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A particle filtering-based approach for remaining useful life predication of rolling element bearings

机译:一种基于粒子滤波的方法,用于剩余轧制元件轴承的使用寿命预测

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Rolling element bearings are one of the most widely used components in rotating machinery. However, they are also the components which frequently suffer from damage. Remaining useful life (RUL) prediction of rolling element bearings has received considerable attention, since it can avoid failure risks, and ensure availability, reliability and security. Model-based methods are commonly used in RUL prediction because of their high accuracy in long-time prediction. In model-based methods, a degradation indicator which describes the whole degradation process of bearings, however, is very critical but difficult to be extracted. A model function, used to predict the evolution trend and the RUL of bearings, is difficult to develop as well. In this paper, a particle filtering (PF)-based approach is developed to predict the RUL of rolling element bearings. In this approach, two modules are included, i.e. indicator calculation module and PF-based prediction module. In the first module, a new degradation indicator is calculated based on correlation matrix clustering and weight algorithm. This indicator fuses different characteristics of multiple features, includes more fault information and therefore has a better prediction tendency. In the second module, a PF-based approach is proposed to predict the RUL of bearings. Different from the traditional PF-based approach, a new algorithm of parameter initialization is introduced to calculate the initial parameters of the state space model. Experimental data of rolling element bearings are used to demonstrate the effectiveness of this approach. For comparison, another RUL prediction approach based on adaptive neuro-fuzzy inference system (ANFIS) is also utilized to process the experimental data. The result shows that the proposed approach can effectively calculate the appropriate degradation indicator, initialize the model parameters and perform better in RUL prediction than the ANFIS-based approach for rolling element bearings.
机译:滚动元件轴承是旋转机械中最广泛使用的部件之一。然而,它们也是经常遭受损坏的组件。剩余的使用寿命(RUL)滚动元件轴承的预测已经受到相当大的关注,因为它可以避免失败风险,并确保可用性,可靠性和安全性。基于模型的方法通常在RUL预测中使用,因为它们在长时间预测中的高精度。然而,在基于模型的方法中,描述了描述轴承的整个劣化过程的劣化指示器非常关键,但难以提取。用于预测进化趋势和轴承RUL的模型功能也很难发展。在本文中,开发了一种基于颗粒滤波(PF)的方法以预测滚动元件轴承的rul。在这种方法中,包括两个模块,即指示符计算模块和基于PF的预测模块。在第一模块中,基于相关矩阵聚类和权重算法来计算新的劣化指示符。该指示器熔化多个特征的不同特征,包括更多故障信息,因此具有更好的预测趋势。在第二模块中,提出了一种基于PF的方法来预测轴承的rul。不同于传统的基于PF的方法,引入了一种新的参数初始化算法来计算状态空间模型的初始参数。滚动元件轴承的实验数据用于展示这种方法的有效性。为了比较,还利用基于自适应神经模糊推理系统(ANFIS)的另一个RUL预测方法来处理实验数据。结果表明,该方法可以有效地计算适当的劣化指示符,初始化模型参数,并在RUL预测中执行比基于ANFI的滚动元件轴承的方法更好。

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