Performance Improvement of the Fourier Transform Method in PIV by Means of a Neural Network

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Other Title
  • 128 ニューラルネットによるフーリエ変換法の性能改善

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Abstract

In this paper, a multiple-layer neural network model has been applied to the Fourier transform method in 2-D Particle Image Velocimetry to improve the measurement accuracy. The input information of the neural network is the complex phase that is extracted from the Fourier transforms of two images captured in a short time interval, and the output is the spatial shift of the pattern on the images. The learning is performed by a conventional error back propagation method. The performance test shows that the present method is robust against velocity fluctuation and the computing time can be reduced to about 75% of that of the original Fourier transform method.

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Details 詳細情報について

  • CRID
    1390001204618967936
  • NII Article ID
    10002673383
  • NII Book ID
    AN10374478
  • DOI
    10.3154/jvs.15.supplement1_161
  • ISSN
    1884037X
    09164731
  • Text Lang
    ja
  • Data Source
    • JaLC
    • Crossref
    • CiNii Articles
  • Abstract License Flag
    Disallowed

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