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Regional chlorophyll a algorithms in the Arctic Ocean and their effect on satellite-derived primary production estimates

机译:北冰洋的区域叶绿素a算法及其对卫星衍生的初级产量估算的影响

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The Arctic is warming at approximately twice the global rate in response to anthropogenic climate change, resulting in disappearing sea ice, increased open water area, and a longer growing season (IPCC, 2013). This loss of sea ice has resulted in a 30% increase in annual net primary production (NPP) by Arctic Ocean phytoplankton between 1998 and 2012 (Arrigo and van Dijken, 2015). To quantify NPP, many algorithms require input of chlorophyll a (Chl a) concentration, which serves as a biomass proxy for phytoplankton. While satellites provide temporally and spatially extensive data, including Chl a, the standard global ocean color algorithms are prone to errors in Arctic Ocean waters due to higher than average phytoplankton pigment-packaging and chromophoric dissolved organic matter (CDOM) concentrations. Here, we evaluate retrievals of Chl a using existing ocean color algorithms, test and develop a new empirical ocean color algorithm for use in the Chukchi Sea, and evaluate the effect of using different satellite Chl a products as input to an NPP algorithm. Our results show that in the Chukchi Sea, Chl a was overestimated by the global algorithm (MODIS OC3Mv6) at concentrations lower than 0.9 mg m(-3) because of contamination by CDOM absorption, but underestimated at higher concentrations because of pigment packaging. Only within the in situ Chl a range of 0.6-2 mg a m-3 was the satellite retrieval error by the OC3Mv6 algorithm below the ocean color community goal of < 35%. Using coincident in situ Chl a concentrations and optical data, a new linear empirical algorithm is developed (OC3L) that yields the lowest statistical error when estimating Chl a in the Chukchi Sea, compared to existing ocean color algorithms (OC3Mv6, OC4L, OC4P). When we estimated regional NPP using different Chl a satellite products as input, three distinct bio-optical provinces within the Arctic Ocean emerged. These provinces correspond to the inflow shelves, interior shelves, and outflow shelves + deep basin as defined by Carmack et al. (2006). Eleven sub-regions within the Arctic Ocean were grouped into each of these three provinces based on their mean value for R, the ratio of blue to green remote sensing reflectance (R-Rs). Our results suggest that three algorithms tuned to each of the three bio-optical provinces may be sufficient to capture the bio-optical heterogeneity within the Arctic Ocean. Currently, only within the inflow shelf province do we feel confident that Chl a and NPP can be accurately estimated by satellite using the OC3L algorithm. The interior and outflow shelf + basin provinces require development of ocean color algorithms specific to their respective bio-optical conditions. (C) 2016 Elsevier Ltd. All rights reserved.
机译:响应人为的气候变化,北极的变暖速度约为全球的两倍,导致海冰消失,开放水域面积增加以及生长期延长(IPCC,2013)。海冰的这种损失使北冰洋的浮游植物在1998年至2012年之间的年度净初级生产力(NPP)增长了30%(Arrigo和van Dijken,2015年)。为了量化NPP,许多算法都需要输入叶绿素a(Chl a)浓度,以作为浮游植物的生物量替代物。尽管卫星提供了包括Chla在内的时空数据,但由于浮游植物色素堆积和发色溶解性有机物(CDOM)浓度高于平均水平,标准的全球海洋颜色算法在北冰洋水域中容易出错。在这里,我们使用现有的海洋颜色算法评估Chla的取回,测试和开发在楚科奇海使用的新的经验海洋颜色算法,并评估使用不同卫星Chla产品作为NPP算法输入的效果。我们的结果表明,在楚科奇海中,由于CDOM吸收污染,在低于0.9 mg m(-3)的浓度下,Chl a被全球算法(MODIS OC3Mv6)高估了,但在较高的浓度下,由于色素包装,低估了Chla。仅在原位Chl范围为0.6-2 mg a m-3的范围内,OC3Mv6算法的卫星检索误差才低于海洋颜色共同体目标<35%。与现有海洋颜色算法(OC3Mv6,OC4L,OC4P)相比,使用一致的原位Chla浓度和光学数据,开发了一种新的线性经验算法(OC3L),在估算楚科奇海的Chla时,其统计误差最低。当我们使用不同的Chl卫星产品作为输入估算区域NPP时,出现了北冰洋内三个不同的生物光学省。这些省份对应于Carmack等人定义的流入层架,内部层架和流出层架+深盆。 (2006)。根据北冰洋的11个子区域的平均值R(蓝色与绿色遥感反射率(R-Rs)之比),将其分为三个省。我们的结果表明,针对三个生物光学省份中的每一个进行调整的三种算法可能足以捕获北冰洋内的生物光学异质性。目前,只有在流入陆架省份内,我们才有信心可以使用OC3L算法通过卫星准确估算Chla和NPP。内陆和外流大陆架+盆地省份需要开发针对其各自生物光学条件的海洋颜色算法。 (C)2016 Elsevier Ltd.保留所有权利。

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