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《建筑工程》是IVY出版社旗下的一本关注建筑学理论与建筑设计发展的国际期刊,是建筑学理论与现代建筑工程技术相结合的综合性学术刊物。主要刊登有关建筑学研究进展的学术性论文和评论性文章。旨在为该领域内的专家、学者、科研人员提供一个良好的传播、分享和探讨建筑学理论及其进展的交流平台,反映学术前沿水平,促进学术交流,推进建筑学理论和设计方法的发展。本刊可接收中、英文稿件。其中,中文稿件要有详细的英文标题、作者、单位、摘要和关键词。初次投稿请作者按…… 【更多】 《建筑工程》是IVY出版社旗下的一本关注建筑学理论与建筑设计发展的国际期刊,是建筑学理论与现代建筑工程技术相结合的综合性学术刊物。主要刊登有关建筑学研究进展的学术性论文和评论性文章。旨在为该领域内的专家、学者、科研人员提供一个良好的传播、分享和探讨建筑学理论及其进展的交流平台,反映学术前沿水平,促进学术交流,推进建筑学理论和设计方法的发展。

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Paper Infomation

Study on Prediction of Settlement of Foundation Based on Artificial Neural Network

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Author: Xiaobo Xiong, Liduo Zhou

Abstract: When constructing the highway, we encounter series of engineering difficult problems, such as deep soft foundation. The keys of the engineering are to control the final deformation of the foundation. As we all know, Marine sediment clay has higher creep characteristic. When carrying through the soft soil drainage consolidation deformation, shear rheological deformation is the source of soil deformation, that is, the soil particles occur lateral extrusion. At the same time, the creep deformation is the main and the consolidation deformation is secondary. The principle and application of neural network were introduced. Through improving the algorithm of neural network, the NNT prediction model was built. The author have taken the eight parameters including (as input values): ground treatment methods, the thickness of soft soil, compression modulus of soft soil, the thickness of the hard soil, compression modulus of hard soil, height of embankment, construction time, settlement when engineering completed. The results also proved BP neural network prediction model has high accuracy and stability, can be used in similar projects.

Keywords: Artificial Neural Network; Foundation; Settlement; Prediction

References:

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