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BACK PROPAGATION NEURAL NETWORK MODEL FOR TEMPERATURE AND HUMIDITY COMPENSATION OF A NON DISPERSIVE INFRARED METHANE SENSOR
Authors:Hairong Wang  Wei Zhang  Liudong You  Guoying Yuan  Yulong Zhao  Zhuangde Jiang
Affiliation:1. State Key Laboratory for Manufacturing Systems Engineering , Xi'an , Shaanxi , P. R. China;2. Institute of Precision Engineering , School of Mechanical Engineering, Xi'an Jiaotong University , Xi'an , Shaanxi , P. R. China whairong@mail.xjtu.edu.cn;4. Institute of Precision Engineering , School of Mechanical Engineering, Xi'an Jiaotong University , Xi'an , Shaanxi , P. R. China
Abstract:The infrared absorption gas sensor detects CH4, CO, CO2, and other gases accurately and rapidly. However, temperature and humidity have a great impact on the gas sensor's performance. This article studied the response of an infrared methane gas sensor under different temperatures and humidity conditions. After analyzing the compensation methods, a back propagation neural network was chosen to compensate the nonlinear error caused by temperature and humidity. The optimal parameters of the neural network are reported in this article. After the compensation, the mean error of the gas sensor's output was between 0.02–0.08 vol %, and the maximum relative error dropped to 8.33% of the relative error before compensation. The results demonstrated that the back propagation neural network is an effective method to eliminate the influence of temperature and humidity on infrared methane gas sensors.
Keywords:infrared  methane gas detection  NDIR  neural network  temperature and humidity compensation
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