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新兴研究者系列:使用机器学习预测欧洲土壤中硫和硒的损失:呼吁审慎地进行模型检验和选择。

Emerging investigator series: predicted losses of sulfur and selenium in european soils using machine learning: a call for prudent model interrogation and selection.

机构信息

Department of Biological & Ecological Engineering, Oregon State University, Corvallis, Oregon, 97331, USA.

School of Biological, Earth and Environmental Sciences, University College Cork, Cork, Ireland.

出版信息

Environ Sci Process Impacts. 2024 Sep 18;26(9):1503-1515. doi: 10.1039/d4em00338a.

Abstract

Reductions in sulfur (S) atmospheric deposition in recent decades have been attributed to S deficiencies in crops. Similarly, global soil selenium (Se) concentrations were predicted to drop, particularly in Europe, due to increases in leaching attributed to increases in aridity. Given its international importance in agriculture, reductions of essential elements, including S and Se, in European soils could have important impacts on nutrition and human health. Our objectives were to model current soil S and Se levels in Europe and predict concentration changes for the 21st century. We interrogated four machine-learning (ML) techniques, but after critical evaluation, only outputs for linear support vector regression (Lin-SVR) models for S and Se and the multilayer perceptron model (MLP) for Se were consistent with known mechanisms reported in literature. Other models exhibited overfitting even when differences in training and testing performance were low or non-existent. Furthermore, our results highlight that similarly performing models based on RMSE or can lead to drastically different predictions and conclusions, thus highlighting the need to interrogate machine learning models and to ensure they are consistent with known mechanisms reported in the literature. Both elements exhibited similar spatial patterns with predicted gains in Scandinavia losses in the central and Mediterranean regions of Europe, respectively, by the end of the 21st century for an extreme climate scenario. The median change was -5.5% for S (Lin-SVR) and -3.5% (MLP) and -4.0% (Lin-SVR) for Se. For both elements, modeled losses were driven by decreases in soil organic carbon, S and Se atmospheric deposition, and gains were driven by increases in evapotranspiration.

摘要

近几十年来,大气中硫(S)的沉积减少归因于作物中的 S 缺乏。同样,全球土壤硒(Se)浓度预计会下降,特别是在欧洲,这是由于干旱增加导致淋溶增加所致。考虑到它在农业中的国际重要性,欧洲土壤中必需元素(包括 S 和 Se)的减少可能会对营养和人类健康产生重要影响。我们的目标是模拟欧洲当前的土壤 S 和 Se 水平,并预测 21 世纪的浓度变化。我们研究了四种机器学习(ML)技术,但经过严格评估,只有 S 和 Se 的线性支持向量回归(Lin-SVR)模型和 Se 的多层感知器模型(MLP)的输出与文献中报道的已知机制一致。其他模型即使在训练和测试性能差异较小或不存在时也表现出过拟合。此外,我们的结果强调,基于 RMSE 或 的性能相似的模型可能会导致截然不同的预测和结论,因此需要对机器学习模型进行审查,并确保它们与文献中报道的已知机制一致。这两个元素都表现出相似的空间模式,预计在 21 世纪末,极端气候情景下,斯堪的纳维亚地区的 Se 会增加,而欧洲中部和地中海地区的 S 会减少。中位数变化分别为 S(Lin-SVR)减少 5.5%,Se(MLP)减少 3.5%,Se(Lin-SVR)减少 4.0%。对于这两个元素,模型模拟的损失是由土壤有机碳、S 和 Se 大气沉积减少驱动的,而收益是由蒸散增加驱动的。

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