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Online anomaly detection and remaining useful life prediction of rotating machinery based on cumulative summation features

机译:基于累积求和特征的旋转机械在线异常检测及剩余使用寿命预测

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摘要

The bearing is the core component of the gearbox transmission system. Once it is damaged during operation, it will cause the shutdown of the mechanical equipment for maintenance. It has important application significance to carry out fault detection and remaining useful life (RUL) prediction. Whereas, some bottlenecks, such as the noise interference of state characteristics, the excessive dependence of supervised learning on prior samples, and the practical RUL online calculation, restrict the industrial application of RUL prediction for rotating machinery equipment. To overcome the above problems, this paper introduces the discrete wavelet transform (DWT) to decrease the noise of the vibration acceleration signal obtained, and then uses the sliding average method to weaken the transient excitation. To make the state characteristics of the monitored bearing trendy, linear, and monotonic, this paper proposes a new set of state interpret indicators: energy and cumulative summation feature (CSF) to reflect the bearing health status. Based on the available bearing health information, the fault boundary threshold is established through the 3 σ criteria, which serves as the basis for first predicting time (FPT) detection. Once the FPT point is determined, this paper applies CSF to replace the original vibration acceleration amplitude as the degradation indicator, which has better linearity and monotonicity than amplitude-based indicators, and which is conducive to the implementation of simple structure curve fitting to carry out the overall RUL prediction. Comparing with existing methods, such as relevance vector machine (RVM), deep belief network (DBN), and particle filtering (PF)-based methods, the experimental results demonstrate that the proposed method has the best RUL prediction efficiency and the fastest convergence.
机译:轴承是齿轮箱传动系统的核心部件。一旦在运行过程中损坏,将导致机械设备停机维修。开展故障检测和剩余使用寿命(RUL)预测具有重要的应用意义。然而,一些瓶颈,如状态特性的噪声干扰、监督学习对先验样本的过度依赖以及实用的 RUL 在线计算,限制了 RUL 预测在旋转机械设备中的工业应用。为了克服上述问题,本文引入离散小波变换(DWT)来降低所得到的振动加速度信号的噪声,然后采用滑动平均法来减弱瞬态激励。为了使被监测轴承的状态特征具有趋势性、线性性和单调性,本文提出了一套新的状态解释指标:能量和累积求和特征(CSF)来反映轴承健康状态。根据现有的轴承健康信息,通过 3 σ标准建立断层边界阈值,作为首次预测时间 (FPT) 检测的基础。一旦确定了FPT点,本文就应用CSF代替原来的振动加速度幅值作为退化指标,与基于振幅的指标相比,该指标具有更好的线性度和单调性,有利于实现简单的结构曲线拟合,进行整体RUL预测。与现有方法相比,基于相关性向量机(RVM)、深度置信网络(DBN)和粒子滤波(PF)的方法,实验结果表明,所提方法具有最佳的RUL预测效率和最快的收敛性。

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