 Elsevier Inc. All rights reserved.
机译:尽管现代海洋颜色传感器(例如MODIS和SeaWiFS)通常被认为是全球任务,但实际上需要花费数天甚至数月的时间才能对海面进行足够的采样以提供完整的全球覆盖范围。海洋颜色传感器的不规则时间采样会在每月和每年的平均叶绿素估计中产生偏差。我们使用数据同化来创建“真场”,量化了由于采样导致的偏差,然后使用MODIS和SeaWiFS的观测模式对其进行了二次采样。构造了这些次采样的不完整日域的月度和年度平均叶绿素估计值,并将其与同化模型的完整日域的月度和年度平均值进行了比较,其空间分辨率为经度1.25度,纬度0.67度。结果表明,全球年度平均偏差为正,达到近8%(MODIS)和> 5%(SeaWiFS)。从角度来看,SeaWiFS叶绿素记录中的最大年际变化约为3%。在中纬度(-40度到40度)之间,年平均采样偏差较低(<3%)。全球年度平均抽样偏差的年际变化低,表明全球规模趋势分析是有效的。高纬度偏倚远高于全球年均值,流域年均值高达20%,在某些月份中超过80%。这是处理算法中高太阳天顶角排除的结果。与日照角度小于75度的数据相比,仅允许使用该数据,而同化是在整个区域和整个月定期进行采样。高太阳天顶角不利于浮游植物的光合作用,数据集忽略了此处发生的低叶绿素浓度。海洋颜色传感器在有利的浮游植物生长的位置和时间中选择性地采样,从而导致叶绿素的高估。由于高纬度地区缺乏采样而产生的偏差每月都在变化,从而导致海洋颜色传感器在明显的季节性周期中产生伪影。叶绿素的假二级峰发生在五月至八月,这是由于南极缺乏采样造成的。通过有选择地仅对高生长期进行采样,北太平洋地区特有的持续云也造成了高估。相比之下,以浓厚的气溶胶为特征的地区在盆地平均月度显示叶绿素低估了将近-30%。这是在较低的气溶胶厚度时期进行选择性采样的结果,这与较低的浮游植物生长时期相对应。 MODIS和SeaWiFS采样的组合最有效地减少了由于轨道间隙,太阳闪烁和传感器倾斜变化而引起的中纬度偏差。但是使用单个传感器时这些偏差很小,表明使用多个传感器对减少全球和区域月度和年度平均偏差几乎没有影响。海洋颜色数据是有关全球生物过程的宝贵信息来源。但是,这些结果表明,在涉及全球和区域平均叶绿素生物量以及季节性变化和区域趋势分析的应用中,需要考虑采样误差。 (c)2007 Elsevier Inc.保留所有权利。

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