首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Fuzzy model-based condition monitoring of a dry vacuum pump via time and frequency analysis of the exhaust pressure signal
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Fuzzy model-based condition monitoring of a dry vacuum pump via time and frequency analysis of the exhaust pressure signal

机译:通过排气压力信号的时间和频率分析,基于模糊模型的干式真空泵状态监测

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摘要

A fuzzy model-based diagnostic scheme is designed to monitor dry vacuum pump performance and detect two fault conditions, mechanical inefficiency and exhaust system blockage. The diagnostic scheme is based on time and frequency analysis of the exhaust pressure signal. Power ratios of certain frequency components in the signal spectrum can be used to predict the gas load, motor current and hence mechanical efficiency. Changes in the periodic features of the signal, symptomatic of fault conditions can be detected using a fuzzy reference model. A fuzzy rule base is used to analyse outputs of the reference model and the load estimator and produce a diagnosis of the pump condition. Experimental results show that the motor current estimation had a root mean squared error of 0.11 A (~5 per cent). Two fault symptoms, a 29 per cent obstruction of the exhaust silencer and an 8 per cent increase in current with respect to gas load, were simulated on the pump test bed and successfully diagnosed. [PUBLICATION ABSTRACT]
机译:设计了基于模糊模型的诊断方案,以监控干式真空泵的性能并检测两个故障状况,即机械效率低下和排气系统堵塞。该诊断方案基于排气压力信号的时间和频率分析。信号频谱中某些频率分量的功率比可用于预测气体负载,电动机电流以及机械效率。可以使用模糊参考模型检测信号的周期性变化,故障状况的症状。模糊规则库用于分析参考模型和负载估算器的输出并产生泵状态的诊断。实验结果表明,电动机电流估计的均方根误差为0.11 A(约5%)。在泵测试台上模拟并成功诊断了两种故障症状,即排气消音器阻塞29%,相对于气体负载而言电流增加8%。 [出版物摘要]

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