Prediction of in situ state parameter of sandy deposits from CPT measurements using optimized GMDH-type neural networks

被引:0
|
作者
Wei Duan
Surya Sarat Chandra Congress
Guojun Cai
Zening Zhao
Songyu Liu
Xiaoqiang Dong
Ruifeng Chen
Huanhuan Qiao
机构
[1] Taiyuan University of Technology,College of Civil Engineering
[2] Southeast University,Institute of Geotechnical Engineering, School of Transportation
[3] Texas A&M University,Zachry Department of Civil and Environmental Engineering
[4] Anhui Jianzhu University,School of Civil Engineering
来源
Acta Geotechnica | 2022年 / 17卷
关键词
Cone penetration test; GMDH neural network; In situ state; Liquefaction; State parameter;
D O I
暂无
中图分类号
学科分类号
摘要
Increase in seismic events around the world has necessitated the evaluation of soil liquefaction potential since it adversely influences the stability of adjacent structures and poses a threat to lives and property. The first step in evaluating the liquefaction potential involves the estimation of the in situ state of sand and the state parameter as an index to characterize the behavior of sand. Due to the difficulty in obtaining high-quality undisturbed sandy samples for laboratory testing and evaluation, simplified equations based on the cone penetration test (CPT) are used for reasonable estimation of field behavior. In the present study, an optimized group method of data handling (GMDH)-type neural network was proposed to estimate the state parameter from CPT data obtained from the historical liquefaction database. A comparison was made between the measured and the predicted values of the state parameter to evaluate the performance of the proposed GMDH neural network method. A sensitivity analysis of the proposed model was also carried out to study the effect of input variables on the output variable of the proposed model. Additionally, the evaluation of in situ state and liquefaction potential of sand based on the state parameter was also presented and compared with the existing methods. Overall, the use of the GMDH model in evaluating the in situ state of sand and subsequent liquefaction potential assessment has shown promising results.
引用
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页码:4515 / 4535
页数:20
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