A study on Development of Artificial Neural Network (ANN) for Preliminary Design of Urban Deep Ex cavation and Tunnelling

IF 0.4 Q4 ENGINEERING, GEOLOGICAL Journal of the Korean Geosynthetic Society Pub Date : 2020-01-01 DOI:10.12814/JKGSS.2020.19.1.011
C. Yoo, Jaewon Yang
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引用次数: 1

Abstract

In this paper development artificial neural networks (ANN) for preliminary design and prediction of urban tunnelling and deep excavation-induced ground settlement was presented. In order to form training and validation data sets for the ANN development, field design and measured data were collected for various tunnelling and deep-excavation sites. The field data were then used as a database for the ANN training. The developed ANN was validated against a testing set and the unused field data in terms of statistical parameters such as R, RMSE, and MAE. The practical use of ANN was demonstrated by applying the developed ANN to hypothetical conditions. It was shown that the developed ANN can be effectively used as a tool for preliminary excavation design and ground settlement prediction for urban excavation problems.
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人工神经网络(ANN)在城市深挖隧道初步设计中的发展研究
本文提出了将人工神经网络(ANN)应用于城市隧道及深挖引起的地面沉降的初步设计与预测。为了形成人工神经网络开发的训练和验证数据集,收集了各种隧道和深基坑的现场设计和实测数据。然后将现场数据用作人工神经网络训练的数据库。根据统计参数(如R、RMSE和MAE),根据测试集和未使用的字段数据验证开发的ANN。通过将开发的人工神经网络应用于假设条件,证明了人工神经网络的实际应用。研究结果表明,所开发的人工神经网络可以有效地作为城市开挖问题的初步开挖设计和地面沉降预测的工具。
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