首页> 外文期刊>Palaeogeography, Palaeoclimatology, Palaeoecology: An International Journal for the Geo-Sciences >Artificial neural networks reveal a high-resolution climatic signal in leaf physiognomy
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Artificial neural networks reveal a high-resolution climatic signal in leaf physiognomy

机译:人工神经网络揭示了叶片相貌上的高分辨率气候信号

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The relationship linking leaf physiognomy and climate has long been used in paleoclimatic reconstructions, but current models lose precision when worldwide data sets are considered because of the broader range of physiognomies that occur under the wider range of climate types represented. Our aim is to improve the predictive power of leaf physiognomy to yield climate signals, and here we explore the use of an algorithm based on the general regression neural network (GRNN), which we refer to as Climate Leaf Analysis with Neural Networks (CLANN). We then test our algorithm on Climate Leaf Analysis Multivariate Program (CLAMP) data sets and digital leaf physiognomy (DLP) data sets, and compare our results with those obtained from other computation methods. We explore the contribution of different physiognomic characters and test fossil sites from North America. The CLANN algorithm introduced here gives high predictive precision for all tested climatic parameters in both data sets. For the CLAMP data set neural network analysis improves the predictive capability as measured by R-2, to 0.86 for MAT on a worldwide basis, compared to 0.71 using the vector-based approach used in the standard analysis. Such a high resolution is attained due to the nonlinearity of the method, but at the cost of being susceptible to 'noise' in the calibration data. Tests show that the predictions are repeatable, and robust to information loss and applicable to fossil leaf data. The CLANN neural network algorithm used here confirms, and better resolves, the global leaf form-climate relationship, opening new approaches to paleoclimatic reconstruction and understanding the evolution of complex leaf function. (C) 2015 Elsevier B.V. All rights reserved.
机译:长期以来,将叶片地貌和气候之间的关系用于古气候重建中,但是当考虑全球数据集时,由于在所代表的更广泛的气候类型下发生的地貌范围更广,当前模型失去了准确性。我们的目标是提高叶片地貌预测产生气候信号的预测能力,在这里我们探索基于通用回归神经网络(GRNN)的算法的使用,该算法被称为神经网络的气候叶片分析(CLANN) 。然后,我们在气候叶分析多元程序(CLAMP)数据集和数字叶相貌(DLP)数据集上测试我们的算法,并将我们的结果与从其他计算方法获得的结果进行比较。我们探索了来自北美的不同地貌特征的贡献,并测试了化石位点。此处介绍的CLANN算法为两个数据集中的所有已测试气候参数提供了较高的预测精度。对于CLAMP数据集,神经网络分析将R-2测得的预测能力提高到了全球MAT的0.86,而标准分析中使用基于矢量的方法则为0.71。由于该方法的非线性,因此获得了如此高的分辨率,但代价是易受校准数据中“噪声”的影响。测试表明,这些预测是可重复的,并且对信息丢失具有鲁棒性,并且适用于化石叶子数据。这里使用的CLANN神经网络算法确认并更好地解决了全球叶片形态与气候之间的关系,为古气候重建开辟了新途径,并了解了复杂叶片功能的演变。 (C)2015 Elsevier B.V.保留所有权利。

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