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Fault Diagnosis for a Rolling Bearing Used in a Reciprocating Machine by Adaptive Filtering Technique and Fuzzy Neural Network

机译:基于自适应滤波和模糊神经网络的往复机械滚动轴承故障诊断。

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摘要

This paper presents a method of fault diagnosis for a rolling bearing used in a reciprocating machine by the adaptive filtering technique and a fuzzy neural network. The adaptive filtering is used for noise cancelling and feature extraction from vibration signal measured for the diagnosis. A fuzzy neural network is used to automatically distinguish the fault types of a bearing by time domain features. Using the signals processed by adaptive filtering, the neural network can quickly converge when learning, and can quickly distinguish fault types when diagnosing. The spectrum analysis of an enveloped time signal is also used for the fault diagnosis. Practical examples of diagnosis for a rice husking machine are shown in order to verify the efficiency of the method. All diagnosis results of the spectrum analysis and the fuzzy neural network show that the method proposed in this paper is very effective even for cancelling highly correlated noise, and for automatically discriminating the fault types with a high accuracy.
机译:提出了一种基于自适应滤波技术和模糊神经网络的往复机滚动轴承故障诊断方法。自适应滤波用于噪声消除和从用于诊断的测量振动信号中提取特征。模糊神经网络用于通过时域特征自动区分轴承的故障类型。利用自适应滤波处理的信号,神经网络可以在学习时快速收敛,并且在诊断时可以快速区分故障类型。包络时间信号的频谱分析也用于故障诊断。为了验证该方法的有效性,给出了剥壳机诊断的实际示例。频谱分析和模糊神经网络的所有诊断结果表明,本文提出的方法即使在消除高度相关的噪声以及以高准确度自动识别故障类型方面也非常有效。

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