4.7 Article

A deep learning based prediction approach for the supercritical airfoil at transonic speeds

相关参考文献

注意:仅列出部分参考文献,下载原文获取全部文献信息。
Article Engineering, Aerospace

Prediction model of flow field in an isolator over various operating conditions

Chen Kong et al.

Summary: The study utilizes deep learning with convolutional neural networks to analyze the internal flow characteristics of a scramjet isolator, enabling accurate prediction of the operating state of the scramjet isolator.

AEROSPACE SCIENCE AND TECHNOLOGY (2021)

Review Mechanics

Machine Learning for Fluid Mechanics

Steven L. Brunton et al.

ANNUAL REVIEW OF FLUID MECHANICS, VOL 52 (2020)

Article Engineering, Multidisciplinary

Physics-informed neural networks for high-speed flows

Zhiping Mao et al.

COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING (2020)

Article Computer Science, Interdisciplinary Applications

A deep learning approach for efficiently and accurately evaluating the flow field of supercritical airfoils

Haizhou Wu et al.

COMPUTERS & FLUIDS (2020)

Article Multidisciplinary Sciences

Hidden fluid mechanics: Learning velocity and pressure fields from flow visualizations

Maziar Raissi et al.

SCIENCE (2020)

Article Computer Science, Interdisciplinary Applications

Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations

M. Raissi et al.

JOURNAL OF COMPUTATIONAL PHYSICS (2019)

Article Mechanics

Fast flow field prediction over airfoils using deep learning approach

Vinothkumar Sekar et al.

PHYSICS OF FLUIDS (2019)

Article Mechanics

Construction of reduced-order models for fluid flows using deep feedforward neural networks

Hugo F. S. Lui et al.

JOURNAL OF FLUID MECHANICS (2019)

Article Mechanics

Data-driven prediction of unsteady flow over a circular cylinder using deep learning

Sangseung Lee et al.

JOURNAL OF FLUID MECHANICS (2019)

Article Engineering, Aerospace

A grid strategy for predicting the space plane's hypersonic aerodynamic heating loads

Feng Qu et al.

AEROSPACE SCIENCE AND TECHNOLOGY (2019)

Article Engineering, Aerospace

Investigation into the influences of the low-speed flows' accuracy on RANS simulations

Feng Qu et al.

AEROSPACE SCIENCE AND TECHNOLOGY (2017)

Article Mechanics

Deep earning in fluid dynamics

J. Nathan Kutz

JOURNAL OF FLUID MECHANICS (2017)

Review Multidisciplinary Sciences

Deep learning

Yann LeCun et al.

NATURE (2015)

Article Mechanics

Dynamic mode decomposition for large and streaming datasets

Maziar S. Hemati et al.

PHYSICS OF FLUIDS (2014)

Review Mechanics

Analysis of Fluid Flows via Spectral Properties of the Koopman Operator

Igor Mezic

ANNUAL REVIEW OF FLUID MECHANICS, VOL 45 (2013)

Article Mechanics

Dynamic mode decomposition of numerical and experimental data

Peter J. Schmid

JOURNAL OF FLUID MECHANICS (2010)

Article Engineering, Aerospace

Building efficient response surfaces of aerodynamic functions with kriging and cokriging

J. Laurenceau et al.

AIAA JOURNAL (2008)

Article Engineering, Aerospace

Extended radial basis functions: More flexible and effective metamodeling

AA Mullur et al.

AIAA JOURNAL (2005)

Review Engineering, Aerospace

Reduced-order modeling: new approaches for computational physics

DJ Lucia et al.

PROGRESS IN AEROSPACE SCIENCES (2004)

Article Engineering, Aerospace

Aerodynamic design using neural networks

MM Rai et al.

AIAA JOURNAL (2000)