Jing-min Xu, Chen-cheng Wang, Zhi-liang Cheng, Tao Xu, Ding-wen Zhang, Zi-li Li
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引用次数: 0
摘要
本文旨在探索遗传编程(GP)在考虑多因素影响的情况下实现隧道诱发建筑变形智能预测的能力。本文共使用了 1099 组从 22 个土工离心机试验中获得的数据,并使用 GP 进行了模型开发和分析。选择隧道体积损失、建筑物偏心率、土壤密度、建筑物横向宽度、建筑物剪切刚度和建筑物荷载作为输入,剪切变形作为输出。结果表明,所提出的智能预测模型能够在现实条件下合理、准确地预测隧道施工导致的框架结构建筑剪切变形,突出了框架结构建筑的剪切刚度和地基下压力对结构变形的重要作用。通过参数分析和对比分析,证明了所提出的模型在分析相关工程问题时的高效性和可行性。研究结果表明,GP 方法在预测隧道开挖引起的建筑物变形方面具有巨大潜力。所提出的方程可用于快速、智能地预测隧道工程引起的建筑物变形,为城市隧道建设项目的实际设计和风险评估提供有价值的指导。
Intelligent prediction model of tunnelling-induced building deformation based on genetic programming and its application
This paper aims to explore the ability of genetic programming (GP) to achieve the intelligent prediction of tunnelling-induced building deformation considering the multifactor impact. A total of 1099 groups of data obtained from 22 geotechnical centrifuge tests are used for model development and analysis using GP. Tunnel volume loss, building eccentricity, soil density, building transverse width, building shear stiffness and building load are selected as the inputs, and shear distortion is selected as the output. Results suggest that the proposed intelligent prediction model is capable of providing a reasonable and accurate prediction of framed building shear distortion due to tunnel construction with realistic conditions, highlighting the important roles of shear stiffness of framed buildings and the pressure beneath the foundation on structural deformation. It has been proven that the proposed model is efficient and feasible to analyze relevant engineering problems by parametric analysis and comparative analysis. The findings demonstrate the great potential of GP approaches in predicting building distortion caused by tunnelling. The proposed equation can be used for the quick and intelligent prediction of tunnelling induced building deformation, providing valuable guidance for the practical design and risk assessment of urban tunnel construction projects.
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