基于分数布朗运动的滚子轴承剩余使用寿命预测

Wanqing Song, Mingdeng Zhong, Minjie Yang, Deyu Qi, Simone Spadini, Piercarlo Cattani, Francesco Villecco
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引用次数: 0

摘要

滚子轴承退化具有分形特征,如自相似性和长程依赖性(LRD)。然而,现有的剩余使用寿命(RUL)预测模型都是无记忆或短程依赖的。为此,我们提出了一种基于分数布朗运动(FBM)的剩余使用寿命预测模型。轴承故障可能发生在不同的位置,因此很难准确提取其退化特征。通过变异模态分解(VMD),原始退化特征被分解为不同频率的多个分量。不同分量的单调性、稳健性和趋势都会被计算出来。具有最佳度量值的频率成分被选为训练数据。这样,预测模型的性能就会大大提高。降解模型中的未知参数采用最大似然法进行估计。蒙特卡洛法用于预测 RUL。介绍了一个轴承案例研究,并使用多个指标对预测性能进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remaining Useful Life Prediction of Roller Bearings Based on Fractional Brownian Motion
Roller bearing degradation features fractal characteristics such as self-similarity and long-range dependence (LRD). However, the existing remaining useful life (RUL) prediction models are memoryless or short-range dependent. To this end, we propose a RUL prediction model based on fractional Brownian motion (FBM). Bearing faults can happen in different places, and thus their degradation features are difficult to extract accurately. Through variational mode decomposition (VMD), the original degradation feature is decomposed into several components of different frequencies. The monotonicity, robustness and trends of the different components are calculated. The frequency component with the best metric values is selected as the training data. In this way, the performance of the prediction model is hugely improved. The unknown parameters in the degradation model are estimated by the maximum likelihood algorithm. The Monte Carlo method is applied to predict the RUL. A case study of a bearing is presented and the prediction performance is evaluated using multiple indicators.
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