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首页> 外文期刊>Water, air and soil pollution >Use of Trajectory Regression Analysis to Understand High-PM_(10) Episodes: a Case Study in Limeira, Brazil
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Use of Trajectory Regression Analysis to Understand High-PM_(10) Episodes: a Case Study in Limeira, Brazil

机译:使用轨迹回归分析来了解高PM_(10)集:巴西利雷加的案例研究

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摘要

Emitted from vehicles, plant biomass combustion, and industries, particulate matter (PM) is an air pollutant widely studied by the scientific community due to its health effects (cardiorespiratory diseases, cancers, eye irritations, among others). The present study evaluates periods with high PM concentrations, defined as high-PM10 episodes (daily concentrations above the 75th percentile), to define and assess the main possible sources of PM emission in the city of Limeira, Sao Paulo, Brazil. To determine the location of such sources, the trajectory regression analysis (TRA) statistical tool was used, based on trajectories obtained from the HYSPLIT model. The 75th percentile was calculated at 41.21 mu g/m(3), with a maximum concentration of 114.38 mu g/m(3). Results point to autumn, winter, and spring as the seasons with the highest number of episodes, accounting for 33, 91, and 49 episodes, respectively. April 2016 (20 episodes), July 2016 (25), and September 2017 (27), possibly due to the low precipitation rates, had the highest monthly totals. TRA showed that local sources (within a 500 km radius) were the ones contributing the most to PM concentration in the period studied, totaling 55%, which allows us to point to vehicle and industrial emissions near the city of Limeira as the main sources.
机译:从车辆,植物生物量燃烧和行业发出,颗粒物质(PM)是由科学界广泛研究的空气污染物,由于其健康影响(心肺疾病,癌症,眼睛刺激等)。本研究评估了高PM浓度的时期,定义为高PM10集(每日浓度高于第75百分位数),以定义和评估Limeira市,圣保罗,巴西市的主要可能的PM排放来源。为了确定这些来源的位置,基于从Hysplit模型获得的轨迹使用轨迹回归分析(TRA)统计工具。在41.21μg/ m(3)下计算第75百分位数,最大浓度为114.38μg/ m(3)。结果点到秋季,冬季,春季作为季节最多的季节,分别占33,91和49次发作。 2016年4月(20张),2016年7月(25)和2017年9月(27),可能是由于降水率低,每月最高。特拉表明,本地来源(在500公里半径范围内)是在研究期间的贡献最多的贡献,总计55%,这使我们能够指向Limeira市附近的车辆和工业排放作为主要来源。

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