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Principal Component Analysis for Enhancement of Infrared Spectra Monitoring.

机译:用于增强红外光谱监控的主成分分析。

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摘要

The issue of air quality within the aircraft cabin is receiving increasing attention from both pilot and flight attendant unions. This is due to exposure events caused by poor air quality that in some cases may have contained toxic oil components due to bleed air that flows from outside the aircraft and then through the engines into the aircraft cabin. Significant short and long-term medical issues for aircraft crew have been attributed to exposure. The need for air quality monitoring is especially evident in the fact that currently within an aircraft there are no sensors to monitor the air quality and potentially harmful gas levels (detect-to-warn sensors), much less systems to monitor and purify the air (detect-to-treat sensors) within the aircraft cabin.;The specific purpose of this research is to utilize a mathematical technique called principal component analysis (PCA) in conjunction with principal component regression (PCR) and proportionality constant calculations (PCC) to simplify complex, multi-component infrared (IR) spectra data sets into a reduced data set used for determination of the concentrations of the individual components. Use of PCA can significantly simplify data analysis as well as improve the ability to determine concentrations of individual target species in gas mixtures where significant band overlap occurs in the IR spectrum region. Application of this analytical numerical technique to IR spectrum analysis is important in improving performance of commercial sensors that airlines and aircraft manufacturers could potentially use in an aircraft cabin environment for multi-gas component monitoring.;The approach of this research is two-fold, consisting of a PCA application to compare simulation and experimental results with the corresponding PCR and PCC to determine quantitatively the component concentrations within a mixture. The experimental data sets consist of both two and three component systems that could potentially be present as air contaminants in an aircraft cabin. In addition, experimental data sets are analyzed for a hydrogen peroxide (H2O2) aqueous solution mixture to determine H2O2 concentrations at various levels that could be produced during use of a vapor phase hydrogen peroxide (VPHP) decontamination system. After the PCA application to two and three component systems, the analysis technique is further expanded to include the monitoring of potential bleed air contaminants from engine oil combustion. Simulation data sets created from database spectra were utilized to predict gas components and concentrations in unknown engine oil samples at high temperatures as well as time-evolved gases from the heating of engine oils.
机译:机舱内的空气质量问题越来越受到飞行员和空姐工会的关注。这是由于空气质量差引起的暴露事件,在某些情况下,这些气体可能是由于引气从飞机外部流出,然后通过发动机进入飞机机舱内而含有有毒的油成分。飞机乘务员的重大短期和长期医疗问题已归因于接触。空气质量监测的需求尤其明显,因为目前飞机中没有传感器来监测空气质量和潜在的有害气体水平(检测到警告传感器),而更少的系统可以监测和净化空气(检测到治疗传感器);这项研究的特定目的是利用一种称为主成分分析(PCA)的数学技术,结合主成分回归(PCR)和比例常数计算(PCC)来简化复杂的多组分红外(IR)光谱数据集简化为用于确定各个组分浓度的数据集。使用PCA可以显着简化数据分析,并提高确定混合气体中单个目标物质浓度的能力,在混合气体中,红外光谱区域出现明显的谱带重叠。该分析数值技术在红外光谱分析中的应用对于提高商业传感器的性能非常重要,航空公司和飞机制造商可以在飞机机舱环境中使用该传感器进行多种气体成分监测。该研究方法有两个方面,包括PCA应用程序将模拟和实验结果与相应的PCR和PCC进行比较,以定量确定混合物中各组分的浓度。实验数据集由两个和三个组件系统组成,这些组件系统可能作为飞机机舱中的空气污染物存在。此外,分析过氧化氢(H2O2)水溶液混合物的实验数据集,以确定在使用气相过氧化氢(VPHP)去污系统期间可能产生的各种水平的H2O2浓度。在将PCA应用到两个和三个组件系统后,分析技术进一步扩展到包括监视来自机油燃烧的潜在引气污染物。利用数据库光谱创建的模拟数据集可用于预测高温下未知发动机油样品中的气体成分和浓度,以及来自加热发动机油的随时间变化的气体。

著录项

  • 作者

    Haney, Ricky Lance.;

  • 作者单位

    Auburn University.;

  • 授予单位 Auburn University.;
  • 学科 Chemistry Analytical.;Engineering Materials Science.;Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 190 p.
  • 总页数 190
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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