基于退化模型的连续小波变换积分离散能量算子预测剩余使用寿命

Yuhuang Zheng
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引用次数: 2

摘要

旋转机械的预测健康管理(PHM)已成为提高可靠性和减少机械故障的重要手段。轴承是最重要的设备部件之一,也是最常见的故障点之一。为了评估机器的退化,本文提出了一种轴承剩余使用寿命(RUL)预测方法。该方法采用一种新的健康指标和指数退化模型来预测轴承RUL。采用连续小波变换谱图积分离散Teager能量算子对轴承水平振动信号进行处理,提取健康指标。我们提出了一个指数退化模型来估计使用该健康指标的RUL。在训练阶段,通过对100个自举样本的核密度估计来估计模型的退化检测阈值和失效阈值。这些自举样本取自六个训练集。在测试阶段,使用健康指标和模型来估计轴承的当前健康状态并预测RUL。该方法适用于评价轴承的退化。实验结果表明,该方法可以有效地监测轴承退化并预测RUL。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Remaining Useful Life Using Continuous Wavelet Transform Integrated Discrete Teager Energy Operator with Degradation Model
Prognostics health management (PHM) for rotating machinery has become an important process for increasing reliability and reducing machine malfunctions in industry. Bearings are one of the most important equipment parts and are also one of the most common failure points. To assess the degradation of a machine, this paper presents a bearing remaining useful life (RUL) prediction method. The method relies on a novel health indicator and an exponential degradation model to predict bearing RUL. The health indicator is extracted by using a continuous wavelet transform spectrogram integrated discrete Teager energy operator to process horizontal vibration signals obtained from bearings. We present an exponential degradation model to estimate RUL using this health indicator. In the training phase, the degradation detection threshold and the failure threshold of this model are estimated by kernel density estimation of 100 bootstrapped samples. These bootstrapped samples are taken from the six training sets. In the test phase, the health indicator and the model are used to estimate the bearing’s current health state and predict the RUL. This method is suitable for evaluating the degradation of bearings. The experimental results show that this method can effectively monitor bearing degradation and predict the RUL.
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