用神经网络确定涡轮叶栅流动动能叶型损失

IF 0.9 Q4 ENERGY & FUELS
V. A. Tishchenko, A. A. Belousova, P. M. Nesterov, A. O. Smirnov
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引用次数: 0

摘要

本文讨论了利用神经网络预测涡轮机械叶栅气体动力特性的有关问题。介绍了用于确定平面喷嘴叶片和转子叶片(冲激型)涡轮叶栅下游叶型动能损失的深度机器学习模型体系结构的研究结果。介绍了用粘性流数值模拟方法制备训练数据集的方法。对生成的数据集进行分析;指出了该方法在提高可训练神经网络质量方面存在的不足。对转子叶栅和喷嘴叶栅的神经网络结构进行了选择。研究表明,相同的模型结构对叶栅和叶栅都是有效的。使用已准备好的模型,预测结果与所考虑的所有类型的级联的可用数据之间有很好的一致性。指出了当叶栅下游理论马赫数接近等于1时,神经网络在跨声速和超声速工况下的预测是不正确的。这源于训练数据集中缺乏关于这种操作条件的信息。在超声速工况下对模型进行额外训练后,就可以“追踪”出流波结构对叶栅下游功率性能特性的影响。所获得的数据为说明以参数形式表示曲线叶片通道的重要性以及在大多数独立参数的大变化范围内准备训练数据的必要性提供了基础。神经网络在解决上述问题方面表现出了高效的性能,这使得形成一些算法概念并将其应用于解决涡轮级设计问题成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determining the Profile Loss of Flow Kinetic Energy in Turbine Cascades with the Use of Neural Networks

The article addresses matters concerned with the use of neural networks for predicting the gas dynamic characteristics of turbine machinery cascades. The results of elaborating the architecture of deep machine learning models for determining the profile kinetic energy loss downstream of plane nozzle vane and rotor blade (impulse type) turbine cascades are presented. A procedure for preparing the training dataset with using numerical simulation of viscous flows is described. The dataset generated is analyzed; its shortcomings, which should be removed for improving the quality of trainable neural networks are identified. Work on selecting the architecture of neural networks for rotor and nozzle vane cascades was carried out. The studies have shown that the same structure of models is efficient for both nozzle vane and rotor blade cascades. The use of prepared models yielded good agreement between the predicted results and the data available for all types of the cascades considered. It is pointed out that the neural networks yield incorrect predictions in transonic and supersonic operation conditions near the theoretical Mach number downstream of the cascade equal to unity. This stems from the lack of information on such operation conditions in the training dataset. After the models had been additionally trained under supersonic operation conditions, it became possible to “trace” the influence of the flow wave structure on the power performance characteristics downstream of the cascade. The data obtained served as a basis for stating the importance of representing curvilinear blade passages in parametric form and the necessity to prepare the training data in a wide variation range of the majority of independent parameters. The neural networks have demonstrated high-efficient performance in solving the stated problem, which made it possible to formulate a number of algorithmic concepts for applying them in solving turbine stage design problems.

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来源期刊
CiteScore
1.30
自引率
20.00%
发文量
94
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