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Deep learning-enhanced aerodynamics design of high-load compressor cascade at low Reynolds numbers.

Authors :
Xu, Hua-feng
Zhao, Sheng-feng
Wang, Ming-yang
Han, Ge
Lu, Xin-gen
Zhu, Jun-qiang
Source :
Aerospace Science & Technology. Jan2025, Vol. 156, pN.PAG-N.PAG. 1p.
Publication Year :
2025

Abstract

• Key Findings: Sobol sensitivity analysis identifies non-dimensional maximum thickness as the most critical factor, contributing 44 % to the variance in total pressure loss and deviation angle. • Advanced Modeling: evaluated multiple neural network models, with the CNN-LSTM-SAM model demonstrating superior prediction accuracy and generalization capabilities. • Optimization Success: utilized particle swarm optimization (PSO) to minimize total pressure loss and deviation angle across a range of reynolds numbers and angles of attack. • Practical Implications: provides valuable insights and strategies for designing efficient compressor blades, especially for high-altitude UAV applications. This study addresses the challenges of designing high-efficiency compressors for long-endurance, high-altitude unmanned aerial vehicles (UAVs) under low Reynolds number (Re) and high load conditions, exploring the aerodynamic performance limits of compressor blades under extreme conditions. The research integrates advanced numerical simulations, experimental methods, and deep learning technologies to minimize profile losses and deviation angle on compressor blades. An orthogonal experimental design systematically explored the impact of key geometric factors on aerodynamic performance. A deep learning model incorporating neural networks with spatial attention mechanisms was developed to significantly enhance the accuracy of aerodynamic predictions. This model adeptly captured the complex nonlinear interactions between aerodynamic and geometric parameters. Sobol sensitivity analysis revealed that the dimensionless maximum thickness is the most critical factor, accounting for 44 % of the total variance in total pressure loss and deviation angle. The position of maximum thickness and the aspect ratio of the elliptical leading edge also significantly influenced performance. The optimized high-load compressor blade profile was validated through experimental data and detailed computational fluid dynamics analysis using large eddy simulation methods. This analysis revealed flow separation and reattachment mechanisms, shedding light on turbulence and vortex dynamics critical to performance. This research deepens the theoretical understanding of compressor cascade fluid dynamics and provides practical insights for designing more efficient compressors, especially for micro axial compressors in high-altitude UAVs. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
12709638
Volume :
156
Database :
Academic Search Index
Journal :
Aerospace Science & Technology
Publication Type :
Academic Journal
Accession number :
181542637
Full Text :
https://doi.org/10.1016/j.ast.2024.109775