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Optimization of reliability centered predictive maintenance scheme for inertial navigation system

机译:以可靠性为中心的惯性导航系统预测维护方案的优化

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The goal of this study is to propose a reliability centered predictive maintenance scheme for a complex structure Inertial Navigation System (INS) with several redundant components. GO Methodology is applied to build the INS reliability analysis model-GO chart. Components Remaining Useful Life (RUL) and system reliability are updated dynamically based on the combination of components lifetime distribution function, stress samples, and the system GO chart. Considering the redundant design in INS, maintenance time is based not only on components RUL, but also (and mainly) on the timing of when system reliability fails to meet the set threshold. The definition of components maintenance priority balances three factors: components importance to system, risk degree, and detection difficulty. Maintenance Priority Number (MPN) is introduced, which may provide quantitative maintenance priority results for all components. A maintenance unit time cost model is built based on components MPN, components RUL predictive model and maintenance intervals for the optimization of maintenance scope. The proposed scheme can be applied to serve as the reference for INS maintenance. Finally, three numerical examples prove the proposed predictive maintenance scheme is feasible and effective. (C) 2015 Elsevier Ltd. All rights reserved.
机译:这项研究的目的是为具有多个冗余组件的复杂结构惯性导航系统(INS)提出一种以可靠性为中心的预测性维护方案。应用GO方法论建立了INS可靠性分析模型-GO图表。根据组件寿命分布函数,应力样本和系统GO图表的组合,动态更新组件剩余使用寿命(RUL)和系统可靠性。考虑到INS中的冗余设计,维护时间不仅取决于组件RUL,而且(主要)取决于系统可靠性未达到设置阈值的时间。组件维护优先级的定义平衡了三个因素:组件对系统的重要性,风险程度和检测难度。引入了维护优先级编号(MPN),可以为所有组件提供定量的维护优先级结果。基于组件MPN,组件RUL预测模型和维护间隔来建立维护单位时间成本模型,以优化维护范围。所提出的方案可以作为INS维护的参考。最后,通过三个数值例子验证了所提预测维修方案的可行性和有效性。 (C)2015 Elsevier Ltd.保留所有权利。

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