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首页> 外文期刊>International journal of geomechanics >Predicting Liquefaction-Induced Lateral Spreading by Using Neural Network and Neuro-Fuzzy Techniques
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Predicting Liquefaction-Induced Lateral Spreading by Using Neural Network and Neuro-Fuzzy Techniques

机译:使用神经网络和神经模糊技术预测液化引起的横向扩展

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The prediction of lateral spreading is an important task because of the complexities of lateral-spreading behavior. The aim of this work is to improve an accurate liquefaction-induced lateral-spreading prediction by using multiple regression methods, such as multilinear regression (MLR), multilayer perceptrons (MLPs), and the adaptive neuro-fuzzy inference system (ANFIS). Predictions of lateral spreading from the developed MLR, MLP, and ANFIS models in tractable (susceptible) equation form are obtained and compared with the value predicted using traditional methods. Principal-component analysis is used to evaluate the effects of each input variable on the lateral spreading. On the basis of the comparisons, it is found that the MLP is better than the ANFIS, MLR, and Youd equation for estimating maximum lateral displacement of free-face conditions. For gently sloping ground conditions, however, similar results are obtained with MLP and ANFIS, which are better than the MLR and Youd equation. The MLP model was also tested with data obtained from Adapazari, Turkey, to estimate total lateral displacement.
机译:由于横向扩展行为的复杂性,横向扩展的预测是一项重要的任务。这项工作的目的是通过使用多种回归方法(例如多线性回归(MLR),多层感知器(MLP)和自适应神经模糊推理系统(ANFIS))来改善液化引起的横向扩展的准确预测。从开发的MLR,MLP和ANFIS模型以易处理的(易感的)方程形式获得横向扩展的预测,并将其与使用传统方法预测的值进行比较。主成分分析用于评估每个输入变量对横向扩展的影响。在比较的基础上,发现在估计自由面条件的最大横向位移时,MLP优于ANFIS,MLR和Youd方程。但是,对于平缓倾斜的地面条件,使用MLP和ANFIS可获得类似的结果,其结果优于MLR和Youd方程。还使用从土耳其Adapazari获得的数据对MLP模型进行了测试,以估计总的横向位移。

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