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首页> 外文期刊>Sensors and Actuators >Using sensor arrays to decode NO_x/NH_3/C_3H_8 gas mixtures for automotive exhaust monitoring
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Using sensor arrays to decode NO_x/NH_3/C_3H_8 gas mixtures for automotive exhaust monitoring

机译:使用传感器阵列解码NO_x / NH_3 / C_3H_8混合气,以监测汽车排气

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摘要

An array of four mixed-potential sensors is employed to identify and quantify gases in complex mixtures of unknown composition which mimic diesel engine exhaust. The sensors use dense metal and metal oxide electrodes with a porous ceramic electrolyte, yttria-stabilized zirconia (YSZ). Since the sensors exhibit cross-specificity toward target gases, we develop a computational model for predicting gas concentrations in the mixtures. Our model is based on fundamental principles of gas-sensor interactions and, furthermore, takes into account the non-linearity of the observed sensor voltage response. Our approach enables accurate predictions of gas concentrations from the voltage output of the sensor array exposed to an extensive set of mixtures involving C3H8, NH3, NO and NO2. We find that our predictions remain accurate even if the model is trained using a reduced set of mixtures, or if the number of sensors is decreased to three or two. Our experimental and computational framework can be used to decipher contents of complex gas mixtures of unknown composition in numerous industrial, automotive, and national security settings.
机译:采用四个混合电位传感器的阵列来识别和量化模拟柴油发动机排气的未知成分的复杂混合物中的气体。传感器使用具有多孔陶瓷电解质,氧化钇稳定的氧化锆(YSZ)的致密金属和金属氧化物电极。由于传感器对目标气体表现出交叉特异性,因此我们开发了一种用于预测混合物中气体浓度的计算模型。我们的模型基于气体-传感器相互作用的基本原理,此外,还考虑了所观察到的传感器电压响应的非线性。我们的方法能够通过暴露于涉及C3H8,NH3,NO和NO2的大量混合物的传感器阵列的电压输出来准确预测气体浓度。我们发现,即使使用减少的一组混合训练模型,或者将传感器的数量减少到三个或两个,我们的预测仍然是准确的。我们的实验和计算框架可用于解密许多工业,汽车和国家安全机构中未知成分的复杂气体混合物的含量。

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