运筹与管理 ›› 2023, Vol. 32 ›› Issue (3): 177-183.DOI: 10.12005/orms.2023.0098

• 应用研究 • 上一篇    下一篇

基于贝叶斯网络的涡轴发动机多目标性能预测

王宁1, 王宇航2, 蔡志强2, 张帅2   

  1. 1.长安大学 运输工程学院,陕西 西安 710064;
    2.西北工业大学 机电学院,陕西 西安 710072
  • 收稿日期:2021-03-25 出版日期:2023-03-25 发布日期:2023-04-25
  • 通讯作者: 张帅(1982-),女,陕西西安人,副研究员,硕士,研究方向:系统可靠性建模研究
  • 作者简介:王宁(1982-),男,陕西渭南人,教授,博士,研究方向:系统可靠性分析及优化研究。
  • 基金资助:
    国家自然科学基金资助项目(71971030,71871181)

Multi-objective Performance Prediction of Turboshaft Engine Based on Bayesian Network

WANG Ning1, WANG Yuhang2, CAI Zhiqiang2, ZHANG Shuai2   

  1. 1.School of Automobile, Chang'an University, Xi'an 710064, China;
    2. School of Mechanical Engineering, Northwestern Polytechnical University, Xi'an 710072, China
  • Received:2021-03-25 Online:2023-03-25 Published:2023-04-25

摘要: 涡轴发动机是一种高度复杂的精密热力机械,通常作为直升机的动力来源,其性能表现直接影响飞行任务的可靠性以及安全性。针对涡轴发动机的性能表现进行有效预测,可以指导生产,提高其出厂合格率,对于提升直升机的整机可靠性以及确保飞行任务的安全完成都具有重要意义。本文首先在已采集某型号涡轴发动机的数据基础上,结合厂家建议,提取出了影响涡轴发动机两个性能指标——功率与关键截面温度的四个属性变量,分别为零件1、零件2和零件3的尺寸以及气温。然后,引入目标生成、二元关联和分类器链三种多目标转换策略,分别结合贝叶斯网络构建了涡轴发动机多目标性能预测模型。最后,对各个模型的精度进行了对比和验证,选出了最优模型,可以对涡轴发动机的性能表现进行有效预测。

关键词: 可靠性, 贝叶斯网络, 涡轴发动机, 多目标, 性能预测

Abstract: The turboshaft engine is a kind of highly complex and precise thermal machinery, which is usually used as the power source of helicopter. Its performance directly affects the reliability and safety of flight missions. Turboshaft engines require a very high level of manufacturing. Typically, a qualified turboshaft engine requires two performance parameters: power and critical section temperature. However, in practice, it is difficult to manufacture an engine that can pass a single test run, often requiring several attempts after reassembly. Accurate and effective prediction of turboshaft engine performance can help to anticipate risks, which is important to improve the reliability of the helicopter and ensure the safe completion of the mission, as well as to guide the production process to improve the qualification rate. In recent years, with the development of computer technology and the rise of artificial intelligence and big data, Bayesian networks are increasingly used in the fields of data analysis and machine learning. Bayesian networks are a new type of probabilistic graphical model that combines the advantages of probability theory and graph theory to make the complex systems under study clear and understandable and to quantify, reconstruct and reason about complex systems. In the turboshaft engine performance prediction problem studied in this paper, two performance parameter target variables need to be considered together, which requires simultaneous determination of whether the two target variables of a turboshaft engine to be predicted can satisfy their respective qualifying conditions. Considering the practical research background, this paper combines each of the three multi-objective transformation strategies with Bayesian networks to construct a multi-objective performance prediction model for turboshaft engines, extend and improve the plain Bayesian classifier, and realize the prediction and analysis of multi-objective classification problems in the Bayesian network model. In this paper, based on the collected data of a certain type of turboshaft engines, according to the manufacturer's suggestions, four attribute variables that affect the two performance indicators of turboshaft engine — power and key section temperature are extracted firstly, which are the dimensions of part 1, part 2 and part 3, and the temperature. Then, three multi-objective transformation strategies, target generation, binary association and classifier chain, are introduced and combined with Bayesian networks respectively to construct three multi-objective performance prediction models (TG_NB, BR_NB, CC_NB) based on different strategies for turboshaft engines. Finally, to compare the performance of these multi-objective performance prediction models, while considering the validity of the results. In this paper, decision tree models, logistic regression models, and random forest models (TG_DT, TG_LR, TG_RF) are developed in conjunction with the objectives. The accuracy of each model is compared and validated so that the optimal model can be selected to effectively predict the performance of the turboshaft engine. Since the TG_NB model transforms the original dataset by target generation before modelling, and the new target variable integrates the dependencies of the two old target variables, and performs the most outstandingly in all three performance indicators. Meanwhile, compared with the other two models, TG_NB is presented as a single classifier with a simple and more interpretable model, which improves the modelling speed and prediction speed. Due to the limitation of experimental data, we have not yet considered the possibility of deformation of parts under extreme temperature. In future studies, we will collect more data and explore the effect of external temperature on the part dimensions.

Key words: reliability, Bayesian network, turboshaft engine, multi-objective, performance prediction

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