基于多保真度深度神经网络的高压涡轮叶片高维不确定性量化

IF 1.9 3区 工程技术 Q3 ENGINEERING, MECHANICAL
Zhihui Li, Francesco Montomoli, Nicola Casari, Michele Pinelli
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引用次数: 0

摘要

本文提出了一种新的多保真度(MF)不确定度量化(UQ)框架,并将其应用于经污垢修饰的LS89喷嘴。几何不确定性对燃气轮机气动性能影响很大。一个典型的例子是由污垢沉积改变的翼型形状,如涡轮喷嘴叶片,它产生高维输入不确定性。然而,传统的UQ方法在预测高维不确定性影响时存在维数诅咒现象。为此,本文提出了一种基于多保真度深度神经网络(MF-DNN)的高维UQ问题求解方法。MF-DNN的基本思想是在大量低保真(LF)数据和少量高保真(HF)数据的基础上保证神经网络的逼近能力。首先使用15维基准函数评估MF-DNN的预测精度。然后,基于MF-DNN模型、采样模块、参数化模块和统计处理模块等关键组件,构建了经济型涡轮机械UQ平台。利用提出的UQ框架研究了污垢沉积对LS89喷嘴叶片流动的影响。基于二维欧拉流场作为低保真数据,三维reynolds -average Navier-Stokes (RANS)流场作为高保真数据的双水平数值模拟结果对MF-DNN进行了微调。UQ结果表明,LS89叶片的总压损失与基线相比最多增加了17.1%或减少了4.3%,而损失的平均值增加了3.4%。导致涡轮喷管性能相对变化的主要原因是由污垢沉积引起的几何不确定性显著改变了喉部和尾缘附近的激波强度。所开发的UQ平台可为考虑高维输入不确定性的先进涡轮机械的设计与优化提供有用的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HIGH-DIMENSIONAL UNCERTAINTY QUANTIFICATION OF HIGH-PRESSURE TURBINE VANE BASED ON MULTI-FIDELITY DEEP NEURAL NETWORKS
Abstract In this work, a new multifidelity (MF) uncertainty quantification (UQ) framework is presented and applied to the LS89 nozzle modified by fouling. Geometrical uncertainties significantly influence the aerodynamic performance of gas turbines. One representative example is given by the airfoil shape modified by fouling deposition, as in turbine nozzle vanes, which generates high-dimensional input uncertainties. However, the traditional UQ approaches suffer from the curse of dimensionality phenomenon in predicting the influence of high-dimensional uncertainties. Thus, a new approach based on multifidelity deep neural networks (MF-DNN) was proposed in this paper to solve the high-dimensional UQ problem. The basic idea of MF-DNN is to ensure the approximation capability of neural networks based on abundant low-fidelity (LF) data and few high-fidelity (HF) data. The prediction accuracy of MF-DNN was first evaluated using a 15-dimensional benchmark function. An affordable turbomachinery UQ platform was then built based on key components including the MF-DNN model, the sampling module, the parameterization module and the statistical processing module. The impact of fouling deposition on LS89 nozzle vane flow was investigated using the proposed UQ framework. In detail, the MF-DNN was fine-tuned based on bi-level numerical simulation results: the 2D Euler flow field as low-fidelity data and the 3D Reynolds-averaged Navier–Stokes (RANS) flow field as high-fidelity data. The UQ results show that the total pressure loss of LS89 vane is increased by at most 17.1% or reduced by at most 4.3%, while the mean value of the loss is increased by 3.4% compared to the baseline. The main reason for relative changes in turbine nozzle performance is that the geometric uncertainties induced by fouling deposition significantly alter the intensity of shock waves near the throat area and trailing edge. The developed UQ platform could provide a useful tool in the design and optimization of advanced turbomachinery considering high-dimensional input uncertainties.
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来源期刊
CiteScore
4.70
自引率
11.80%
发文量
168
审稿时长
9 months
期刊介绍: The Journal of Turbomachinery publishes archival-quality, peer-reviewed technical papers that advance the state-of-the-art of turbomachinery technology related to gas turbine engines. The broad scope of the subject matter includes the fluid dynamics, heat transfer, and aeromechanics technology associated with the design, analysis, modeling, testing, and performance of turbomachinery. Emphasis is placed on gas-path technologies associated with axial compressors, centrifugal compressors, and turbines. Topics: Aerodynamic design, analysis, and test of compressor and turbine blading; Compressor stall, surge, and operability issues; Heat transfer phenomena and film cooling design, analysis, and testing in turbines; Aeromechanical instabilities; Computational fluid dynamics (CFD) applied to turbomachinery, boundary layer development, measurement techniques, and cavity and leaking flows.
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