一种新型航空发动机性能诊断数字孪生框架

IF 0.1 4区 工程技术 Q4 ENGINEERING, AEROSPACE Aerospace America Pub Date : 2023-09-08 DOI:10.3390/aerospace10090789
Zepeng Wang, Ye Wang, Xizhen Wang, Kaiqiang Yang, Yongjun Zhao
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引用次数: 0

摘要

航空发动机性能诊断技术是保证飞行安全可靠的关键技术。由于发动机性能的复杂性和故障特征的强耦合性,开发准确、高效的气路诊断方法具有挑战性。为了解决这些问题,本研究提出了一种新的航空发动机数字孪生框架,实现了物理系统的数字化。机制模型是在组件级别构建的。采用粒子群优化-极限梯度增强算法(PSO-XGBoost)建立数据驱动模型。采用低秩多模态融合方法(LWF)融合这两个模型,并结合稀疏堆叠自编码器(SSAE),形成发动机性能诊断的数字孪生框架。与单纯基于机制或数据的方法相比,所提出的数字孪生框架可以有效地利用机制和数据信息,提高准确性和可靠性。研究结果表明,所提出的数字孪生框架预测气路参数的错误率为0.125%,气路故障诊断准确率为98.6%。考虑到仅一台飞机发动机在3000次飞行循环后一次典型飞行任务的退化成本约为209.5美元,该方法具有良好的经济性。该框架可用于提高发动机的可靠性、可用性和效率,具有重要的工程应用价值。
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A Novel Digital Twin Framework for Aeroengine Performance Diagnosis
Aeroengine performance diagnosis technology is essential for ensuring flight safety and reliability. The complexity of engine performance and the strong coupling of fault characteristics make it challenging to develop accurate and efficient gas path diagnosis methods. To address these issues, this study proposes a novel digital twin framework for aeroengines that achieves the digitalization of physical systems. The mechanism model is constructed at the component level. The data-driven model is built using a particle swarm optimization–extreme gradient boosting algorithm (PSO-XGBoost). These two models are fused using the low-rank multimodal fusion method (LWF) and combined with the sparse stacked autoencoder (SSAE) to form a digital twin framework of the engine for performance diagnosis. Compared to methods that are solely based on mechanism or data, the proposed digital twin framework can effectively use mechanism and data information to improve the accuracy and reliability. The research results show that the proposed digital twin framework has an error rate of 0.125% in predicting gas path parameters and has a gas path fault diagnosis accuracy of 98.6%. Considering that the degradation cost of a typical flight mission for only one aircraft engine after 3000 flight cycles is approximately USD 209.5, the proposed method has good economic efficiency. This framework can be used to improve engine reliability, availability, and efficiency, and has significant value in engineering applications.
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来源期刊
Aerospace America
Aerospace America 工程技术-工程:宇航
自引率
0.00%
发文量
9
审稿时长
4-8 weeks
期刊最新文献
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