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Real-time detection of airborne chemicals

机译:实时检测空气中的化学物质

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Abstract: Accurate, real time air quality measurements are difficult to make, because real time sensors for some gas species are not specific to a single gas. For example, some carbon dioxide sensors react to hydrogen sulfide. By combining the response of several types of real time gas sensors the Real-time Air Quality Monitoring System (RAQMS) accurately measures many different gases. The sensor suite for the INEEL's Real-time Air Quality Monitoring System (RAQMS) incudes seven, inexpensive, commercially-available chemical sensors for gases associated with air quality. These chemical sensors are marketed as devices to measure carbon dioxide, hydrogen sulfide, carbon monoxide, sulfur dioxide, nitrogen dioxide, water vapor and volatile organic compounds (VOC's). However, these chemical sensors respond to more than a single compound, e.g. both the VOC and the carbon dioxide sensors respond strongly to methane. This multiple sensor response to a given chemical is used to advantage in the RAQMS system, as patterns of responses by the sensors were found to be unique and distinguishable for several chemicals. Therefore, there is the potential that the seven sensors combined output can: (1) provide more accurate measurements of the advertized gases and (2) estimate the presence and quantity of additional gases. The patterns of sensor response can be thought of as clusters of data points in a seven dimensional space. One dimension for each sensor's output. For all of the gases tested, these clusters were separated enough that good quantitative results were obtained. As an example, the prototype RAQMS is able to distinguish methane from butane and predict accurate concentrations of both gases. A mathematical technique for estimating probability density functions from random samples is used to distinguish the data clusters from each other and to make gas concentration estimates. Bayes optimal estimates of gas concentration are calculated using the probability density function. The Bayes optimal estimates are analogous to least square error curve fits or regression analysis. A computer program was used to find the best parameters for the Bayes optimal estimating functions. The program implemented a probabilistic neural net. !2
机译:摘要:由于某些气体种类的实时传感器并非特定于单一气体,因此难以进行准确的实时空气质量测量。例如,某些二氧化碳传感器会与硫化氢发生反应。通过结合几种类型的实时气体传感器的响应,实时空气质量监测系统(RAQMS)可以精确测量许多不同的气体。 INEEL的实时空气质量监测系统(RAQMS)的传感器套件包括七个与市场空气质量有关的,廉价的,可商购的化学传感器。这些化学传感器作为测量二氧化碳,硫化氢,一氧化碳,二氧化硫,二氧化氮,水蒸气和挥发性有机化合物(VOC)的设备销售。但是,这些化学传感器对多种化合物的反应不止一种,例如VOC和二氧化碳传感器都对甲烷产生强烈反应。这种多传感器对给定化学物质的响应在RAQMS系统中得到了利用,因为发现传感器对多种化学物质的响应模式是独特且可区分的。因此,这七个传感器的组合输出具有以下潜力:(1)提供对所输送气体的更准确测量,以及(2)估计其他气体的存在和数量。传感器响应的模式可以认为是七维空间中的数据点簇。每个传感器输出的一维尺寸。对于所有测试的气体,这些团簇被充分分离,从而获得了良好的定量结果。例如,原型RAQMS能够区分甲烷和丁烷,并预测两种气体的准确浓度。用于从随机样本中估计概率密度函数的数学技术用于将数据集群彼此区分开并进行气体浓度估计。使用概率密度函数计算气体浓度的贝叶斯最佳估计。贝叶斯最佳估计类似于最小二乘误差曲线拟合或回归分析。使用计算机程序来找到贝叶斯最佳估计函数的最佳参数。该程序实现了一个概率神经网络。 !2

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