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Analyzing the response of a temperature modulated tin-oxide gas sensor using local linear neuro-fuzzy model for gas detection

机译:使用局部线性神经模糊模型分析温度调制的氧化锡气体传感器的响应,以进行气体检测

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A resistive gas sensor (RGS) under temperature modulation regime is considered as a system for gas detection. Five target gases including Methanol, Ethanol, 2-Propanol, 1-Butanol, and Hydrogen each at 11 concentration levels, were selected for diagnosis using a single commercial gas sensor. For modulating the sensor, a staircase containing five voltage steps each with 20s plateau is applied to micro-heater of the sensor. This, in turn, alters both the temperature and the resistance profiles of the sensing layer which are considered as the input and the output of the defined system, respectively. In this way, five systems corresponding to five steps of the system input can be distinguished. Next, each system under the influence of the examined target gases is modeled with neuro-fuzzy network. Local linear model tree (LOLIMOT) used as learning algorithm of the systems and weights of the trained networks utilized as the features of the sensor in presence of target gas. Mapping these feature vectors using linear discriminant analysis showed successful classification of all target gases.
机译:在温度调制方式下的电阻式气体传感器(RGS)被认为是用于气体检测的系统。使用单个商用气体传感器选择了五种目标气体,包括11种浓度的甲醇,乙醇,2-丙醇,1-丁醇和氢气,以进行诊断。为了调制传感器,将包含五个电压阶跃(每个阶跃为20s的平稳段)的阶梯应用于传感器的微型加热器。这依次改变了感测层的温度和电阻分布,它们分别被视为所定义系统的输入和输出。以此方式,可以区分与系统输入的五个步骤相对应的五个系统。接下来,使用神经模糊网络对受检目标气体影响下的每个系统进行建模。局部线性模型树(LOLIMOT)用作系统的学习算法,训练网络的权重用作目标气体存在时传感器的功能。使用线性判别分析对这些特征向量进行映射,可以成功分类所有目标气体。

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