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A novel approach to bearing prognostics based on impulse-driven measures, improved morphological filter and practical health indicator construction

机译:一种基于脉冲驱动测量、改进的形态学过滤器和实用健康指标构建的轴承预后新方法

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摘要

? 2023Data-driven predictions for bearing remaining useful lifetime (RUL) exhibit the potential in maintaining safety and reliability in industry. However, it is still a challenge to construct an accurate health indicator (HI) and RUL prediction model, particularly for long-term predictions. In this study, a novel approach is developed for bearing prognosis. First, an improved morphological filter and an adaptive bandpass filter are designed to accurately identify resonant frequency bands of bearings and extract weak impulses from noisy vibrations. Two impulse-driven measures, namely fault frequency amplitude (FFA) and its ratio, are newly defined to optimize parameters for signal processing. FFA is also selected as a sensitive feature for assessing bearing degradation. Second, a practical HI is designed based on multi-domain features and feature selection. The HI generates a smooth and monotonic degradation trend while maintaining sensitivity towards incipient defects. Finally, a hybrid model is constructed based on two popular degradation models to improve prediction accuracy. The results, obtained for wheelset bearings and two open-source bearings, demonstrate that the proposed measures and processing methods can adaptively extract repetitive impulses. Furthermore, the constructed HI and hybrid model perform more stable and accurate RUL predictions for different bearings and prediction steps.
机译:?2023 年数据驱动的轴承剩余使用寿命 (RUL) 预测显示出在保持工业安全性和可靠性方面的潜力。然而,构建准确的健康指标(HI)和RUL预测模型仍然是一个挑战,特别是对于长期预测。在这项研究中,开发了一种用于轴承预后的新方法。首先,设计了一种改进的形态滤波器和自适应带通滤波器,以准确识别轴承的谐振频带,并从噪声振动中提取微弱的脉冲。新定义了两种脉冲驱动的测量方法,即故障频率幅度(FFA)及其比率,以优化信号处理的参数。FFA也被选为评估轴承退化的敏感特征。其次,基于多域特征和特征选择设计实用的HI。HI 产生平滑和单调的退化趋势,同时保持对早期缺陷的灵敏度。最后,基于两种流行的退化模型构建混合模型,提高预测精度。对轮对轴承和两种开源轴承的结果表明,所提出的措施和处理方法可以自适应地提取重复脉冲。此外,所构建的HI和混合模型对不同轴承和预测步骤的RUL预测更加稳定和准确。

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