🌙

数据驱动的有限数据条件下基于状态的维护优化

Data-driven condition-based maintenance optimization given limited data

European Journal of Operational Research · 2025
被引 3
ABS 4

中文导读

针对新系统数据有限的情况,提出一种完全数据驱动的基于状态的维护优化方法,用惩罚逻辑回归估计故障概率,并允许选择任何退化水平作为预防性维护阈值,数值实验表明该方法接近最优。

Abstract

Unexpected failures of operating systems can result in severe consequences and huge economic losses. To prevent them, preventive maintenance based on condition data can be performed. Existing studies either rely on the assumption of a known deterioration process or an abundance of data. However, in practice, it is unlikely that the deterioration process is known, and data is often limited (to a few runs-to-failure), especially for new systems. This paper presents a fully data-driven approach for condition-based maintenance (CBM) optimization that is especially useful in situations with limited data. The approach uses penalized logistic regression to estimate the failure probability as a function of the deterioration level and allows any deterioration level to be selected as the preventive maintenance threshold, also those that have not been observed in the past. Numerical results indicate that the preventive maintenance thresholds resulting from our proposed approach closely approach the optimal values.

计算机科学数学优化运筹学可靠性工程