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Advanced Agent Identification With Fluctuation-Enhanced Sensing

机译:具有波动增强感应功能的高级业务代表识别

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摘要

Conventional agent sensing methods normally use the steady state sensor values for agent classification. Many sensing elements (Hines , 1999; Ryan, 2004; Young, 2003; Qian, 2004; Qian, 2006; Carmel, 2003) are needed in order to correctly classify multiple agents in mixtures. Fluctuation-enhanced sensing (FES) looks beyond the steady-state values and extracts agent information from spectra and bispectra. As a result, it is possible to use a single sensor to perform multiple agent classification. This paper summarizes the application of some advanced algorithms that can classify and estimate concentrations of different chemical agents. Our tool involves two steps. First, spectral and bispectral features will be extracted from the sensor signals. The features contain unique agent characteristics. Second, the features are fed into a hyperspectral signal processing algorithm for agent classification and concentration estimation. The basic idea here is to use the spectral/bispectral shape information to perform agent classification. Extensive simulations have been performed by using simulated nanosensor data, as well as actual experimental data using commercial sensor (Taguchi). It was observed that our algorithms are able to accurately classify different agents, and also can estimate the concentration of the agents. Bispectra contain more information than spectra at the expense of high-computational costs. Specific nanostructured sensor model data yielded excellent performance because the agent responses are additive with this type of sensor. Moreover, for measured conventional sensor outputs, our algorithms also showed reasonable performance in terms of agent classification.
机译:传统的代理感测方法通常使用稳态传感器值进行代理分类。为了正确地对混合物中的多种成分进行分类,需要许多传感元件(Hines,1999; Ryan,2004; Young,2003; Qian,2004; Qian,2006; Carmel,2003)。波动增强传感(FES)超越了稳态值,并从光谱和双谱中提取了代理信息。结果,可以使用单个传感器来执行多个代理分类。本文总结了一些高级算法的应用,这些算法可以分类和估计不同化学试剂的浓度。我们的工具涉及两个步骤。首先,将从传感器信号中提取光谱和双光谱特征。这些功能包含独特的座席特征。第二,将特征输入到高光谱信号处理算法中,以进行试剂分类和浓度估算。这里的基本思想是使用光谱/双光谱形状信息执行代理分类。通过使用模拟的纳米传感器数据以及使用商业传感器(田口)的实际实验数据,已经进行了广泛的模拟。据观察,我们的算法能够准确地分类不同的药物,并且还可以估计药物的浓度。 Bispectra比光谱包含更多的信息,但要付出高昂的计算成本。特定的纳米结构传感器模型数据产生了出色的性能,因为试剂响应是此类传感器的累加。此外,对于常规传感器的测量输出,我们的算法在代理分类方面也显示出合理的性能。

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