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首页> 外文期刊>Journal of Advances in Modeling Earth Systems >An Artificial Neural Networks‐Based Tree Ring Width Proxy System Model for Paleoclimate Data Assimilation
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An Artificial Neural Networks‐Based Tree Ring Width Proxy System Model for Paleoclimate Data Assimilation

机译:基于人工神经网络的树轮宽度代理系统模型用于古气候数据同化

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Constructing suitable tree ring width (TRW) proxy system models (PSMs) is an emerging research focus in paleoclimate data assimilation (PDA). Currently, however, it is unknown as to which TRW PSMs are optimal for practical PDA applications. This study proposes an artificial neural networks (ANN)‐based TRW PSM and compares its performance with those of existing TRW PSMs, including linear univariate model, linear multivariate model, and physically based VS‐Lite model. The results show that ANN‐based TRW PSM is more suitable for practical PDA applications than other three TRW PSMs in terms of performance and universality. Overall, the performances of the four TRW PSMs in PDA can be ranked as follows (from best to worst): ANN, linear multivariate model, linear univariate model, and physically based VS‐Lite model. In addition, the results of our study not only indicate that the ANN model is a really effective tool for constructing TRW PSM in practical PDA applications but also imply that the ANN model has the potential to provide new insights into the construction of other types of PSMs (e.g., speleothem δ 18 O PSM) when physics of the climate‐proxy relationships cannot be described fully in advance.
机译:构造合适的年轮宽度(TRW)代理系统模型(PSM)是古气候数据同化(PDA)的新兴研究重点。但是,目前尚不清楚哪种TRW PSM最适合实际的PDA应用。本研究提出了一种基于人工神经网络(ANN)的TRW PSM,并将其性能与现有TRW PSM的性能进行了比较,包括线性单变量模型,线性多元模型和基于物理的VS-Lite模型。结果表明,就性能和通用性而言,基于ANN的TRW PSM比其他三个TRW PSM更适合实际的PDA应用。总体而言,可以将PDA中四个TRW PSM的性能排名如下(从最佳到最差):ANN,线性多元模型,线性单变量模型和基于物理的VS-Lite模型。此外,我们的研究结果不仅表明ANN模型是在实际PDA应用中构建TRW PSM的真正有效工具,而且还暗示ANN模型有可能为其他类型的PSM的构建提供新的见解。 (例如speleothemδ18 O PSM)无法提前完全描述气候代理关系的物理学。

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