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Centrifugal Pump Bearing Fault Diagnose Based on Time-Frequency Domain Analysis and BP-Neural Network

机译:基于时频域分析和BP-神经网络的离心泵轴承故障诊断

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Fault refers to the loss of function of equipment during operation. When a fault occurs, the equipment would usually show some surface features, which can be also called fault signals. Thus, the faults of the equipment can be diagnosed by deep analysis. Among the mechanical and electrical products, the centrifugal pump is one of the most typical ones, which has the majority characteristics of equipment in various kinds of ordnance. Through the study of centrifugal pump fault diagnose, the route of diagnose of mechanical and electrical products and the establishment of diagnose system can be clarified. In the study, the composition and function of centrifugal pump is firstly introduced. So is the fault diagnose system. Then the concept of the fault diagnose experiment is given. The data gathered by the diagnose system are processed in time and frequency domain. The BP- neural network is also applied to analyse the pump's fault which is injected during the experiment. The analysis result reveals that the BP- neural network can effectively estimate the condition of centrifugal pump and distinguish the different fault modes.
机译:故障是指操作期间设备功能的损失。当发生故障时,设备通常会显示一些表面特征,这也可以称为故障信号。因此,通过深度分析可以诊断设备的故障。在机械和电气产品中,离心泵是最典型的泵之一,其具有各种动作的各种设备的多数特性。通过对离心泵故障诊断的研究,可以澄清机电产品的诊断途径和诊断系统的建立。在研究中,首先引入了离心泵的组成和功能。这是故障诊断系统。然后给出了故障诊断实验的概念。由诊断系统收集的数据在时间和频域中进行处理。 BP-神经网络也应用于分析在实验期间注入的泵的故障。分析结果表明,BP-神经网络可以有效地估计离心泵的条件并区分不同的故障模式。

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