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首页> 外文期刊>Transportation Research Record >Evaluation of Liquefaction Potential Using Neural Networks Based on Adaptive Resonance Theory
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Evaluation of Liquefaction Potential Using Neural Networks Based on Adaptive Resonance Theory

机译:基于自适应共振理论的神经网络液化电位评估

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The incomprehensible loss of lives and extensive damages to transportation facilities caused by earthquakes emphasize the need for robust and reliable methods for evaluating the liquefaction potential of sites. Traditional methods for evaluating liquefaction potential are based on correlating data from the standard penetration test (blow count, N), cone penetration test (cone resistance, q_c), or the shear wave velocity (V_s) with the cyclic stress ratio. These methods are unable to incorporate the complex influence of various soil and in situ state parameters. This problem encouraged the development of numerous nontraditional methods such as artificial neural networks that try to learn and account for the influence of various soil and in situ state properties. The possibility of using neural networks based on adaptive resonance theory (ART) for the prediction of liquefaction potential was explored. These networks have been shown to be far more efficient and reliable than the commonly used backpropagation artificial neural network and other multilayer perceptrons. Two Fuzzy ARTMAP (FAM) models were developed and tested with q_c and V_s data obtained from past case histories. The q_c-and V_s-based FAM models gave overall successful prediction rates of 98% and 97%, respectively. The promising results obtained by the FAM models exemplify the potential of nontraditional computing methods for evaluating liquefaction potential.
机译:地震造成生命的不可估量的损失和运输设施的广泛破坏,强调了需要有力而可靠的方法来评估场地的液化潜力。评估液化潜力的传统方法是基于将标准渗透试验(冲击计数,N),圆锥渗透试验(锥体阻力,q_c)或剪切波速度(V_s)的数据与循环应力比相关联。这些方法无法吸收各种土壤和原位状态参数的复杂影响。这个问题鼓励了许多非传统方法的发展,例如人工神经网络,这些方法试图学习和解释各种土壤和原位状态特性的影响。探索了使用基于自适应共振理论(ART)的神经网络预测液化潜力的可能性。这些网络已被证明比常用的反向传播人工神经网络和其他多层感知器更加有效和可靠。开发了两个模糊ARTMAP(FAM)模型,并使用从过去案例历史中获得的q_c和V_s数据进行了测试。基于q_c和V_s的FAM模型的总体成功预测率分别为98%和97%。通过FAM模型获得的令人鼓舞的结果证明了非传统计算方法在评估液化潜力方面的潜力。

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