首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >IDENTIFYING THE DRIVING FACTORS OF POPULATION EXPOSURE TO FINE PARTICULATE MATTER (PM2.5) IN WUHAN, CHINA
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IDENTIFYING THE DRIVING FACTORS OF POPULATION EXPOSURE TO FINE PARTICULATE MATTER (PM2.5) IN WUHAN, CHINA

机译:鉴定武汉武汉细颗粒物质(PM2.5)的人口暴露的驱动因素

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Characterizing the spatiotemporal dynamics of population exposure to fine particulate matter (PM2.5) and the underlying external forcing can provide proactive implication for public health precautions. In this study, satellite-derived surface-level PM2.5 concentration as well as landscape factors and socioeconomic data are collected to identify the inter-annual variations and potential driving forces of population exposure to fine particulate matter (PM2.5) in Wuhan, China from 2000 to 2015. The fine-scale PM2.5 exposures in 2000, 2005, 2010 and 2015 were first estimated. Then the contributions of landscape factors and socioeconomic forcing are quantified by a machine learning method (i.e. Random Forest). The results revealed that the population in Wuhan faced increasing and more clustering PM2.5 threats from 2000 to 2010. Then a weakened and dispersed health threat of PM2.5 was witnessed in 2015. In general, the Gross Domestic Product (GDP) contributed the most to high-level PM2.5 exposure in the period of 2000–2015, i.e. variable importance (VIM) equalled to xxx. Among all the biophysical and landscape characteristics, the percentage of urban landscape (PLAND_UA) and urban area fraction were attributed the most to the PM2.5 population exposure. In parallel, precipitation played a crucial part in the mitigation of PM2.5 exposure. The identification of inter-annual dynamics of population PM2.5 exposure and the underlying forcing can facilitate the decision making and epidemiological precautions in the evaluation and alleviation of population exposure risks.
机译:表征种群人口的时尚动力学暴露于细颗粒物质(PM2.5),潜在的外部迫使能够为公共卫生预防措施提供积极的含义。在本研究中,收集了卫星衍生的表面级PM2.5浓度以及景观因素和社会经济数据,以确定武汉细颗粒物质(PM2.5)的年度年度变化和潜在的驱动力,中国从2000年到2015年。首次估计2000年,2005年,2010年和2015年的精细PM2.5暴露。然后通过机器学习方法(即随机森林)量化景观因素和社会经济强制的贡献。结果表明,武汉的人口面临着2000年至2010年的增加,更多的聚类PM2.5威胁。然后,2015年见证了PM2.5的削弱和分散的健康威胁。一般来说,国内生产总值(GDP)贡献了大多数到2000 - 2015年期间的高级PM2.5曝光,即等于XXX的可变重要性(Vim)。在所有生物物理和景观特征中,城市景观(Pland_ua)和城市地区分数的百分比归因于PM2.5人口暴露的最多。平行,降水在PM2.5暴露的缓解中起到了关键部分。识别人口PM2.5的年度动态和潜在的迫使能够促进评估和减轻人口暴露风险的决策和流行病学预防措施。

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