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Data on evolutionary hybrid neural network approach to predict shield tunneling-induced ground settlements

机译:关于进化混合神经网络方法预测盾构隧道诱导地面沉降的数据

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The dataset presented in this article pertains to records of shield tunneling-induced ground settlements in Guangzhou Metro Line No. 9. Field monitoring results obtained from both the two tunnel lines are put on display. In total, 17 principal variables affecting ground settlements are tabulated, which can be divided into two categories: geological condition parameters and shield operation parameters. Shield operation parameters are specifically provided in time series. Another value of the dataset is the consideration of karst encountered in the shield tunnel area including the karst cave height, the distance between karst cave and tunnel invert, and the karst cave treatment scheme. The dataset can be used to enrich the database of settlement caused by shield tunneling as well as to train artificial intelligence-based ground settlement prediction models. The dataset presented herein were used for the article titled “Evolutionary hybrid neural network approach to predict shield tunneling-induced ground settlements” (Zhang et?al., 2020).
机译:本文提出的数据集涉及广州地铁线路9.屏蔽隧道诱导的地面定居点的记录9.从两条隧道线路获得的现场监测结果显示。总共影响地面定居点的17个主要变量,可分为两类:地质条件参数和屏蔽操作参数。屏蔽操作参数专门提供时间序列。 DataSet的另一个值是考虑在包括岩溶洞穴高度的屏蔽隧道区域中遇到的喀斯特,岩溶洞穴和隧道反转之间的距离以及岩溶洞穴处理方案。数据集可用于丰富由盾构隧道引起的结算数据库,以及培训基于人工智能的地面沉降预测模型。这里提出的数据集用于标题为“进化混合神经网络方法以预测盾构隧道诱导的地面沉降”(Zhang Et'Al.,2020)的物品。

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