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Exploring errors in paleoclimate proxy reconstructions using Monte Carlo simulations: paleotemperature from mollusk and coral geochemistry

机译:使用蒙特卡洛模拟探索古气候代用品重建中的误差:软体动物和珊瑚地球化学引起的古温度

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Quantitative reconstructions of the past climate statistics from geochemical coral or mollusk records require quantified error bars in order to properly interpret the amplitude of the climate change and to perform meaningful comparisons with climate model outputs. We introduce here a more precise categorization of reconstruction errors, differentiating the error bar due to the proxy calibration uncertainty from the standard error due to sampling and variability in the proxy formation process. Then, we propose a numerical approach based on Monte Carlo simulations with surrogate proxy-derived climate records. These are produced by perturbing a known time series in a way that mimics the uncertainty sources in the proxy climate reconstruction. A freely available algorithm, MoCo, was designed to be parameterized by the user and to calculate realistic systematic and standard errors of the mean and the variance of the annual temperature, and of the mean and the variance of the temperature seasonality reconstructed from marine accretionary archive geochemistry. In this study, the algorithm is used for sensitivity experiments in a case study to characterize and quantitatively evaluate the sensitivity of systematic and standard errors to sampling size, stochastic uncertainty sources, archive-specific biological limitations, and climate non-stationarity. The results of the experiments yield an illustrative example of the range of variations of the standard error and the systematic error in the reconstruction of climate statistics in the Eastern Tropical Pacific. Thus, we show that the sample size and the climate variability are the main sources of the standard error. The experiments allowed the identification and estimation of systematic bias that would not otherwise be detected because of limited modern datasets. Our study demonstrates that numerical simulations based on Monte Carlo analyses are a simple and powerful approach to improve the understanding of the proxy records. We show that the standard error for the climate statistics linearly increases with the climate variability, which means that the accuracy of the error estimated by MoCo is limited by the climate non-stationarity.
机译:从地球化学珊瑚或软体动物记录对过去的气候统计数据进行定量重建需要量化误差棒,以便正确解释气候变化的幅度并与气候模型输出进行有意义的比较。我们在这里介绍重构误差的更精确分类,将由于代理校准不确定性导致的误差线与由于代理形成过程中的采样和可变性导致的标准误差区分开。然后,我们提出了一种基于蒙特卡罗模拟的数值方法,并采用了代理替代气候记录。这些是通过模仿模拟气候重建过程中不确定性源的方式扰乱已知时间序列而产生的。用户可以免费使用MoCo算法进行参数化,并计算实际的系统误差和标准误差,这些误差包括年平均温度和方差,以及从海洋增生档案重建的温度季节性平均值和方差。地球化学。在本研究中,该算法用于案例研究中的敏感性实验,以表征和定量评估系统误差和标准误差对采样大小,随机不确定性来源,特定于档案的生物学限制和气候不稳定的敏感性。实验结果给出了东部热带太平洋地区气候统计重建中标准误差和系统误差变化范围的示例。因此,我们表明样本量和气候变异性是标准误差的主要来源。实验允许识别和估计系统偏差,否则由于有限的现代数据集而无法检测到系统偏差。我们的研究表明,基于蒙特卡洛分析的数值模拟是一种简单而强大的方法,可以提高对代理记录的理解。我们表明,气候统计的标准误差随气候变异性线性增加,这意味着MoCo估计的误差的准确性受到气候不稳定的限制。

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