Performance Model Identification of the General Electric CF34-8C5B1 Turbofan Using Neural Networks

IF 1.3 4区 工程技术 Q2 ENGINEERING, AEROSPACE
Rojo Princy Andrianantara, Georges Ghazi, Ruxandra Mihaela Botez
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引用次数: 0

Abstract

This paper presents a methodology developed at the Laboratory of Applied Research in Active Controls, Avionics, and Aeroservoelasticity to identify a performance model of the CF34-8C5B1 turbofan engine powering the CRJ-700 regional jet aircraft from simulated flight data using artificial neural networks (ANNs). For this purpose, a qualified virtual research simulator was used to conduct different types of flight tests and to collect engine data under a wide range of operating conditions. The collected data were then used to create a comprehensive database for the training of the ANN model. This process was performed using the Bayesian regularization algorithm available in the MATLAB Neural Networks Toolbox, followed by a study to identify the optimal network architecture, namely, the number of layers and the number of neurons. The validation of the methodology was accomplished by comparing the model predictions with a set of flight data collected with the flight simulator for different flight conditions and flight regimes including takeoff, climb, cruise, and descent. The results showed that the model was able to predict the engine performance in terms of fan speed, core speed, inlet turbine temperature, net thrust, and fuel flow with less than 5% relative error.
通用电气CF34-8C5B1涡扇性能模型的神经网络辨识
本文介绍了一种由主动控制、航空电子和航空伺服弹性应用研究实验室开发的方法,该方法使用人工神经网络(ann)从模拟飞行数据中识别为CRJ-700支线喷气飞机提供动力的CF34-8C5B1涡扇发动机的性能模型。为此目的,使用了一个合格的虚拟研究模拟器进行不同类型的飞行试验,并在各种操作条件下收集发动机数据。然后将收集到的数据用于创建一个用于训练人工神经网络模型的综合数据库。该过程使用MATLAB Neural Networks Toolbox中提供的贝叶斯正则化算法进行,然后研究确定最优网络架构,即层数和神经元数。通过将模型预测与飞行模拟器收集的一组不同飞行条件和飞行模式(包括起飞、爬升、巡航和下降)的飞行数据进行比较,完成了方法的验证。结果表明,该模型能够在风扇转速、堆芯转速、进口涡轮温度、净推力和燃油流量等方面预测发动机性能,相对误差小于5%。
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来源期刊
CiteScore
3.70
自引率
13.30%
发文量
58
审稿时长
>12 weeks
期刊介绍: This Journal is devoted to the dissemination of original archival research papers describing new theoretical developments, novel applications, and case studies regarding advances in aerospace computing, information, and networks and communication systems that address aerospace-specific issues. Issues related to signal processing, electromagnetics, antenna theory, and the basic networking hardware transmission technologies of a network are not within the scope of this journal. Topics include aerospace systems and software engineering; verification and validation of embedded systems; the field known as ‘big data,’ data analytics, machine learning, and knowledge management for aerospace systems; human-automation interaction and systems health management for aerospace systems. Applications of autonomous systems, systems engineering principles, and safety and mission assurance are of particular interest. The Journal also features Technical Notes that discuss particular technical innovations or applications in the topics described above. Papers are also sought that rigorously review the results of recent research developments. In addition to original research papers and reviews, the journal publishes articles that review books, conferences, social media, and new educational modes applicable to the scope of the Journal.
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