Spindle Bearings Fault Diagnosis Technique Based on Integration of Zero Resonator Frequency Filter and Discrete Wavelet Packet Transform

Avitus Titus Mwelinde, Hongyu Jin, Jamal Banzi, Hongya Fu, Zhenyu Han
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Abstract

Spindle bearing is one of the machine elements in the spindle that is mostly vulnerable to failure. Its failure may result into total machine tool breakdown and other associated catastrophic consequences. An early identification of the failure is emphasized for reducing extreme damages of the machine tools. This study develops a novel hybrid algorithm combining the Zero Resonator Frequency Filter (ZRFF) and the Discrete Wavelet Packet Transform (DWPT) for early spindle bearing fault detection and diagnosis. The integrated method uses the ZRFF as the first level of de-noising the vibration signals and the DWPT for clear extraction of crucial periodic impulse features that are not easily visible from the first de-noising. The obtained frequency spectrum gives a dominant peak line which corresponds to the fault frequency of interest. An optimum wavelet decomposition level is also determined using the minimum Shannon entropy criteria. The experimental datasets from Case Western Reserve University (CWRU) and simulated signal were used to test the validity of the proposed algorithm. The proposed algorithm had superior performance in terms of computational efficiency (45s) and high classification accuracy of the bearings faults when compared with other methods.
基于零谐振器频率滤波和离散小波包变换集成的主轴轴承故障诊断技术
主轴轴承是主轴中最容易发生故障的机械部件之一。它的故障可能导致整个机床的故障和其他相关的灾难性后果。强调故障的早期识别,以减少机床的极端损伤。本文提出了一种将零谐振频率滤波器(ZRFF)和离散小波包变换(DWPT)相结合的新型主轴轴承故障早期检测与诊断混合算法。该综合方法使用ZRFF作为振动信号的第一级去噪,使用DWPT清晰地提取关键的周期脉冲特征,这些特征在第一级去噪中不容易看到。得到的频谱给出了一个主峰线,该主峰线对应于感兴趣的故障频率。利用最小香农熵准则确定了最佳小波分解水平。利用美国凯斯西储大学(CWRU)的实验数据集和仿真信号验证了该算法的有效性。与其他方法相比,该算法在计算效率(45秒)和轴承故障分类精度方面具有优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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