具有不确定性协变量分布参数下的扩展预测维修模型

Guoqiang Tong, Xinbo Qian
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引用次数: 1

摘要

预测性维护是一种最新的维护策略,在许多领域得到了广泛的应用。对于大多数应用,状态监测可能不能直接反映退化的程度。因此,可以综合考虑状态监测和寿命数据来估计作为退化状态的失效危害。比例风险模型是其中一种比较流行的方法。比例风险模型将状态监测数据作为内协变量,预测维修模型一般假定协变量的分布参数确定。但在实际应用中,由于元器件工作条件和传感器检测精度波动的影响,分布参数可能存在不确定性。为此,本文提出了一种协变量分布参数不确定情况下的扩展预测维修模型。对于模型,采用贝叶斯更新方法对时间固定的协变量分布参数进行更新。采用蒙特卡罗模拟法对扩展预测维修模型在各种预测情景下的预期成本率进行了近似估计。在仿真研究中,分析了协变量分布参数的不确定性对最优预测维护策略的影响。结果表明,该模型能有效降低维修成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Extended Predictive Maintenance Model under Covariate Distribution Parameters with Uncertainty
Predictive maintenance is the latest maintenance strategy, and it has been widely used in many areas. For most applications, condition monitoring may not directly reflect the degree of degradation. Therefore, both condition monitoring and life data can be considered comprehensively to estimate the failure hazards as the degradation state. And proportional hazard model is one of the popular methods. The proportional hazard model considers condition monitoring data as internal covariates, and it is generally assumed that distribution parameters of the covariates are determined for the predictive maintenance model. However, the distribution parameters may be of uncertainty due to the influence of component operating conditions and sensor detection accuracy fluctuations in practical applications. Therefore, this paper proposes an extended predictive maintenance model under the covariate distribution parameters with uncertainty. For the model, the Bayesian updating method is utilized to update the time-fixed covariate distribution parameters. The Monte Carlo simulation method is used to estimate approximately the expected cost rate for the extended predictive maintenance model under various prognosis scenarios. For the simulation studies, the influence of uncertain distribution parameters for covariate is analyzed on the optimal predictive maintenance policy. The results show that the proposed model can reduce the expected maintenance cost.
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