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Automated Detection of Trichloroethylene by Fourier Transform Infrared Remote Sensing Measurements

机译:傅里叶变换红外遥感自动检测三氯乙烯

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摘要

Passive Fourier transform infrared (FT-IR) remote sensing measurements are used to implement the automated detection of trichloroethylene (TCE) vapor in the presence of a variety of infrared background signatures. Through the use of a combination of bandpass digital filtering and piecewise linear discriminant analysis, this detection procedure is applied directly to short segments of the interferogram data collected by the FT-IR spectrometer. Data employed in this work were collected during open-air/passive cell terrestrial and passive cell laboratory measurements. Infrared backgrounds employed included terrain, low-angle sky, and water backgrounds, in addition to laboratory blackbody measurements. Other potentially interfering chemical species present were carbon tetra-chloride, acetone, methyl ethyl ketone, and sulfur hexafluoride (SF↓(6)). These data are used to assemble two data sets of differing complexity. Optimization studies are performed separately with each data set to study the influence of filter bandpass position, bandpass width, interferogram segment location, and segment size on the ability to detect TCE. The optimal parameters found consist of a Gausslan-shaped filter positioned at 939.5 cm↑(-1), with a width at half-height of 123.4 cm↑(-1). This filter is applied to interferogram points 111-220 (relative to the center-burs0. When applied to a prediction set of 60 000 interferograms, the piecewise linear discriminant developed on the basis of these optimal parameters is found to detect TCE successfully in 96.2% of the cases in which iris present. The overall rate of false detections is 0.5%. The limit of detection of TCE is found to be 102 ppm-m at a temperature difference of 10.5 ℃ between the infrared background and the analyte. SF↓(6) is observed to provide the greatest spectral interference among the compounds tested, producing a false detection rate of 8.6%. It is found that this false detection rate can be reduced to 1.5% through the development of a probability-based interpretation of the piecewise linear discriminant results. These results are observed to compare favorably
机译:无源傅立叶变换红外(FT-IR)遥感测量用于在存在各种红外背景特征的情况下自动检测三氯乙烯(TCE)蒸气。通过结合使用带通数字滤波和分段线性判别分析,可以将该检测程序直接应用于FT-IR光谱仪收集的干涉图数据的短段。在露天/被动式细胞地面和被动式细胞实验室测量过程中收集了这项工作中使用的数据。除了实验室黑体测量外,使用的红外背景还包括地形,低角度的天空和水背景。存在的其他潜在干扰化学物质是四氯化碳,丙酮,甲乙酮和六氟化硫(SF↓(6))。这些数据用于组装两个不同复杂度的数据集。对每个数据集分别进行优化研究,以研究滤波器带通位置,带通宽度,干涉图片段位置和片段大小对检测TCE的能力的影响。找到的最佳参数由位于939.5 cm↑(-1)处的高斯兰形滤波器组成,半高宽为123.4 cm↑(-1)。该滤波器应用于干涉图点111-220(相对于中心Burs0。当应用于6万张干涉图的预测集时,基于这些最佳参数开发的分段线性判别式成功检测到96.2%的TCE在存在虹膜的情况下,总的误检率为0.5%。在红外背景与分析物之间的温差为10.5℃时,TCE的检出限为102 ppm-m。观察到6)在所测试的化合物中提供最大的光谱干扰,产生8.6%的错误检测率,发现通过开发基于概率的分段分析可以将错误检测率降低到1.5%。线性判别结果。观察到的这些结果具有可比性

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