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Modelling personal exposure to particulate air pollution: An assessment of time-integrated activity modelling, Monte Carlo simulation & artificial neural network approaches

机译:建立个人暴露于颗粒空气污染的模型:对时间积分活动模型,蒙特卡洛模拟和人工神经网络方法的评估

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An experimental assessment of personal exposure to PM_(10) in 59 office workers was carried out in Dublin, Ireland. 255 samples of 24-h personal exposure were collected in real time over a 28 month period. A series of modelling techniques were subsequently assessed for their ability to predict 24-h personal exposure to PM_(10). Artificial neural network modelling, Monte Carlo simulation and time-activity based models were developed and compared. The results of the investigation showed that using the Monte Carlo technique to randomly select concentrations from statistical distributions of exposure concentrations in typical microenvironments encountered by office workers produced the most accurate results, based on 3 statistical measures of model performance. The Monte Carlo simulation technique was also shown to have the greatest potential utility over the other techniques, in terms of predicting personal exposure without the need for further monitoring data. Over the 28 month period only a very weak correlation was found between background air quality and personal exposure measurements, highlighting the need for accurate models of personal exposure in epidemiological studies.
机译:在爱尔兰都柏林进行了对59名上班族个人暴露于PM_(10)的实验性评估。在28个月内,实时收集了255个24小时个人暴露样本。随后评估了一系列建模技术预测24小时个人暴露于PM_(10)的能力。开发并比较了人工神经网络建模,蒙特卡洛模拟和基于时间活动的模型。调查结果表明,使用蒙特卡洛技术从上班族所遇到的典型微环境中暴露浓度的统计分布中随机选择浓度,可以基于3种模型性能统计量得出最准确的结果。在无需进一步监视数据的情况下预测个人暴露方面,蒙特卡洛模拟技术还被证明比其他技术具有最大的潜力。在28个月的时间内,仅发现背景空气质量与个人接触测量之间的相关性非常弱,这突出表明在流行病学研究中需要精确的个人接触模型。

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