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Automatic Determination of Crack Opening Loading under Random Loading by the Use of Neural Network

신경회로망을 이용한 변동하중 하에서의 균열열림점 자동측정

  • Published : 2000.09.01

Abstract

The neural network method is applied to automatically measure the crack opening load under random loading. The crack opening results obtained are compared with the visual measured results. Fatigue crack growth under random loading is predicted using the crack opening data measured by the neural network method, and the prediction results are compared with experimental ones. It is found that the neural network method can be successfully applied to consistently measure the crack opening load under random loading and also gives some results different from the results by visual measurement.

Keywords

References

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