利用神经网络模式识别和自动特征工程预测涡扇发动机健康状态

IF 1.2 4区 工程技术 Q3 ENGINEERING, AEROSPACE Aircraft Engineering and Aerospace Technology Pub Date : 2024-08-12 DOI:10.1108/aeat-04-2024-0111
Sławomir Szrama
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引用次数: 0

摘要

设计/方法/途径 发动机健康状态预测的主要概念基于三个案例研究和一个验证过程。前两个案例是针对发动机健康状态参数进行的,即性能裕度和特定燃料消耗裕度。第三个案例是针对发动机性能和安全数据生成和创建的,专门用于最终测试。神经网络模式识别的最终验证是将提出的神经网络架构与机器学习分类算法进行比较。所有研究都是针对具有模式识别功能的双层前馈网络架构的神经网络进行的。所有案例研究和测试都是针对简单模式识别网络和自动特征工程(AFE)增强网络进行的。研究结果本研究的最大成就是介绍了如何在真实发动机运行数据的基础上,通过应用增强 AFE 的神经网络模式识别过程来进行发动机状态预测的整个过程。基于增强 AFE 的神经网络的发动机健康状态预测是预防飞机事故和事件的有力工具。原创性/价值虽然利用神经网络预测涡扇发动机健康状态并不是一种新方法,但绝对值得强调的是,与其他出版物不同,本研究基于真实的发动机性能运行数据和 AFE 方法,这使得整个研究非常可靠。这也是预测结果能够反映真实发动机磨损和劣化过程的原因。
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Turbofan engine health status prediction with neural network pattern recognition and automated feature engineering

Purpose

This study aims to present the concept of aircraft turbofan engine health status prediction with artificial neural network (ANN) pattern recognition but augmented with automated features engineering (AFE).

Design/methodology/approach

The main concept of engine health status prediction was based on three case studies and a validation process. The first two were performed on the engine health status parameters, namely, performance margin and specific fuel consumption margin. The third one was generated and created for the engine performance and safety data, specifically created for the final test. The final validation of the neural network pattern recognition was the validation of the proposed neural network architecture in comparison to the machine learning classification algorithms. All studies were conducted for ANN, which was a two-layer feedforward network architecture with pattern recognition. All case studies and tests were performed for both simple pattern recognition network and network augmented with automated feature engineering (AFE).

Findings

The greatest achievement of this elaboration is the presentation of how on the basis of the real-life engine operational data, the entire process of engine status prediction might be conducted with the application of the neural network pattern recognition process augmented with AFE.

Practical implications

This research could be implemented into the engine maintenance strategy and planning. Engine health status prediction based on ANN augmented with AFE is an extremely strong tool in aircraft accident and incident prevention.

Originality/value

Although turbofan engine health status prediction with ANN is not a novel approach, what is absolutely worth emphasizing is the fact that contrary to other publications this research was based on genuine, real engine performance operational data as well as AFE methodology, which makes the entire research very reliable. This is also the reason the prediction results reflect the effect of the real engine wear and deterioration process.

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来源期刊
Aircraft Engineering and Aerospace Technology
Aircraft Engineering and Aerospace Technology 工程技术-工程:宇航
CiteScore
3.20
自引率
13.30%
发文量
168
审稿时长
8 months
期刊介绍: Aircraft Engineering and Aerospace Technology provides a broad coverage of the materials and techniques employed in the aircraft and aerospace industry. Its international perspectives allow readers to keep up to date with current thinking and developments in critical areas such as coping with increasingly overcrowded airways, the development of new materials, recent breakthroughs in navigation technology - and more.
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