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Identifying sources of fugitive emissions in industrial facilities using trajectory statistical methods

机译:使用轨迹统计方法识别工业设施中的无组织排放源

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Fugitive pollutant sources from the oil and gas industry are typically quite difficult to find within industrial plants and refineries, yet they are a significant contributor of global greenhouse gas emissions. A novel approach for locating fugitive emission sources using computationally efficient trajectory statistical methods (TSM) has been investigated in detailed proof-of-concept simulations. Four TSMs were examined in a variety of source emissions scenarios developed using transient CFD simulations on the simplified geometry of an actual gas plant: potential source contribution function (PSCF), concentration weighted trajectory (CWT), residence time weighted concentration (RTWC), and quantitative transport bias analysis (QTBA). Quantitative comparisons were made using a correlation measure based on search area from the source(s). PSCF, CWT and RTWC could all distinguish areas near major sources from the surroundings. QTBA successfully located sources in only some cases, even when provided with a large data set. RTWC, given sufficient domain trajectory coverage, distinguished source areas best, but otherwise could produce false source predictions. Using RTWC in conjunction with CWT could overcome this issue as well as reduce sensitivity to noise in the data. The results demonstrate that TSMs are a promising approach for identifying fugitive emissions sources within complex facility geometries.
机译:石油和天然气行业的逃逸污染物来源通常很难在工厂和精炼厂中找到,但是它们是全球温室气体排放的重要来源。在详细的概念验证模拟中,研究了一种使用计算有效的轨迹统计方法(TSM)定位逃逸排放源的新方法。在瞬态CFD模拟的基础上,对实际天然气厂的简化几何结构开发的各种源排放情景中检查了四个TSM:潜在源贡献函数(PSCF),浓度加权轨迹(CWT),停留时间加权浓度(RTWC)和定量运输偏倚分析(QTBA)。使用基于源的搜索区域的相关性度量进行定量比较。 PSCF,CWT和RTWC都可以区分周围主要来源附近的区域。 QTBA仅在某些情况下成功定位了源,即使提供了大数据集也是如此。在给定足够的域轨迹覆盖范围的情况下,RTWC可以最好地区分源区域,但否则可能产生错误的源预测。将RTWC与CWT结合使用可以克服此问题,并降低对数据噪声的敏感性。结果表明,TSM是一种在复杂设施几何结构中识别逃逸排放源的有前途的方法。

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