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首页> 外文期刊>Sensors Journal, IEEE >Online Chemical Sensor Signal Processing Using Estimation Theory: Quantification of Binary Mixtures of Organic Compounds in the Presence of Linear Baseline Drift and Outliers
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Online Chemical Sensor Signal Processing Using Estimation Theory: Quantification of Binary Mixtures of Organic Compounds in the Presence of Linear Baseline Drift and Outliers

机译:使用估计理论的在线化学传感器信号处理:在线性基线漂移和离群值存在下对有机化合物的二元混合物进行定量

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Compact sensor systems for on-site monitoring of groundwater for trace organic compounds in the liquid phase are currently under development in our laboratories. Potential challenges include sensor baseline drift and the presence of outliers in the data, along with difficulties extracting the contribution of individual BTEX compound (benzene, toluene, ethylbenzene, and xylenes) from the sensor response to mixtures containing multiple chemically similar compounds. As a first step, the approach presented here permits online estimation of analyte concentrations in binary mixtures of BTEX compounds in the presence of linear baseline drift and outliers. This paper investigates a sensor signal-processing approach based on estimation theory, specifically, Kalman filter (KF), extended KF, and discrete low-pass filter. The approach permits online linear baseline drift correction, filtering of outlier points, and estimation of analyte concentration(s) in binary mixtures and single analyte samples, before the sensor response reaches steady state. Sensor signals from mixtures of BTEX compounds were analyzed because these compounds are good indicators of accidental releases of fuel and oil into groundwater. Models were first developed for the sensor response so that estimation theory can be used to obtain the sensor parameters. The baseline-drift correction technique uses KF to perform online linear extrapolation or interpolation. The presented combination of sensor signal-processing techniques was simultaneously tested using actual measured data. Unknown sensor parameters and identification of analytes in samples were obtained within a relatively short period of time (8 min or less for the present sensor system), well before the sensor response reaches equilibrium.
机译:目前,我们实验室正在开发用于现场监测地下水中液相中痕量有机化合物的紧凑型传感器系统。潜在的挑战包括传感器基线漂移和数据中存在异常值,以及难以从传感器响应中提取单个BTEX化合物(苯,甲苯,乙苯和二甲苯)对包含多种化学相似化合物的混合物的贡献所带来的困难。第一步,此处介绍的方法允许在存在线性基线漂移和离群值的情况下在线估算BTEX化合物二元混合物中的分析物浓度。本文研究了一种基于估计理论的传感器信号处理方法,特别是卡尔曼滤波器(KF),扩展KF和离散低通滤波器。该方法允许在线线性基线漂移校正,离群点过滤以及在传感器响应达到稳态之前估算二元混合物和单个分析物样品中的分析物浓度。分析了来自BTEX化合物混合物的传感器信号,因为这些化合物是燃油和机油意外释放到地下水中的良好指示。首先开发用于传感器响应的模型,以便可以使用估计理论来获得传感器参数。基线漂移校正技术使用KF进行在线线性外推或插值。所提出的传感器信号处理技术组合同时使用实际测量数据进行了测试。在相对较短的时间段内(对于本传感器系统,此时间为8分钟或更短),就在传感器响应达到平衡之前就获得了未知的传感器参数和样品中分析物的鉴定。

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