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A kriging-calibrated machine learning method for estimating daily ground-level NO_2 in mainland China

机译:克里格校准的机器学习方法,用于在中国大陆估算日地级NO_2

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摘要

It is unclear how to develop a model based on the combined satellite data and ground monitoring data to accurately estimate daily NO2 levels. Furthermore, the conventional cross-validation (CV) results represent average levels but the model performance may vary greatly from grid to grid. It is an essential issue to evaluate model's prediction ability in different grids and determine the factors affecting model extrapolating ability, which have never been well examined to date.The aim of this study was to compare the ability of three different methods to estimate the daily NO2 across mainland China during 2014-2016; and to develop a novel two-stage meta-analysis method for exploring the influence of the number and the distribution of nearby sites on grid-level prediction accuracy.For better estimating the daily NO2 level, we developed and compared three methods, including universal kriging model, satellite-based method (Non-linear exposure-lag-response model & Extreme gradient boosting combined technique) and the kriging-calibrated satellite method. For exploring influencing factors, the two-stage meta-analysis method was purposed.The kriging-calibrated satellite method had an overall CV R-square and root mean square error (RMSE) of 0.85 and 7.87 mu g/m(3), better than the Universal Kriging model and the satellite-based method (CV R-2 = 0.57 and 0.81). The two-stage meta-analysis method revealed that the model performance did decrease with the sparser distribution of nearby sites. And adding 5 sites within 50 km in the random mode can bring 17.51% improvement in model extrapolating ability.The kriging-calibration can help satellite-based machine learning to provide more accurate NO2 prediction. Our novel evaluation method can provide the suggestion of adding new sites effectively within a limit budget. (C) 2019 Elsevier B.V. All rights reserved.
机译:目前尚不清楚如何基于组合的卫星数据和地面监测数据开发模型,以准确估计每日NO2水平。此外,传统的交叉验证(CV)结果表示平均水平,但模型性能可能与网格的网格变化很大。评估模型在不同网格中的预测能力并确定影响模型推断能力的因素,这是一个重要的问题,这对迄今为止从未仔细研究过。本研究的目的是比较三种不同方法估计日常的能力。 2014 - 2016年中国大陆跨国;并开发一种新型的两阶段元分析方法,用于探索附近站点的数量和附近站点分布对网格级预测准确性的影响。我们开发并比较了三种方法,包括通用克里格模型,基于卫星的方法(非线性曝光 - 响应模型和极端梯度升压组合技术)与Kriging校准卫星法。为了探索影响因素,两阶段元分析方法是拟合的。Kriging校准的卫星方法具有0.85和7.87μg/ m(3)的整体CV R-Square和均均方误差(RMSE),更好而不是通用克里格化模型和基于卫星的方法(CV R-2 = 0.57和0.81)。两级元分析方法显示,模型性能确实随着附近网站的稀疏分布而减少。在随机模式下,在50公里处增加5个站点可以提高模型推断能力。Kriging-校准可以帮助基于卫星的机器学习提供更准确的No2预测。我们的新评估方法可以在限制预算范围内有效地添加新网站的建议。 (c)2019 Elsevier B.v.保留所有权利。

著录项

  • 来源
    《The Science of the Total Environment》 |2019年第10期|556-564|共9页
  • 作者单位

    Southern Med Univ Sch Publ Hlth Guangdong Prov Key Lab Trop Dis Res State Key Lab Organ Failure Res Dept Biostat Guangzhou 510515 Guangdong Peoples R China;

    Southern Med Univ Sch Publ Hlth Guangdong Prov Key Lab Trop Dis Res State Key Lab Organ Failure Res Dept Biostat Guangzhou 510515 Guangdong Peoples R China;

    Wuhan Univ State Key Lab Informat Engn Surveying Mapping & R Wuhan 430079 Hubei Peoples R China;

    Southern Med Univ Sch Publ Hlth Guangdong Prov Key Lab Trop Dis Res State Key Lab Organ Failure Res Dept Biostat Guangzhou 510515 Guangdong Peoples R China;

    Sch Publ Hlth & Prevent Med Dept Epidemiol & Prevent Med Melbourne Vic 3004 Australia;

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

    Extreme gradient boosting; Meta-analysis; Kriging-calibration; NO2; Extrapolating ability; China;

    机译:极端梯度升压;荟萃分析;Kriging校准;No2;外推能力;中国;

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