TY - JOUR
T1 - MHA-Net
T2 - Multi-source heterogeneous aerodynamic data fusion neural network embedding reduced-dimension features
AU - Ning, Chenjia
AU - Zhang, Weiwei
N1 - Publisher Copyright:
© 2024 Elsevier Masson SAS
PY - 2024/2
Y1 - 2024/2
N2 - Developing a high-fidelity, cost-effective aerodynamic database is crucial for addressing the balance of accuracy and cost in aircraft design. Recently, data fusion technology has achieved breakthroughs in aerodynamics, offering new insights for enhancing efficiency and reducing costs in aerodynamic acquisition. Nevertheless, most techniques focus on homogeneous data, neglecting the utilization of heterogeneous aerodynamic data that includes crucial physical information. In this research, a novel heterogeneous aerodynamic data fusion method embedding reduced-dimension features (MHA-Net) is proposed. When constructing the state-to-aerodynamic model, the MHA-Net efficiently incorporates neglected distributed load and embeds reduced-dimension features to form a novel physical-embedded neural network. This method significantly enhances model accuracy and robustness in few-shot learning. A comparative analysis and verification are conducted on the variable state experimental case of a wind turbine airfoil and the variable shape simulation of RAE2822. The results demonstrate that this method significantly decreases both the average error and dispersion of aerodynamic models. In the few-shot learning region, an average error reduction can reach over 20%, accompanied by a dispersion decrease exceeding 50% on average.
AB - Developing a high-fidelity, cost-effective aerodynamic database is crucial for addressing the balance of accuracy and cost in aircraft design. Recently, data fusion technology has achieved breakthroughs in aerodynamics, offering new insights for enhancing efficiency and reducing costs in aerodynamic acquisition. Nevertheless, most techniques focus on homogeneous data, neglecting the utilization of heterogeneous aerodynamic data that includes crucial physical information. In this research, a novel heterogeneous aerodynamic data fusion method embedding reduced-dimension features (MHA-Net) is proposed. When constructing the state-to-aerodynamic model, the MHA-Net efficiently incorporates neglected distributed load and embeds reduced-dimension features to form a novel physical-embedded neural network. This method significantly enhances model accuracy and robustness in few-shot learning. A comparative analysis and verification are conducted on the variable state experimental case of a wind turbine airfoil and the variable shape simulation of RAE2822. The results demonstrate that this method significantly decreases both the average error and dispersion of aerodynamic models. In the few-shot learning region, an average error reduction can reach over 20%, accompanied by a dispersion decrease exceeding 50% on average.
KW - Aerodynamic data fusion
KW - Feature embedding
KW - Heterogeneous model
KW - Multi-source modeling
KW - Reduced-dimension extraction
UR - http://www.scopus.com/inward/record.url?scp=85183587760&partnerID=8YFLogxK
U2 - 10.1016/j.ast.2024.108908
DO - 10.1016/j.ast.2024.108908
M3 - 文章
AN - SCOPUS:85183587760
SN - 1270-9638
VL - 145
JO - Aerospace Science and Technology
JF - Aerospace Science and Technology
M1 - 108908
ER -