Fusion and Comparison of Prognostic Models for Remaining Useful Life of Aircraft systems

Shuai Fu, Nicolas P. Avdelidis, Angelos Plastropoulos, Ip-Shing Fan
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Abstract

Changes in the performance of an aircraft system will straightforwardly affect the safe operation of the aircraft, and the technical requirements of Prognostics and Health Management (PHM) are highly relevant. Remaining Useful Life (RUL) prediction, part of the core technologies of PHM, is a cutting-edge innovation being worked on lately and an effective means to advance the change of upkeep support mode and work on the framework's security, unwavering quality, and economic reasonableness. This paper summarizes a detailed preliminary literature review and comparison of different prognostic approaches and the forecasting methods' taxonomy, the methodology's details, and provides its application to aircraft systems. It also provides a brief introduction to the predictive maintenance concept and condition-based maintenance (CBM). This article uses several predictive models to predict RUL and classifies conventional regression algorithms according to the similarity in function and form of the algorithms. More classical algorithms in each category are selected to compare the prediction results, and finally, the combined effects of the RUL prediction are obtained by weighted fusion, accuracy, and compatibility. The performance of the proposed models is assessed based on evaluations of RUL acquired from the hybrid and individual predictive models. This correlation depends on the most current prognostic metrics. The outcomes show that the proposed strategy develops precision, robustness, and adaptability. Hence, the work in this paper shall enrich the advancement of predictive maintenance and modern innovation of prognostic development.
飞机系统剩余使用寿命预测模型的融合与比较
飞机系统性能的变化将直接影响飞机的安全运行,与预测与健康管理(PHM)的技术要求密切相关。剩余使用寿命(RUL)预测是PHM的核心技术之一,是近年来研究的前沿创新,是推动维护支持模式变革、保证框架安全性、质量稳定性和经济合理性的有效手段。本文对不同预测方法进行了详细的初步文献综述和比较,并对预测方法的分类、方法的细节进行了总结,并提供了其在飞机系统中的应用。本文还简要介绍了预测性维护概念和基于状态的维护(CBM)。本文采用几种预测模型对规则学习进行预测,并根据算法在功能和形式上的相似性对常规回归算法进行分类。在每个类别中选择更经典的算法来比较预测结果,最后通过加权融合、精度和兼容性得到RUL预测的综合效果。基于从混合预测模型和单个预测模型中获得的RUL评价来评估所提出模型的性能。这种相关性取决于最新的预后指标。结果表明,该策略具有较好的精度、鲁棒性和适应性。因此,本文的工作将丰富预测维护的进步和预测发展的现代创新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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