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Sensitivity Analysis for Predicting Sub-Micron Aerosol Concentrations Based on Meteorological Parameters

机译:基于气象参数的亚微米气溶胶浓度预测灵敏度分析

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摘要

Sub-micron aerosols are a vital air pollutant to be measured because they pose health effects. These particles are quantified as particle number concentration (PN). However, PN measurements are not always available in air quality measurement stations, leading to data scarcity. In order to compensate this, PN modeling needs to be developed. This paper presents a PN modeling framework using sensitivity analysis tested on a one year aerosol measurement campaign conducted in Amman, Jordan. The method prepares a set of different combinations of all measured meteorological parameters to be descriptors of PN concentration. In this case, we resort to artificial neural networks in the forms of a feed-forward neural network (FFNN) and a time-delay neural network (TDNN) as modeling tools, and then, we attempt to find the best descriptors using all these combinations as model inputs. The best modeling tools are FFNN for daily averaged data (with R ) and TDNN for hourly averaged data (with R ) where the best combinations of meteorological parameters are found to be temperature, relative humidity, pressure, and wind speed. As the models follow the patterns of diurnal cycles well, the results are considered to be satisfactory. When PN measurements are not directly available or there are massive missing PN concentration data, PN models can be used to estimate PN concentration using available measured meteorological parameters.
机译:亚微米气溶胶是一种至关重要的空气污染物,因为它们会对健康产生影响。这些颗粒被量化为颗粒数浓度(PN)。但是,在空气质量测量站中并非总是可以进行PN测量,从而导致数据稀缺。为了弥补这一点,需要开发PN建模。本文介绍了一个使用敏感性分析的PN建模框架,该敏感性分析是在约旦安曼进行的为期一年的气溶胶测量活动中测试的。该方法准备了所有测得的气象参数的一组不同组合,以作为PN浓度的描述。在这种情况下,我们采用前馈神经网络(FFNN)和时延神经网络(TDNN)形式的人工神经网络作为建模工具,然后尝试使用所有这些来找到最佳描述符组合作为模型输入。最好的建模工具是FFNN用于每日平均数据(具有R)和TDNN用于小时平均数据(具有R),其中发现气象参数的最佳组合是温度,相对湿度,压力和风速。由于这些模型很好地遵循了昼夜周期的模式,因此结果被认为是令人满意的。当无法直接获得PN测量值或缺少大量PN浓度数据时,可以使用PN模型使用可用的已测气象参数来估算PN浓度。

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