A review of the artificial neural network surrogate modeling in aerodynamic design

Author(s):  
Gang Sun ◽  
Shuyue Wang

Artificial neural network surrogate modeling with its economic computational consumption and accurate generalization capabilities offers a feasible approach to aerodynamic design in the field of rapid investigation of design space and optimal solution searching. This paper reviews the basic principle of artificial neural network surrogate modeling in terms of data treatment and configuration setup. A discussion of artificial neural network surrogate modeling is held on different objectives in aerodynamic design applications, various patterns of realization via cutting-edge data technique in numerous optimizations, selection of network topology and types, and other measures for improving modeling. Then, new frontiers of modern artificial neural network surrogate modeling are reviewed with regard to exploiting the hidden information for bringing new perspectives to optimization by exploring new data form and patterns, e.g. quick provision of candidates of better aerodynamic performance via accumulated database instead of random seeding, and envisions of more physical understanding being injected to the data manipulation.

2018 ◽  
Vol 6 (4) ◽  
pp. 5389-5400 ◽  
Author(s):  
J. Moreno-Pérez ◽  
A. Bonilla-Petriciolet ◽  
D.I. Mendoza-Castillo ◽  
H.E. Reynel-Ávila ◽  
Y. Verde-Gómez ◽  
...  

2015 ◽  
Vol 766-767 ◽  
pp. 1201-1206 ◽  
Author(s):  
K. Venkatraman ◽  
B. Vijaya Ramnath ◽  
R. Sarvesh ◽  
C. Rohit Prasanna

The selection of a manufacturing method for developing new products with optimal quality, minimal cost in the shortest time possible is a important phase of the industry. This paper uses artificial neural network to facilitate for product manufacturing method selection. Initially, general sorting is employed to select an initial product platform. Then using repertory grids method, designers contribute importance ratings to the design options. These ratings are employed to reduce the number of the derived design options, and thereby used as input data to a neural network. The neural network is then trained by using Levenberg-Marquart Algorithm in Mat lab software. The trained neural network is applied to classify the set of options into different patterns. The classification results can subsequently serve as base for the screening of preferred manufacturing options.


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