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Signal Processing Approaches to the Detection and Localization of Gas Chemical Sources using Partially Selective Sensors

机译:使用部分选择性传感器检测和定位气体化学源的信号处理方法

摘要

[eng]Due to recent progress, higher-order chemical instrumentation provides large amounts of data which need automated processing in order to extract relevant information. In most cases, the raw signals or spectra are too complex for manual analysis. The ability to detect, identify and quantitate chemical substances in gas phase in field operations is required in a huge number of applications. Among them, I would like to highlight the need for chemical sensing on diverse humanitarian, safety and security applications. In these cases, it becomes extremely important to continuously monitor the environments where chemicals are spread in order to be ready to act when abnormal events are discovered. In most critical scenarios the sample can not just be taken to the laboratory and analyzed, since an immediate answer is needed. In some other scenarios, the exploration of the area must be performed because the localization of the gas source or material of interest is unknown. This exploration can be performed using multiple mobile sensors in order to localize the chemical source or material. Different sensing technologies have been successfully used to detect and identify different chemical substances (gases or volatile compounds). These compounds could be either toxic or hazardous, or they can be signatures of the materials to be detected, for instance, explosives or drugs. Among these technologies, mobility based analyzers provide fast responses with high sensitivity. However, IMS instruments are not exempt of problems. Typically, they provide moderate selectivity, appearing overlapped peaks in the spectra. Moreover, the presence of humidity makes peaks wider, thus worsening the resolving power and the resolution. Furthermore, the response of IMS is non-linear as substance concentration increases and more than one peak can appear in the spectra due to the same compound. In the present thesis, these problems are addressed and applications using an Ion Mobility Spectrometer (IMS) and a Differential Mobility Analyzer (DMA) are shown. It is demonstrated that multivariate data analysis tools are more effective when dealing with these technologies. For the first time, multivariate data analysis tools have been applied to a novel DMA. It is shown that DMA could be established as a good instrumentation for the detection of explosives and the detection and quantitation of VOCs. Furthermore, Multivariate curve resolution Alternating Least Squares (MCR-ALS) is shown to be suitable to analyze IMS spectra qualitatively when interfering chemicals appear in the spectra and even when their behaviour is non-linear. Partial Least Squares (PLS) methods are demonstrated to work properly for the quantitative analysis of these signals; from this analysis the chemical concentrations of the target substances are obtained. It is also demonstrated in this thesis that the quantitative measurements from these sensors can be integrated in a gas source localization algorithm in order to improve the localization of the source in those scenarios where it is required. It is shown that the new proposal works significantly better in cases where the source strength is weak. This is illustrated presenting results from simulations generated under realistic conditions. Moreover, real-world data were obtained using a mobile robot mounting a photo ionization detector (PID). Experiments were carried out under forced ventilation and turbulences in indoors and outdoors environments. The results obtained validate the simulation results and confirm that the new localization algorithm can effectively operate in real environments.
机译:[eng]由于最近的进展,高阶化学仪器提供了大量数据,这些数据需要自动处理才能提取相关信息。在大多数情况下,原始信号或频谱对于手动分析而言过于复杂。在大量应用中,需要能够在现场操作中检测,识别和定量气相中的化学物质。其中,我要强调对多种人道主义,安全和安保应用进行化学感应的必要性。在这些情况下,持续监控化学物质扩散的环境变得非常重要,以便在发现异常事件时可以立即采取行动。在最关键的情况下,由于需要立即回答,因此样品不能仅被带到实验室进行分析。在其他一些情况下,必须进行该区域的勘探,因为未知气源或感兴趣的材料的位置。可以使用多个移动传感器执行此探索,以便定位化学源或材料。不同的传感技术已成功用于检测和识别不同的化学物质(气体或挥发性化合物)。这些化合物可能是有毒的或有害的,或者可能是要检测的材料的特征,例如炸药或毒品。在这些技术中,基于移动性的分析仪可提供高灵敏度的快速响应。但是,IMS工具并非无法解决问题。通常,它们提供适度的选择性,在光谱中出现重叠的峰。此外,湿度的存在会使峰变宽,从而降低了分离度和分离度。此外,随着物质浓度的增加,IMS的响应是非线性的,并且由于相同的化合物,光谱中可能会出现一个以上的峰。在本文中,解决了这些问题,并显示了使用离子迁移谱仪(IMS)和差分迁移率分析仪(DMA)的应用。事实证明,多元数据分析工具在处理这些技术时更为有效。多元数据分析工具首次应用于新型DMA。结果表明,可以将DMA建立为爆炸物检测以及VOC的检测和定量的良好仪器。此外,当光谱中出现干扰化学物质甚至其行为为非线性时,多元曲线分辨率交替最小二乘(MCR-ALS)被证明适合定性分析IMS光谱。事实证明,偏最小二乘(PLS)方法可以正确地用于这些信号的定量分析。通过该分析,获得目标物质的化学浓度。本文还表明,可以将来自这些传感器的定量测量结果集成到气源定位算法中,以便在需要的情况下改善气源的定位。结果表明,在光源强度较弱的情况下,新建议的效果明显更好。举例说明了在实际条件下生成的仿真结果。此外,使用安装了光电离检测器(PID)的移动机器人可以获取实际数据。在室内和室外环境中的强制通风和湍流下进行了实验。获得的结果验证了仿真结果,并确认了新的定位算法可以在实际环境中有效运行。

著录项

  • 作者

    Pomareda Sesé Victor;

  • 作者单位
  • 年度 2013
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  • 原文格式 PDF
  • 正文语种 eng
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