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Detection and characterization of chemical vapor fugitive emissions by nonlinear optimal estimation: theory and simulation

机译:非线性最优估计的化学蒸气逸散排放检测与表征:理论与仿真

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摘要

This paper addresses detection and characterization of chemical vapor fugitive emissions in a non-scattering atmosphere by processing of remotely-sensed long-wavelength infrared spectra. The analysis approach integrates a parameterized signal model based on the radiative transfer equation with a statistical model for the infrared background. The maximum likelihood model parameter values are defined as those that maximize a Bayesian posterior probability and are estimated using a Gauss-Newton algorithm. For algorithm performance evaluation we simulate observation of fugitive emissions by augmenting plume-free measured spectra with synthetic plume signatures. As plumes become optically thick, the Gauss-Newton algorithm yields significantly more accurate estimates of chemical vapor column density and significantly more favorable plume detection statistics than clutter-matched-filter-based and adaptive-subspace-detector-based plume characterization and detection.
机译:通过处理遥感长波红外光谱,研究了在非散射大气中化学蒸气逸出物的检测和表征。该分析方法将基于辐射传递方程的参数化信号模型与红外背景的统计模型集成在一起。最大似然模型参数值定义为最大化贝叶斯后验概率的参数,并使用高斯-牛顿算法进行估计。对于算法性能评估,我们通过使用合成羽特征码增强无羽测量光谱来模拟逃逸排放的观察。随着羽流的光学厚度增加,与基于杂波匹配过滤器和基于自适应子空间检测器的羽流表征和检测相比,高斯-牛顿算法可产生更加准确的化学气相色谱柱密度估算值和更为有利的羽流检测统计数据。

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