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Çѱ¹Áö¹Ý°øÇÐȸ / v.20, no.8, 2004³â, pp.77-87
±¹³» ¿¬¾àÁö¹ÝÀÇ ¼±Çà¾Ð¹ÐÇÏÁß ÃßÁ¤À» À§ÇÑ ÇÇ¿¡Á¶ÄÜ Àΰø½Å°æ¸Á ¸ðµ¨
( Piezocone Neural Network Model for Estimation of Preconsolidation Pressure of Korean Soft Soils )
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In this paper a back-propagation neural network model is developed to estimate the preconsolidation pressure of Korean soft soils based on 176 oedometer tests and 63 piezocone test results, which were compiled from 11 sites - western and southern parts of Korea. Only 147 data were used for the training of the neural network and 29 data, which were not used during the training phase, were used for the verification of trained network. Empirical and theoretical models were compared with the developed neural network model. A simple 4-4-9-1 multi-layered neural network has been developed. The cone tip resistance $q_T$ penetration pore pressure $u_2$, total overburden pressure $sigma_{vo}$ and effective overburden pressure $sigma'_{vo}$ were selected as input variables. The developed neural network model was validated by comparing the prediction results of the proposed neural network model for the new data which were not used for the training of the model with the measured preconsolidation pressures. It can also predict more precise and reliable preconsolidation pressures than the analytical and empirical model. Furthermore, it can be carefully concluded that neural network model can be used as a generalized model for prediction of preconsolidation pressure throughout Korea since developed model shows good performance for the new data which were not used in both training and testing data.
 
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Back-propagation algorithm;Korean soft soils;Neural networtL Piezocone;Preconsolidation pressure;
 
Çѱ¹Áö¹Ý°øÇÐȸ³í¹®Áý / v.20, no.8, 2004³â, pp.77-87
Çѱ¹Áö¹Ý°øÇÐȸ
ISSN : 1229-2427
UCI : G100:I100-KOI(KISTI1.1003/JNL.JAKO200411923039620)
¾ð¾î : Çѱ¹¾î
³í¹® Á¦°ø : KISTI Çѱ¹°úÇбâ¼úÁ¤º¸¿¬±¸¿ø
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