• Title/Summary/Keyword: Cyclic shear stress ratio (CSR)

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The Analysis of Liquefaction Evaluation in Ground Using Artificial Neural Network (인공신경망을 이용한 지반의 액상화 가능성 판별)

  • Lee, Song;Park, Hyung-Kyu
    • Journal of the Korean Geotechnical Society
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    • v.18 no.5
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    • pp.37-42
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    • 2002
  • Artificial neural networks are efficient computing techniques that are widely used to solve complex problems in many fields. In this paper a liquefaction potential was estimated by using a back propagation neural network model applicated to cyclic triaxial test data, soil parameters and site investigation data. Training and testing of the network were based on a database of 43 cyclic triaxial test data from 00 sites. The neural networks are trained by modifying the weights of the neurons in response to the errors between the actual output values and the target output value. Training was done iteratively until the average sum squared errors over all the training patterns were minimized. This generally occurred after about 15,000 cycles of training. The accuracy from 72% to 98% was shown for the model equipped with two hidden layers and ten input variables. Important effective input variables have been identified as the NOC,$D_10$ and (N$_1$)$_60$. The study showed that the neural network model predicted a CSR(Cyclic shear stress Ratio) of silty-sand reasonably well. Analyzed results indicate that the neural-network model is more reliable than simplified method using N value of SPT.