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首页> 外文期刊>Natural hazards and earth system sciences >Determination of the relationship between soil properties and earthquake damage with the aid of neural networks: A case study in Adapazari, Turkey
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Determination of the relationship between soil properties and earthquake damage with the aid of neural networks: A case study in Adapazari, Turkey

机译:借助神经网络确定土壤性质与地震破坏之间的关系:以土耳其阿达帕扎里为例

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摘要

The building stock in the city of Adapazari, Turkey, experienced widespread damage during the 1999 Marmara earthquake.An attempt was made to relate structural damage to the type of subsoil in this study.The Adapazari soil database has been established which contains information on boreholes, cone penetration and laboratory testing since 1996 and is being updated continuously.The database has been organised using a geographical information system software.Several numeric soil profiles across the city were then taken to establish a back propagation neural network model to enable the investigator to estimate probable structural damage by referring to the type of soils at the usual footing embedment depths.Ten cross sections comprising 140 data each were used to form scanlines of 1400 m length.The input for the neural networks were the physical, mechanical and dynamic properties of soils while the resulting damage ratio data formed the target layer.Feedforward, backward spreading networks were employed in modelling.Numeric data for eight cross sections were employed for the learning process, whereas data for two cross sections were used to test the model.The proposed model was found to predict the damage ratios successfully.The general evaluation of the city following the earthquake has shown that the structural damage was minimal in a limited section of the city where the bedrock outcrops.The damage in the flat areas around the outcropping rock covered by lacustrine clays of high and intermediate plasticity was markedly low.However, damage and destruction was obvious in the central parts of the city where liquefaction and cyclic softening cases were abundant.
机译:土耳其Adapazari市的建筑材料在1999年的马尔马拉地震中遭受了广泛的破坏。本研究试图将结构破坏与地下土壤的类型相关。Adapazari土壤数据库已建立,其中包含有关钻孔的信息,自1996年以来进行锥孔渗透和实验室测试,并不断进行更新。使用地理信息系统软件对数据库进行了组织,然后对整个城市的几个土壤数值进行了建模,以建立反向传播神经网络模型,以使研究者能够估算出通过参考通常立足深度的土壤类型来进行结构破坏。使用十个包含140个数据的横截面形成1400 m长的扫描线。神经网络的输入是土壤的物理,机械和动态特性最终的损坏率数据形成了目标层。在建模过程中使用了八个横截面的数值数据进行学习,而使用两个横截面的数据进行了模型测试,发现了所提出的模型可以成功地预测破坏率。地震表明,在基岩露头的城市的有限区域中,结构破坏最小,而在高塑性和中等塑性的湖相粘土覆盖的露头岩石周围的平坦区域中的破坏明显较低,但破坏和破坏在城市中部的液化和周期性软化现象丰富的地区很明显。

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