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Application Research on Gas Detection with Artificial Olfactory System

机译:人工嗅觉系统在气体检测中的应用研究

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By study and simulation on the theoretic model and principle of electronic nose system in artificial olfactory system, this paper proposes an electronic nose system which combines gas sensor array and artificial neural network recognition algorithm. In order to testify systematic rationality and experimental realizability which is implemented in multiple gas measurement, we discuss related methods and steps which apply the system to quality and quantity of multiple gas. Through the analysis on experiments of gas detection which combines gas sensor array and pattern recognition technology, we apply BP feed forward neural network to analyze three gases in quality and quantity. Our research involves experimental configuration method of low concentration gas, input, output and hidden layer element determination method of BP feed forward network in quality and quantity analysis of multiple gases, signal pretreatment algorithm and gas sensor array response vector normalization. The experimental data show that the system designed in this paper makes recognition of 3 gases with 100% qualitative recognition and lower error of quantitative recognition.
机译:通过对人工嗅觉系统中电子鼻系统的理论模型和原理进行研究和仿真,提出了一种结合了气体传感器阵列和人工神经网络识别算法的电子鼻系统。为了验证在多种气体测量中实现的系统合理性和实验可实现性,我们讨论了将系统应用于多种气体的质量和数量的相关方法和步骤。通过结合气体传感器阵列和模式识别技术的气体检测实验分析,我们应用BP前馈神经网络分析了三种气体的质和量。我们的研究涉及多种气体的质量和数量分析中低浓度气体的实验配置方法,BP前馈网络的输入,输出和隐层元素确定方法,信号预处理算法和气体传感器阵列响应矢量归一化。实验数据表明,本文所设计的系统对三种气体的识别具有100%的定性识别和较低的定量识别误差。

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