School of Physics & Centre for Climate and Air Pollution Studies, Ryan Institute, National University of Ireland Galway, Galway, Ireland.
School of Physics & Centre for Climate and Air Pollution Studies, Ryan Institute, National University of Ireland Galway, Galway, Ireland.
Sci Total Environ. 2014 Aug 15;490:798-806. doi: 10.1016/j.scitotenv.2014.05.081. Epub 2014 Jun 5.
This paper highlights the development and application of the probabilistic model (IAPPEM), which predicts PM10 and PM2.5 concentrations in the indoor environments. A number of features are detailed and justified through simulated comparison, which are shown to be necessary when modelling indoor PM concentrations. A one minute resolution predicts up to 20% higher peak concentrations compared with a 15 min resolution. A modified PM10 deposition method, devised to independently analyse the PM2.5 fraction of PM10, predicts up to 56% higher mean concentrations. The application of the model is demonstrated by a number of simulations. The total PM contribution, from different indoor emission sources, was analysed in terms of both emission strength and duration. In addition, PM concentrations were examined by varying the location of the emission source. A 24-hour sample profile is simulated based on sample data, designed to demonstrate the combined functionality of the model, predicting PM10 and PM2.5 peak concentrations up to 1107±175 and 596±102 μg m(-3) respectively, whilst predicting PM10 and PM2.5 mean concentrations up to 259±21 and 166±11 μg m(-3) respectively.
本文重点介绍了概率模型(IAPPEM)的开发和应用,该模型可预测室内环境中的 PM10 和 PM2.5 浓度。通过模拟比较详细说明了许多功能,这些功能在对室内 PM 浓度进行建模时是必要的。与 15 分钟分辨率相比,1 分钟分辨率可预测高达 20%的更高峰值浓度。设计用于独立分析 PM10 中 PM2.5 部分的改良 PM10 沉积方法可预测高达 56%的更高平均浓度。通过多项模拟演示了该模型的应用。根据排放强度和持续时间,从不同室内排放源分析了总 PM 贡献。此外,还通过改变排放源的位置来检查 PM 浓度。根据样本数据模拟了一个 24 小时样本剖面,旨在展示模型的综合功能,分别预测 PM10 和 PM2.5 的峰值浓度高达 1107±175 和 596±102 μg m(-3),同时预测 PM10 和 PM2.5 的平均浓度高达 259±21 和 166±11 μg m(-3)。