ENOSE Performance in Transient Time and Steady State Area of Gas Sensor Response for Ammonia Gas: Comparison and Study

Kuan Geng, Jahangir Moshayedi Ata, Jing-hao Chen, Jiandong Hu, Hao Zhang
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引用次数: 1

Abstract

This paper proposed an electronic nose system that utilized a SnO2 semiconductor sensor array to detect volatile ammonia gas in farmland. All sensors were controlled by the Arduino development board. The system could collect data during both the steady-state and transient phases of sensor operation. The collected data was analyzed using PCA (principal component analysis) and MLP (Multi-layer perceptron) neural networks. The experiment was divided into two parts: The first part analyzed four concentrations of ammonia (100ppm, 200ppm, 400ppm, and Air) using PCA and MLP, which successfully distinguished the concentrations with an identification rate of over 95%. In the second part, four gases (air mixed with ammonia, pure ammonia gas, air mixed with ethanol, and pure ethanol) were analyzed using PCA and MLP, with the electronic nose system successfully distinguishing between the four types of gases. The system could read and process data during the transient phase of the sensor, and the constructed sensor array electronic nose system and acquisition method has significant potential for ammonia detection in agricultural environments.
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气体传感器对氨气响应的瞬态时间和稳态区域的ENOSE性能:比较与研究
提出了一种利用SnO2半导体传感器阵列检测农田挥发性氨气的电子鼻系统。所有传感器均由Arduino开发板控制。该系统可以在传感器工作的稳态和瞬态阶段采集数据。使用主成分分析(PCA)和多层感知器(MLP)神经网络对收集到的数据进行分析。实验分为两部分:第一部分使用PCA和MLP分析了4种浓度的氨(100ppm、200ppm、400ppm和Air),成功区分了浓度,识别率在95%以上。第二部分采用主成分分析法和MLP法对四种气体(混合氨气、纯氨气、混合乙醇气和纯乙醇气)进行分析,电子鼻系统成功区分了四种气体。该系统可以在传感器瞬态阶段读取和处理数据,所构建的传感器阵列电子鼻系统和采集方法在农业环境中氨检测具有重要的潜力。
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