• DocumentCode
    2954744
  • Title

    Prediction of convergence dynamics of design performance using differential recurrent neural networks

  • Author

    Cao, Yi ; Jin, Yaochu ; Kowalczykiewicz, Michal ; Sendhoff, Bernhard

  • Author_Institution
    Sch. of Eng., Cranfield Univ., Cranfield
  • fYear
    2008
  • fDate
    1-8 June 2008
  • Firstpage
    528
  • Lastpage
    533
  • Abstract
    Computational fluid dynamics (CFD) simulations have been extensively used in many aerodynamic design optimization problems, such as wing and turbine blade shape design optimization. However, it normally takes very long time to solve such optimization problems due to the heavy computation load involved in CFD simulations, where a number of differential equations are to be solved. Some efforts have been seen using feedforward neural networks to approximate CFD models. However, feedforward neural network models cannot capture well the dynamics of the differential equations. Thus, training data from a large number of different designs are needed to train feedforward neural network models to achieve reliable generalization. In this work, a technique using differential recurrent neural networks has been proposed to predict the performance of candidate designs before the CFD simulation is fully converged. Compared to existing methods based on feedforward neural networks, this approach does not need a large number of previous designs. Case studies show that the proposed method is very promising.
  • Keywords
    aerodynamics; computational fluid dynamics; design engineering; differential equations; feedforward neural nets; flow simulation; mechanical engineering computing; recurrent neural nets; CFD simulations; aerodynamic design optimization problems; computational fluid dynamics; convergence dynamics; design performance; differential recurrent neural networks; feedforward neural networks; turbine blade shape design optimization; Aerodynamics; Computational fluid dynamics; Computational modeling; Convergence; Design optimization; Differential equations; Feedforward neural networks; Fluid dynamics; Neural networks; Recurrent neural networks;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Neural Networks, 2008. IJCNN 2008. (IEEE World Congress on Computational Intelligence). IEEE International Joint Conference on
  • Conference_Location
    Hong Kong
  • ISSN
    1098-7576
  • Print_ISBN
    978-1-4244-1820-6
  • Electronic_ISBN
    1098-7576
  • Type

    conf

  • DOI
    10.1109/IJCNN.2008.4633843
  • Filename
    4633843