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Online Drift Compensation for Chemical Sensors Using Estimation Theory

机译:基于估计理论的化学传感器在线漂移补偿

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Sensor drift from slowly changing environmental conditions and other instabilities can greatly degrade a chemical sensor's performance, resulting in poor identification and analyte quantification. In the present work, estimation theory (i.e., various forms of the Kalman filter) is used for online compensation of baseline drift in the response of chemical sensors. Two different cases, which depend on the knowledge of the characteristics of the sensor system, are studied. First, an unknown input is considered, which represents the practical case of analyte detection and quantification. Then, the more general case, in which the sensor parameters and the input are both unknown, is studied. The techniques are applied to simulated sensor data, for which the true baseline and response are known, and to actual liquid-phase SH-SAW sensor data measured during the detection of organophosphates. It is shown that the technique is capable of estimating the baseline signal and recovering the true sensor signal due only to the presence of the analyte. This is true even when the baseline drift changes rate or direction during the detection process or when the analyte is not completely flushed from the system.
机译:缓慢变化的环境条件和其他不稳定性引起的传感器漂移会大大降低化学传感器的性能,从而导致鉴定和分析物定量不佳。在当前的工作中,估计理论(即各种形式的卡尔曼滤波器)被用于在线补偿化学传感器响应中的基线漂移。研究了两种不同的情况,这取决于传感器系统的特性知识。首先,考虑未知输入,该输入代表分析物检测和定量的实际情况。然后,研究更普遍的情况,其中传感器参数和输入都未知。该技术适用于模拟传感器数据(已知真实的基线和响应)以及有机磷酸酯检测过程中测得的实际液相SH-SAW传感器数据。结果表明,该技术能够估计基线信号并仅由于分析物的存在而恢复真实的传感器信号。即使在检测过程中基线漂移改变了速率或方向,或者当分析物没有从系统中完全冲洗掉时,也是如此。

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