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Machine-learned modeling of PM_(2.5) exposures in rural Lao PDR

机译:老挝农村地区PM_(2.5)暴露的机器学习建模

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摘要

This study presents a machine-learning-enhanced method of modeling PM2.5 personal exposures in a data-scarce, rural, solid fuel use context. Data collected during a cookstove (Africa Clean Energy (ACE)-1 solar-battery-powered stove) intervention program in rural Lao PDR are presented and leveraged to explore advanced techniques for predicting personal exposures to particulate matter with aerodynamic diameter smaller than 2.5 mu m (PM2.5). Mean 48-h PM2.5 exposure concentrations for female cooks were measured for the pre- and post-intervention periods (the "Before" and "After" periods, respectively) as 123 mu g/m(3) and 81 mu g/m(3). Mean 48-h PM(2.5 )kitchen air pollution ("KAP") concentrations were measured at 462 mu g/m(3) Before and 124 mu g/m(3) After. Application of machine learning and ensemble modeling demonstrated cross-validated personal exposure predictions that were modest at the individual level but reasonably strong at the group level, with the best models producing an observed vs. predicted r(2) between 0.26 and 0.31 (r(2) = 0.49 when using a smaller, un-imputed dataset) and mean Before estimates of 119-120 pg/m(3) and After estimates of 86-88 mu g/m(3). This offered improvement over one typical method of predicting exposure - using a kitchen exposure factor (the ratio of exposure to KAP)-which demonstrated an r(2) similar to 0.03 and poorly estimated group average values. The results of these analyses highlight areas of methodological improvement for future exposure assessments of household air pollution and provide evidence for researchers to explore the advantages of further incorporating machine learning methods into similar research across wider geographic and cultural contexts. (C) 2019 Elsevier B.V. All rights reserved.
机译:这项研究提出了一种在数据匮乏的农村固体燃料使用环境中对PM2.5个人暴露进行建模的机器学习增强方法。介绍并介绍了在老挝农村地区的灶具(非洲清洁能源(ACE)-1太阳能电池供电的炉子)干预计划中收集的数据,并利用这些数据来探索先进技术来预测个人接触空气动力学直径小于2.5微米的颗粒物(PM2.5)。在干预前后,女性厨师的平均48小时PM2.5暴露浓度为123μg / m(3),而干预前后(分别为“之前”和“之后”)和81微克/平方米(3)。在462μg / m(3)之前和之后的124μg / m(3)之后,平均48小时PM(2.5)厨房空气污染(“ KAP”)浓度被测量。机器学习和整体建模的应用表明,交叉验证的个人暴露预测在个体水平上适度但在群体水平上相当强,最佳模型产生的观测值与预测值的r(2)在0.26和0.31之间(r( 2)= 0.49(使用较小的未估算数据集时),且均值之前估计值为119-120 pg / m(3)和后值估计为86-88μg / m(3)。与使用厨房暴露因子(暴露于KAP的比率)的一种典型的暴露预测方法相比,该方法有所改进,该方法的r(2)接近于0.03,且组平均值估计较差。这些分析的结果突出了用于未来家庭空气污染评估的方法论改进领域,并为研究人员探索将机器学习方法进一步纳入更广泛的地理和文化背景下的类似研究中的优势提供了证据。 (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1期|811-822|共12页
  • 作者单位

    Univ Calif Berkeley, Sch Publ Hlth, Div Environm Hlth Sci, 2121 Berkeley Way 5302, Berkeley, CA 94720 USA;

    Univ Calif Berkeley, Sch Publ Hlth, Div Environm Hlth Sci, 2121 Berkeley Way 5302, Berkeley, CA 94720 USA;

    Berkeley Air Monitoring Grp Inc, 1900 Addison St 350, Berkeley, CA 94704 USA;

    Berkeley Air Monitoring Grp Inc, 1900 Addison St 350, Berkeley, CA 94704 USA;

    Berkeley Air Monitoring Grp Inc, 1900 Addison St 350, Berkeley, CA 94704 USA;

    Lao Inst Renewable Energy, Ban Watnak Lao Thai Friendship Rd, Sisattanak Dist, Vientiane, Laos;

    Lao Inst Renewable Energy, Ban Watnak Lao Thai Friendship Rd, Sisattanak Dist, Vientiane, Laos;

    Lao Inst Renewable Energy, Ban Watnak Lao Thai Friendship Rd, Sisattanak Dist, Vientiane, Laos;

    Lao Inst Renewable Energy, Ban Watnak Lao Thai Friendship Rd, Sisattanak Dist, Vientiane, Laos;

    Lao Inst Renewable Energy, Ban Watnak Lao Thai Friendship Rd, Sisattanak Dist, Vientiane, Laos;

    Geosys Lao Co Ltd, 136-9,Hom 7, Sisattanak Dist, Vientiane, Laos;

    Univ Calif Berkeley, Sch Publ Hlth, Div Environm Hlth Sci, 2121 Berkeley Way 5302, Berkeley, CA 94720 USA|Univ Calif San Francisco, Dept Med, 505 Parnassus Ave, San Francisco, CA 94143 USA;

    Univ Calif Berkeley, Sch Publ Hlth, Div Epidemiol & Biostat, 2121 Berkeley Way 5302, Berkeley, CA 94720 USA;

    Univ Calif Berkeley, Sch Publ Hlth, Div Environm Hlth Sci, 2121 Berkeley Way 5302, Berkeley, CA 94720 USA;

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

    Air quality; Cookstoves; Prediction; Environmental health; Biostatistics';

    机译:空气质量;炉灶;预测;环境卫生;生物统计学;

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