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Statistical Emulation of Winter Ambient Fine Particulate Matter Concentrations From Emission Changes in China

机译:冬季环境细颗粒物质浓度从中国发射变化的统计仿真

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摘要

Air pollution exposure remains a leading public health problem in China. The use of chemical transport models to quantify the impacts of various emission changes on air quality is limited by their large computational demands. Machine learning models can emulate chemical transport models to provide computationally efficient predictions of outputs based on statistical associations with inputs. We developed novel emulators relating emission changes in five key anthropogenic sectors (residential, industry, land transport, agriculture, and power generation) to winter ambient fine particulate matter (PM2.5) concentrations across China. The emulators were optimized based on Gaussian process regressors with Matern kernels. The emulators predicted 99.9% of the variance in PM2.5 concentrations for a given input configuration of emission changes. PM2.5 concentrations are primarily sensitive to residential (51%–94% of first‐order sensitivity index), industrial (7%–31%), and agricultural emissions (0%–24%). Sensitivities of PM2.5 concentrations to land transport and power generation emissions are all under 5%, except in South West China where land transport emissions contributed 13%. The largest reduction in winter PM2.5 exposure for changes in the five emission sectors is by 68%–81%, down to 15.3–25.9 μg m−3, remaining above the World Health Organization annual guideline of 10 μg m−3. The greatest reductions in PM2.5 exposure are driven by reducing residential and industrial emissions, emphasizing the importance of emission reductions in these key sectors. We show that the annual National Air Quality Target of 35 μg m−3 is unlikely to be achieved during winter without strong emission reductions from the residential and industrial sectors.
机译:空气污染暴露仍然是中国领先的公共卫生问题。使用化学传输模型来量化各种排放变化对空气质量的影响受其大量计算需求的限制。机器学习模型可以模拟化学传输模型,以基于与输入的统计关联提供对输出的计算有效预测。我们开发了新的仿真器,在中国的冬季环境细颗粒物质(PM2.5)浓度的冬季环境细颗粒物(PM2.5)浓度上开发了有5个关键的人体部门(住宅,工业,土地运输,农业和发电)。基于带有Matern内核的高斯过程回归流器优化了仿真器。仿真器预测了PM2.5浓度差异的99.9%,用于给定的排放变化的输入配置。 PM2.5浓度主要对住宅(一阶灵敏度指数的51%-94%),工业(7%-31%)和农业排放(0%-24%)。除了在中国西南部的土地运输排放贡献13%之外,PM2.5浓度的敏感度占地费下降5%。最大的冬季PM2.5暴露于五个排放部门的曝光率为68%-81%,降至15.3-25.9μgm-3,剩下至世界卫生组织年度指南10μgm-3。 PM2.5暴露的最大减少是通过减少住宅和工业排放的推动,强调这些关键部门减排的重要性。我们表明,在冬季,不太可能在冬季实现35μgM-3的年度空气质量目标,而不会从住宅和工业部门的巨大排放。

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