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Vibration-based bearing fault diagnosis by an integrated DWT-FFT approach and an adaptive neuro-fuzzy inference system

机译:集成DWT-FFT和自适应神经模糊推理系统的基于振动的轴承故障诊断

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The rotating machine, which can be subject to breakdowns or dysfunctions in its time-of-use, represents an essential part in the majority of industrial applications. Hence, their reliability, productivity, safety and availability are very important issues that are imposed to increase production with quality assurance as per given specification at a reasonable cost. Furthermore, because the bearing faults are the most frequent and critical defects in rotating machinery that may have a direct influence on the availability of the machine itself and also on those of the surrounding systems, a particular interest is carried in this paper to the analysis and diagnosis of these defects which can appear in the bearing's ball, inner race and outer race with various fault severity and rotating speed. This paper consists of the application of the Discrete Wavelet Transform DWT and Fast Fourier Transform FFT theories to extract the amplitude of the fundamental bearing defect frequencies in the vibration signal from a rotating machine. These parameters will be used by the Adaptive Neural Fuzzy Inference System ANFIS to automate the fault detection and diagnosis process. Experimental results show that the proposed procedure can classify with precision various types of bearing faults according to the fault location and severity.
机译:旋转机械在使用过程中可能会发生故障或故障,它代表了大多数工业应用中的重要组成部分。因此,它们的可靠性,生产率,安全性和可用性是非常重要的问题,这些问题被迫以合理的成本按照给定的规范以质量保证来提高产量。此外,由于轴承故障是旋转机械中最常见和最严重的缺陷,可能直接影响机械本身以及周围系统的可用性,因此本文特别关注分析和解决问题。诊断这些缺陷,这些缺陷可能出现在轴承的滚珠,内座圈和外座圈中,且具有不同的故障严重程度和转速。本文包括离散小波变换DWT和快速傅立叶变换FFT理论的应用,以从旋转机械的振动信号中提取基本轴承缺陷频率的幅度。自适应神经模糊推理系统ANFIS将使用这些参数来自动执行故障检测和诊断过程。实验结果表明,该方法可以根据故障的位置和严重程度,对各种类型的轴承故障进行精确分类。

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