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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Using Machine Learning With Partial Dependence Analysis to Investigate Coupling Between Soil Moisture and Near‐Surface Temperature
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Using Machine Learning With Partial Dependence Analysis to Investigate Coupling Between Soil Moisture and Near‐Surface Temperature

机译:Using Machine Learning With Partial Dependence Analysis to Investigate Coupling Between Soil Moisture and Near‐Surface Temperature

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Abstract Soil moisture (SM) influences near‐surface air temperature by partitioning downwelling radiation into latent and sensible heat fluxes, through which dry soils generally lead to higher temperatures. The strength of this coupled soil moisture‐temperature (SM‐T) relationship is not spatially uniform, and numerous methods have been developed to assess SM‐T coupling strength across the globe. These methods tend to involve either idealized climate‐model experiments or linear statistical methods which cannot fully capture nonlinear SM‐T coupling. In this study, we propose a nonlinear machine‐learning (ML)‐based approach for analyzing SM‐T coupling and apply this method to various mid‐latitude regions using historical reanalysis datasets. We first train convolutional neural networks (CNNs) to predict daily maximum near‐surface air temperature (TMAX) given daily SM and geopotential height fields. We then use partial dependence analysis to isolate the average sensitivity of each CNN's TMAX prediction to the SM input under daily atmospheric conditions. The resulting SM‐T relationships broadly agree with previous assessments of SM‐T coupling strength. Over many regions, we find nonlinear relationships between the CNN's TMAX prediction and the SM input map. These nonlinearities suggest that the coupled interactions governing SM‐T relationships vary under different SM conditions, but these variations are regionally dependent. We also apply this method to test the influence of SM memory on SM‐T coupling and find that our results are consistent with previous studies. Although our study focuses specifically on local SM‐T coupling, our ML‐based method can be extended to investigate other coupled interactions within the climate system using observed or model‐derived datasets.
机译:摘要土壤水分(SM)的影响列车表面附近的空气温度分区下降辐射到潜在的和明智的通过通常干燥的土壤热通量导致更高的温度。耦合的土壤水分检测温度(SM量T)关系不是空间上统一,许多方法已经开发评估SM T全球耦合强度。理想化方法往往涉及地理气候模型实验或线性统计方法不能完全捕捉非线性SM T耦合。机器学习(ML)基于量的方法分析SM T耦合和应用这种方法不同地理纬度地区中期使用历史再分析数据集。神经网络(cnn)预测每日最大列车表面附近的空气温度(达峰时间)SM和位势高度字段。部分依赖分析隔离平均每个CNN的达峰时间预测的敏感性下SM输入每天的大气条件。广泛的同意之前评估的SM T耦合强度。CNN的最高温度之间的非线性关系预测和SM输入地图。非线性表明耦合交互管理SM T应承担的关系有所不同在不同的SM条件,但这些变化是区域相关的。这种方法适用于测试SM的影响内存SM T耦合和发现我们的结果与以前的研究一致。我们的研究特别关注本地SM T耦合,我们可以扩展到基于ML检测方法调查中的其他耦合相互作用气候系统使用观察或者模型数据集。

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