首页> 外文期刊>Aerosol Science and Technology: The Journal of the American Association for Aerosol Research >Combining sensor-based measurement and modeling of PM2.5 and black carbon in assessing exposure to indoor aerosols
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Combining sensor-based measurement and modeling of PM2.5 and black carbon in assessing exposure to indoor aerosols

机译:将基于传感器的测量和模拟PM2.5和黑碳建模分析室内气溶胶的接触

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Accurate, cost-effective methods are needed for rapid assessment of traffic-related air pollution (TRAP). Typically, real-time data of particulate matter (PM) from portable sensors have been adjusted using data from reference methods such as gravimetric measurement to improve accuracy. The objective of this study was to create a correction factor or linear regression model for the real-time measurements of the RTI's Micro Personal Exposure Monitor (MicroPEM (TM)) and AethLab's microAeth((R)) black carbon (AE51) sensor to generate accurate real-time data for PM2.5 (PM2.5RT) and black carbon (BCRT) in Cincinnati metropolitan homes. The two sensors and an SKC PM2.5 Personal Modular impactor were collocated in 44 indoor sampling events for 2days in residences near major roadways. The reference filter-based analyses conducted by a laboratory included particle mass (SKC PM2.5 and MicroPEM (TM) PM2.5) and black carbon (SKC BC); these methods are more accurate than real-time sensors but are also more cumbersome and costly. For PM2.5, the average correction factor, a ratio of gravimetric to real time, for the MicroPEM (TM) PM2.5 and SKC PM2.5 utilizing the PM2.5RT and was 0.94 and 0.83, respectively, with a coefficient of variation (CV) of 84% and 52%, respectively; the corresponding linear regression model had a CV of 54% and 25%. For BC, the average correction factor utilizing the BCRT and SKC BC was 0.74 with a CV of 36% with the associated linear regression model producing a CV of 56%. The results from this study will help ensure that the real-time exposure monitors are capable of detecting an estimated PM2.5 after an appropriate statistical model is applied.Copyright (c) 2019 American Association for Aerosol Research
机译:快速评估交通相关的空气污染(陷阱)需要准确,经济高效的方法。通常,已经使用来自诸如重量测量的参考方法(例如重量测量)来调整来自便携式传感器的颗粒物质(PM)的实时数据,以提高精度。本研究的目的是为RTI的微观人曝光监测器(MicroPem(TM))和Aethlab的微发((R))黑碳(AE51)传感器的实时测量来创建校正因子或线性回归模型,以产生准确的PM2.5(PM2.5RT)和辛辛那提大都市家中的黑碳(BCRT)的实时数据。两个传感器和SKC PM2.5个人模块化冲击器在44个室内采样事件中并在主要道路附近的居住区进行了2天。由实验室进行的基于参考滤波器的分析包括颗粒质量(SKC PM2.5和微量透镜PM2.5)和黑碳(SKC BC);这些方法比实时传感器更准确,但也更加繁琐且昂贵。对于PM2.5,平均校正因子,重量比与实时的比例,用于使用PM2.5RT的微量透镜(TM)PM2.5和SKC PM2.5分别为0.94和0.83,具有变异系数(CV)分别为84%和52%;相应的线性回归模型的CV为54%和25%。对于BC,利用BCRT和SKC BC的平均校正因子为0.74,CV为36%,相关的线性回归模型产生56%的CV。本研究的结果将有助于确保在应用适当的统计模型后,实时曝光监视器能够检测估计的PM2.5。2019年美国气溶胶研究协会opyright(c)

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