Physical modeling and visualization

时间:2023-04-29 06:26:57 天文地理论文 我要投稿
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Physical modeling and visualization of soil liquefaction under high confining stress

The mechanisms of seismically-induced liquefaction of granular soils under high confining stresses are still not fully understood. Evaluation of these mechanisms is generally based on extrapolation of observed behavior at shallow depths.Three centrifuge model tests were conducted at RPI's experimental facility to investigate the effects of confining stresses on the dynamic response ora deep horizontal deposit of saturated sand. Liquefaction was observed at high confining stresses in each of the tests. A system identification procedure was used to estimate the associated shear strain and stress time histories.These histories revealed a response marked by shear strength degradation and dilative patterns. The recorded accelerations and pore pressures were employed to generate visual animations of the models. These visualizations revealed a liquefaction front traveling downward and leading to large shear strains and isolation of upper soil layers.

作 者: Lenart González Tarek Abdoun Mourad Zeghal Vivian Kallou Michael K. Sharp   作者单位: Lenart González,Tarek Abdoun,Mourad Zeghal(Dept. of Civil and Environmental Engineering, Rensselaer Polytechnic Inst. (RPI), Troy, NY, USA)

Vivian Kallou(Mueser Rutledge Consulting Engineers, 225 W 34th Street, New York, NY, USA)

Michael K. Sharp(US Army Engineer Research and Development Center, Vicksburg, MS, USA) 

刊 名: 地震工程与工程振动(英文版)  SCI 英文刊名: EARTHQUAKE ENGINEERING AND ENGINEERING VIBRATION  年,卷(期): 2005 4(1)  分类号: P315  关键词: centrifuge modeling   high confining stress   liquefaction   system identification   visualization  

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