首页> 外文期刊>Quaternary Science Reviews: The International Multidisciplinary Review Journal >Reconstruction of sea-surface temperatures from assemblages of planktonic foraminifera: multi-technique approach based on geographically constrained calibration data sets and its application to glacial Atlantic and Pacific Oceans
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Reconstruction of sea-surface temperatures from assemblages of planktonic foraminifera: multi-technique approach based on geographically constrained calibration data sets and its application to glacial Atlantic and Pacific Oceans

机译:从浮游有孔虫的组合重建海面温度:基于地理约束的校准数据集的多种技术方法及其在冰川大西洋和太平洋中的应用

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We present a conceptual framework for a new approach to environmental calibration of planktonic foraminifer census counts. This approach is based on simultaneous application of a variety of transfer function techniques, which are trained on geographically constrained calibration data sets. It serves to minimise bias associated with the presence of cryptic species of planktonic foraminifera and provides an objective tool for assessing reliability of environmental estimates in fossil samples, allowing identification of adverse effects of no-analog faunas and technique-specific bias. We have compiled new calibration data sets for the North (N = 862) and South (N = 32 1) Atlantic and the Pacific Ocean (N = 1111). We show evidence that these data sets offer adequate coverage of the Sea-Surface Temperature (SST) and faunal variation range and that they are not affected by the presence of pre-Holocene samples and/or calcite dissolution. We have applied four transfer function techniques, including Artificial Neural Networks, Revised Analog Method and SIMMAX (with and without distance weighting) on faunal counts in a Last Glacial Maximum (LGM) data set for the Atlantic Ocean (748 samples in 167 cores; based on the GLAMAP-2000 compilation) and a new data set for the Pacific Ocean (265 samples in 82 cores) and show that three of these techniques provide adequate degree of independence for the advantage of a multi-technique approach to be realised. The application of our new approach to the glacial Pacific lends support to the contraction and perhaps even a cooling of the Western Pacific Warm Pool and a substantial (> 3 degrees C) cooling of the eastern equatorial Pacific and the eastern boundary currents. Our results do not provide conclusive evidence for LGM warming anywhere in the Pacific. The Atlantic reconstruction shows a number of robust patterns, including substantial cooling of eastern boundary currents with considerable advection of subpolar waters into the Benguela Current, a cooling of the equatorial Atlantic by similar to 5 degrees C, and steep SST gradients in the mid-latitude North Atlantic. The transfer function techniques generally agree that subtropical gyre areas in both hemispheres did not change significantly since the LGM, although the ANN technique produced glacial SST in the southern gyre 1-2 degrees C warmer than today. We have revisited the issue of sea-ice occurrence in the Nordic Seas and using the distribution of subpolar species of planktonic foraminifera in glacial samples, we conclude that the Norwegian Sea must have been ice-free during the summer. (c) 2004 Elsevier Ltd. All rights reserved.
机译:我们提出了一种对浮游有孔虫普查计数进行环境校准的新方法的概念框架。该方法基于同时应用各种传递函数技术,这些函数在地理约束的校准数据集上进行训练。它可以最大程度地减少与浮游有孔虫隐性物种相关的偏见,并提供一种客观的工具来评估化石样品中环境估计值的可靠性,从而可以识别无模拟动物群和特定技术偏见的不利影响。我们为北(N = 862)和南(N = 32 1)大西洋和太平洋(N = 1111)编制了新的校准数据集。我们显示的证据表明,这些数据集提供了足够的海面温度(SST)和动物区系变化范围的覆盖,并且它们不受完整全新世样品和/或方解石溶解的影响。我们在大西洋的最后冰川最大(LGM)数据集中对动物群数应用了四种传递函数技术,包括人工神经网络,修正的模拟方法和SIMMAX(带或不带距离加权)(基于167个核的748个样本;基于(GLAMAP-2000汇编)和一个新的太平洋数据集(82个核心中的265个样本),并显示出其中的三种技术提供了足够的独立性,从而可以实现多种技术。我们对冰川太平洋的新方法的应用为西太平洋暖池的收缩甚至冷却提供了支持,甚至为赤道东部太平洋和东部边界洋流的显着(> 3摄氏度)冷却提供了支持。我们的结果并未为太平洋任何地方的LGM变暖提供确凿的证据。大西洋的重建显示出许多稳健的模式,包括东部边界流的大量冷却以及亚极水向本格拉流的平流的平流,赤道大西洋的冷却接近5摄氏度,中纬度的海温梯度陡峭北大西洋。传递函数技术通常都认为,自LGM以来,两个半球的亚热带回旋区并没有发生明显变化,尽管ANN技术在南部回旋区产生的冰川SST比今天高1-2摄氏度。我们重新审视了北欧海中冰的发生问题,并利用冰川样品中浮游有孔虫亚极种的分布,得出结论,挪威海在夏季一定是无冰的。 (c)2004 Elsevier Ltd.保留所有权利。

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