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A new site classification approach based on neural networks

机译:基于神经网络的站点分类新方法

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摘要

Site classification is an important procedure for a reliable site-specific seismic hazard assessment. On the other hand, the site conditions at strong-motion stations are essential for accurate interpretation and analysis of the recorded ground motion data obtained from different regions of the world. For some countries with insufficient data on the subsurface geological settings, the required site condition information is not available. This paper presents a new and efficient approach for site classification based on artificial neural networks (ANN) along with a selected set of representative horizontal to vertical spectral ratio (HVSR) curves for four site classes. The nonlinear nature of ANN and their ability to learn in a complex environment make it highly suitable for function approximation and solving complicated engineering problems. Two types of radial basis function (RBF) neural networks, namely, probabilistic neural networks (PNN) and generalized regression neural networks (CRNN) were chosen in this study, as no separate training phase is required, rendering them particularly suitable for site classification. The proposed approach has been tested using data of the Chi-Chi, Taiwan, earthquake (M_w= 7.6) recorded from 87 stations at which the site conditions are known. Analyses show that both the PNN and the GRNN perform very well with similar accuracy in estimating site conditions, with successful rates of 78% and 75%, respectively.
机译:场地分类是进行可靠的特定地点地震灾害评估的重要程序。另一方面,强运动台站的现场条件对于准确解释和分析从世界不同地区获得的地面运动记录数据至关重要。对于一些地下地质背景数据不足的国家,所需的场地条件信息不可用。本文提出了一种基于人工神经网络(ANN)的新的高效站点分类方法,以及针对四个站点类别的一组选定的代表性水平与垂直频谱比(HVSR)曲线。 ANN的非线性特性及其在复杂环境中的学习能力使其非常适合函数逼近和解决复杂的工程问题。由于不需要单独的训练阶段,因此本研究选择了两种类型的径向基函数(RBF)神经网络,即概率神经网络(PNN)和广义回归神经网络(CRNN),这使其特别适合于站点分类。使用从台湾已知的地点条件已知的87个台站记录的台湾集集地震数据(M_w = 7.6)对提出的方法进行了测试。分析表明,PNN和GRNN在估计场地条件方面均表现出很好的准确性,其成功率分别为78%和75%。

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