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A mixture Weibull proportional hazard model for mechanical system failure prediction utilising lifetime and monitoring data

机译:利用寿命和监测数据的机械系统故障预测的混合威布尔比例风险模型

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摘要

As mechanical systems increase in complexity, it is becoming more and more common to observe multiple failure modes. The system failure can be regarded as the result of interaction and competition between different failure modes. It is therefore necessary to combine multiple failure modes when analysing the failure of an overall system. In this paper, a mixture Weibull proportional hazard model (MWPHM) is proposed to predict the failure of a mechanical system with multiple failure modes. The mixed model parameters are estimated by combining historical lifetime and monitoring data of all failure modes. In addition, the system failure probability density is obtained by proportionally mixing the failure probability density of multiple failure modes. Monitoring data are input into the MWPHM to estimate the system reliability and predict the system failure time. A simulated sample set is used to verify the ability of the MWPHM to model multiple failure modes. Finally, the MWPHM and the traditional Weibull proportional hazard model (WPHM) are applied to a high-pressure water descaling pump, which has two failure modes: sealing ring wear and thrust bearing damage. Results show that the MWPHM is greatly superior in system failure prediction to the WPHM.
机译:随着机械系统复杂性的增加,观察多种故障模式变得越来越普遍。系统故障可以看作是不同故障模式之间相互作用和竞争的结果。因此,在分析整个系统的故障时,有必要组合多种故障模式。本文提出了一种混合威布尔比例风险模型(MWPHM)来预测具有多个失效模式的机械系统的失效。通过组合历史寿命和所有故障模式的监视数据来估计混合模型参数。另外,通过将多个故障模式的故障概率密度按比例混合来获得系统故障概率密度。监视数据被输入到MWPHM中,以估计系统可靠性并预测系统故障时间。模拟样本集用于验证MWPHM对多个故障模式进行建模的能力。最后,将MWWPM和传统的威布尔比例危险模型(WPHM)应用于高压水除垢泵,该泵具有两种失效模式:密封环磨损和推力轴承损坏。结果表明,MWWPH在系统故障预测方面大大优于WPHM。

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