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首页> 外文期刊>The Science of the Total Environment >Projecting life-cycle environmental impacts of corn production in the U.S. Midwest under future climate scenarios using a machine learning approach
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Projecting life-cycle environmental impacts of corn production in the U.S. Midwest under future climate scenarios using a machine learning approach

机译:使用机器学习方法预测未来气候情景下美国中西部玉米生产的生命周期环境影响

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摘要

Climate change is exacerbating environmental pollution from crop production. Spatially and temporally explicit estimates of life-cycle environmental impacts are therefore needed for suggesting location and time relevant environmental mitigations strategies. Emission factors and process-based mechanism models are popular approaches used to estimate life-cycle environmental impacts. However, emission factors are often incapable of describing spatial and temporal heterogeneity of agricultural emissions, whereas process-based mechanistic models, capable of capturing the heterogeneity, tend to be very complicated and time-consuming. Efficient prediction of life-cycle environmental impacts from agricultural production is lacking. This study develops a rapid predictive model to quantify life-cycle global warming (GW) and eutrophication (EU) impacts of corn production using a novel machine learning approach. We used the boosted regression tree (BRT) model to estimate future life-cycle environmental impacts of corn production in U.S. Midwest counties under four emissions scenarios for years 2022-2100. Results from BRT models indicate that the cross-validation (R2) for predicting life cycle GW and EU impacts ranged from 0.78 to 0.82, respectively. Furthermore, results show that future life-cycle GW and EU impacts of corn production will increase in magnitude under all four emissions scenarios, with the highest environmental impacts shown under the high-emissions scenario. Moreover, this study found that changes in precipitation and temperature played a significant role in influencing the spatial heterogeneity in all life-cycle impacts across Midwest counties. The BRT model results indicate that machine learning can be a useful tool for predicting spatially and temporally explicit future life-cycle environmental impacts associated with corn production under different climate scenarios.
机译:气候变化加剧了农作物生产对环境的污染。因此,需要时空明确的生命周期环境影响估计值,以提出与位置和时间相关的环境缓解策略。排放因子和基于过程的机制模型是用于估计生命周期环境影响的流行方法。但是,排放因子通常无法描述农业排放的时空异质性,而能够捕获异质性的基于过程的机械模型往往非常复杂且耗时。缺乏对农业生产对生命周期环境影响的有效预测。这项研究开发了一种快速预测模型,可以使用一种新型的机器学习方法来量化玉米生产的生命周期全球变暖(GW)和富营养化(EU)的影响。我们使用增强回归树(BRT)模型来估计2022年至2100年在四种排放情景下美国中西部县玉米生产对生命周期的未来环境影响。 BRT模型的结果表明,用于预测生命周期GW和EU影响的交叉验证(R2)的范围分别为0.78至0.82。此外,结果表明,在所有四种排放情景下,未来生命周期对全球谷物生产和欧盟的影响都将在幅度上增加,在高排放情景下,对环境的影响最大。此外,这项研究还发现,降水量和温度的变化在影响整个中西部各县的所有生命周期影响中,都在影响空间异质性方面发挥了重要作用。 BRT模型的结果表明,机器学习可以成为预测不同气候情景下与玉米生产相关的时空明确的未来生命周期环境影响的有用工具。

著录项

  • 来源
    《The Science of the Total Environment》 |2020年第20期|136697.1-136697.11|共11页
  • 作者单位

    Department of Environmental Health Sciences University at Albany State University of New York One University Place Rensselaer NY 12144 USA;

    Joint Global Change Research Institute Pacific Northwest National Laboratory 5825 University Research Court College Park MD 20740 USA;

    Pasture Systems and Watershed Management Research Unit USDA-ARS Curtin Road University Park PA 16807 USA;

    Department of Environmental Health Sciences University at Albany State University of New York One University Place Rensselaer NY 12144 USA Joint Global Change Research Institute Pacific Northwest National Laboratory 5825 University Research Court College Park MD 20740 USA;

    Department of Environmental Health Sciences University at Albany State University of New York One University Place Rensselaer NY 12144 USA Wadsworth Center New York State Department of Health Empire State Plaza Albany NY 12201 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Machine learning; Climate change; Life cycle assessment; Environmental impacts; Corn production; US Midwest;

    机译:机器学习;气候变化;生命周期评估;环境影响;玉米产量;美国中西部;

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