飞机机队运营商的可靠性预测:结合供应商估计、维护数据和专家判断的贝叶斯网络模型

Reliability prediction for aircraft fleet operators: A Bayesian network model that combines supplier estimates, maintenance data and expert judgement

Journal of the Operational Research Society · 2022
被引 12
ABS 3

中文导读

提出一个贝叶斯网络模型,系统结合设计寿命估计、运营数据和专家判断来预测飞机子系统的可靠性,在数据稀缺时比纯数据驱动或仅依赖供应商估计的方法更准确。

Abstract

Reliability prediction is crucial for aircraft maintenance and spare part inventory decisions. These predictions are made based on operational data collected by fleet operators or design life estimates provided by aircraft suppliers. Purely data-driven predictions have limited use especially when the fleet is young, hence the data is scarce. In this case, design life estimates are used for predicting reliability often by assuming a constant failure rate. This strong assumption is not necessarily valid for all components. This paper proposes a Bayesian Network (BN) modelling framework that systematically combines design life estimates, operational data, and expert judgement for reliability prediction of aircraft subsystems. The proposed BN adjusts the design life estimates based on expert judgement regarding supplier and manufacturing quality and revises it based on operational data. We used the BN to predict the reliability of a large aircraft fleet by using failure and maintenance data provided by a large fleet operator. We compared the predictive performance of the BN to using only data-driven approaches and to using only design life estimates provided by the aircraft supplier. The BN model provides consistently accurate reliability predictions compared to design-life estimates and purely data-driven approaches especially when the available data is scarce.

航空工程可靠性工程贝叶斯网络运营管理维护决策