Research on fault mode and diagnosis of methane sensor

WANG Qi-jun , CHENG Jiu-long
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引用次数: 8

Abstract

To improve the reliability of coal mine safety monitoring systems we have analyzed the characteristics of a methane sensor, an important component of the monitoring system of production safety in a coal mine and studied the main type and mode of faults when the sensor was used on-line. We introduced a new method based on artificial neural network to detect faults of methane sensors. In addition, using the output information of a single methane sensor, we established a sensor output model of a dynamic non-linear neural network for on-line fault detection. Finally, the fault of the heating wire of the sensor was simulated, indicating that, when the methane sensor had a fault, the predicted output of the neural network clearly deviated from the actual output, exceeding the pre-set threshold and showing that a fault had occurred in the methane sensor. The result shows that the model has good convergence and stability, and is quite capable of meeting the requirements for on-line fault detection of methane sensors.

甲烷传感器故障模式与诊断研究
为了提高煤矿安全监测系统的可靠性,分析了煤矿安全生产监测系统的重要组成部分甲烷传感器的特点,研究了该传感器在线使用时的主要故障类型和故障模式。提出了一种基于人工神经网络的甲烷传感器故障检测方法。此外,利用单个甲烷传感器的输出信息,建立了用于在线故障检测的动态非线性神经网络传感器输出模型。最后,对传感器发热丝故障进行了仿真,结果表明,当甲烷传感器出现故障时,神经网络的预测输出明显偏离实际输出,超过了预先设定的阈值,表明甲烷传感器发生了故障。结果表明,该模型具有良好的收敛性和稳定性,能够满足甲烷传感器在线故障检测的要求。
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