首页> 外文会议>Asia-Pacific Symposium on Engineering Plasticity and Its Applications;AEPA; 20060925-29;20060925-29; Nagoya(JP);Nagoya(JP) >Parameter Identification of Soil Hyperbolic Constitutive Model by Inverse Analysis Procedure
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Parameter Identification of Soil Hyperbolic Constitutive Model by Inverse Analysis Procedure

机译:基于反分析程序的土壤双曲本构模型参数辨识

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A tangent modulus of soil mass which allows for a piece-wise linear approximation of the hyperbolic response curve is particularly suited for incremental construction simulation. The parameter identification of nonlinear constitutive model of soil mass is based on an inverse analysis procedure, which consists of minimizing the objective function representing the difference between the experimental data and the calculated data of the mechanical model. The artificial neural network is applied to estimate the model parameters of soil mass. The weights of neural network are trained by using the Levenberg-Marquardt approximation which has a fast convergent ability. The parameter identification results illustrate that the proposed neural network has not only higher computing efficiency but also better identification accuracy. The numerically computational results with finite element method show that the forecasted displacements at observing points according to identified model parameters can precisely agree with the observed displacements.
机译:允许双曲线响应曲线分段线性逼近的土壤质量切线模量特别适用于增量施工模拟。土体非线性本构模型的参数辨识基于逆分析程序,该过程包括最小化表示力学模型实验数据与计算数据之间差异的目标函数。运用人工神经网络估算土壤质量的模型参数。使用具有快速收敛能力的Levenberg-Marquardt逼近训练神经网络的权重。参数辨识结果表明,所提出的神经网络不仅具有较高的计算效率,而且具有较高的辨识精度。有限元方法的数值计算结果表明,根据确定的模型参数预测的观测点位移可以与观测到的位移精确吻合。

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