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Excitation emission matrix fluorescence spectroscopy for combustion generated particulate matter source identification

机译:激发发射矩阵荧光光谱法用于燃烧产生的颗粒物源识别

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The inhalation of particulate matter (PM) is a significant health risk associated with reduced life expectancy due to increased cardio-pulmonary disease and exacerbation of respiratory diseases such as asthma and pneumonia. PM originates from natural and anthropogenic sources including combustion engines, cigarettes, agricultural burning, and forest fires. Identifying the source of PM can inform effective mitigation strategies and policies, but this is difficult to do using current techniques. Here we present a method for identifying PM source using excitation emission matrix (EEM) fluorescence spectroscopy and a machine learning algorithm. We collected combustion generated PM2.5 from wood burning, diesel exhaust, and cigarettes using filters. Filters were weighted to determine mass concentration followed by extraction into cyclohexane and analysis by EEM fluorescence spectroscopy. Spectra obtained from each source served as training data for a convolutional neural network (CNN) used for source identification in mixed samples. This method can predict the presence or absence of the three laboratory sources with an overall accuracy of 89% when the threshold for classifying a source as present is 1.1 mu g/m(3) in air over a 24-h sampling time. The limit of detection for cigarette, diesel and wood are 0.7, 2.6, 0.9 mu g/m(3), respectively, in air assuming a 24-h sampling time at an air sampling rate of 1.8 L per minute. We applied the CNN algorithm developed using the laboratory training data to a small set of field samples and found the algorithm was effective in some cases but would require a training data set containing more samples to be more broadly applicable.
机译:吸入颗粒物(PM)是严重的健康风险,这归因于心肺疾病的增加和哮喘,肺炎等呼吸系统疾病的恶化,导致预期寿命缩短。 PM来自自然和人为来源,包括内燃机,香烟,农业燃烧和森林火灾。确定PM的来源可以为有效的缓解策略和政策提供信息,但是使用现有技术很难做到这一点。在这里,我们介绍一种使用激发发射矩阵(EEM)荧光光谱法和机器学习算法识别PM源的方法。我们使用过滤器收集了从木材燃烧,柴油废气和香烟中燃烧产生的PM2.5。称重过滤器以确定质量浓度,然后萃取到环己烷中并通过EEM荧光光谱分析。从每个来源获得的光谱用作用于在混合样本中进行来源识别的卷积神经网络(CNN)的训练数据。当在24小时的采样时间内将空气中存在的分类源的阈值为1.1μg / m(3)时,此方法可以预测三种实验室源的存在或不存在,总体精度为89%。假设在空气中以每分钟1.8 L的采样速度进行24小时采样,则空气中香烟,柴油和木材的检出限分别为0.7、2.6、0.9μg / m(3)。我们将使用实验室训练数据开发的CNN算法应用于一小部分现场样本,发现该算法在某些情况下是有效的,但需要包含更多样本的训练数据集才能更广泛地应用。

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