电磁阀剩余使用寿命预测的参数自适应数据驱动方法

Xuanheng Tang, Jun Peng, B. Chen, Fu Jiang, Yingze Yang, Rui Zhang, Dianzhu Gao, Xiaoyong Zhang, Zhiwu Huang
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引用次数: 5

摘要

电磁阀作为各种工程系统的关键部件,具有重要的意义,其故障可能会造成意外的人员伤亡。准确预测sv的剩余使用寿命(RUL)有助于在sv发生故障之前做出维护决策。sv具有结构复杂、多物理场耦合工作机理和降解机理复杂的特点,难以建立精确的物理模型。不同的个体在不同的工作环境中可能会经历不同的退化过程。本文提出了一种数据驱动的sv预测方法。首先,构建了基于动态驱动电流的健康指数,并建立了退化路径的指数模型;然后,引入粒子滤波(PF)来降低在线测量中的噪声。在去噪测量的基础上,利用贝叶斯估计动态自适应更新指数模型的参数。最后,通过设计的sv实验验证了该方法的有效性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A parameter adaptive data-driven approach for remaining useful life prediction of solenoid valves
As crucial parts of various engineering systems, solenoid valves (SVs) are of great importance and their failure may cause unexpected casualties. Accurately predicting the remaining useful life (RUL) of SVs helps making maintenance decision before they break down. It is hard to establish accurate physical model of SVs as they are characterized by complicated structure, multi-physics coupled working mechanism and complex degradation mechanisms. Different individuals may experience distincted degradation processes in various working environment. In this paper, a data-driven prognostic method is proposed for SVs. Firstly, a health index based on the dynamic driven current of SVs is constructed and an exponential model is established to characterize the degradation path. Then, the particle filter (PF) is introduced to reduce the noise of online measurement. Based on the denoised measurement, the parameters of the exponential model are adaptively updated with Bayesian estimation dynamically. Finally, the effectiveness and practicability of proposed method is validated by the designed experiments on SVs.
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