基于边际差异信号判别的预测性维修策略优化

Y. Langer, A. Urmanov, Anton A. Bougaev
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引用次数: 2

摘要

在维护策略的制定中,需要对边际差异测量信号进行判别是一个主要问题。应用经典的观测数据统计分类方法来解决这个问题会带来相当大的困难,因为需要在绝对健康和完全退化的系统之间的灰色地带区分信号。在灰色区域,从样本推断的总体参数之间的差异几乎不明显。代替经典的判别标准,判别函数使用最小化与系统预防性维护和系统故障后恢复相关的损失(例如,时间损失)的预期总和。该判别函数是在将观测到的系统退化过程表示为离散参数马尔可夫链的基础上建立起来的。该函数的极值决定了判别边界和最优维护时间。给出了实验得到的马尔可夫过程参数在不使所得到的最优维护规则失效的情况下可能出现偏差的要求。以综合数据为例说明了所开发的方法,使人联想到数据库管理系统的操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive maintenance policy optimization by discrimination of marginally distinct signals
The necessity of discrimination of marginally distinct measured signals is one of the main problems in the creation of maintenance policies. Applying classical methods of statistical classification of observations to the solution of this problem entails considerable difficulties caused by the need to discriminate signals in a gray area between absolutely healthy and fully degraded system. In the gray area, the difference between population parameters inferred from samples is hardly noticeable. Instead of the classical discrimination criteria, a discriminant function that minimizes the expected sum of losses (for example, losses of time) relevant to system preventive maintenance and recovering of the system after its failure is used. This discriminant function is developed on the basis of the representation of the observed system degradation process as a Discrete Parameter Markov chain. The extremum of this function determines the discrimination boundary and the optimal time for maintenance. The requirements for the possible deviation of the experimentally obtained Markov process parameters that do not invalidate the obtained optimal rule of maintenance are specified. The developed methods are illustrated on synthetic data reminiscent of the operation of a database management system.
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