Machine Learning Based Sensitivity Analysis of Aeroelastic Stability Parameters in a Compressor Cascade

IF 1.3 Q2 ENGINEERING, AEROSPACE
Marco Rauseo, M. Vahdati, F. Zhao
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Abstract

Aeroelastic instabilities such as flutter have a crucial role in limiting the operating range and reliability of turbomachinery. This paper offers an alternative approach to aeroelastic analysis, where the sensitivity of aerodynamic damping with respect to main flow and structural parameters is quantified through a surrogate-model-based investigation. The parameters are chosen based on previous studies and are represented by a uniform distribution within applicable intervals. The surrogate model is an artificial neural network, trained and tested to achieve an error within 1% of the test data. The quantity of interest is aerodynamic damping and the datasets are obtained from a linearised aeroelastic solver. The sensitivity of aerodynamic damping with respect to the input variables is obtained by calculating normalised gradients from the surrogate model at specific operating conditions. The results show a quantitative comparison of sensitivity across the different input parameters. The outcome of the sensitivity analysis is then used to decide the most appropriate action to take in order to induce stability in unstable operating conditions. The work is a preliminary study, carried out on a simplified two dimensional compressor cascade and it is aimed at proving the validity of a data-driven approach in studying the aeroelastic behaviour of turbomachinery. To the best of the authors’ knowledge, this is the first time a data-driven flutter model has been investigated. The initial results are encouraging, indicating that this approach is worth pursuing in the future. The presented framework can be used as a redesign tool to enhance the flutter stability of an existing blade.
基于机器学习的压气机叶栅气动弹性稳定性参数敏感性分析
颤振等气动弹性不稳定性在限制涡轮机的运行范围和可靠性方面起着至关重要的作用。本文提供了一种气动弹性分析的替代方法,通过基于替代模型的研究来量化气动阻尼对主流和结构参数的敏感性。这些参数是根据以前的研究选择的,并以适用区间内的均匀分布表示。代理模型是一个人工神经网络,经过训练和测试,误差在测试数据的1%以内。感兴趣的量是空气动力学阻尼,数据集是从线性化气动弹性求解器中获得的。空气动力学阻尼相对于输入变量的灵敏度是通过在特定操作条件下从替代模型计算归一化梯度来获得的。结果显示了不同输入参数的灵敏度的定量比较。然后使用灵敏度分析的结果来决定最合适的行动,以便在不稳定的操作条件下诱导稳定性。这项工作是对简化的二维压气机叶栅进行的初步研究,旨在证明数据驱动方法在研究涡轮机械气动弹性行为方面的有效性。据作者所知,这是首次对数据驱动的颤振模型进行研究。初步结果令人鼓舞,表明这种做法值得在未来推行。所提出的框架可以用作重新设计工具,以增强现有叶片的颤振稳定性。
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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来源期刊
CiteScore
2.30
自引率
21.40%
发文量
29
审稿时长
11 weeks
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