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作 者:Yahui Zhang
机构地区:[1]Hebei Urban and Rural Construction School,Shijiazhuang,China
出 处:《Railway Sciences》2024年第6期717-730,共14页铁道科学(英文)
基 金:funded by the Natural Science Foundation of Hebei Province(No:E2020210068);Project of Science and Technology Research and Development Program of China National Railway Group Co.,Ltd.(No:N2020G009).
摘 要:Purpose–The wavelet neural network(WNN)has the drawbacks of slow convergence speed and easy falling into local optima in data prediction.Although the artificial bee colony(ABC)algorithm has strong global optimization ability and fast convergence speed,it also has the drawbacks of slow speed while finding the optimal solution and weak optimization ability in the later stage.Design/methodology/approach–This article uses an ABC algorithm to optimize the WNN and establishes an ABC-WNN analysis model.Based on the example of the Jinan Yuhan underground tunnel project,the deformation of the surrounding rock of the double-arch tunnel crossing the fault fracture zone is predicted and analyzed,and the analysis results are compared with the actual detection amount.Findings–The comparison results show that the predicted values of the ABC-WNN model have a high degree of fitting with the actual engineering data,with a maximum relative error of only 4.73%.On this basis,the results show that the statistical features of ABC-WNN are the lowest,with the errors at 0.566 and 0.573,compared with the single back propagation(BP)neural network model and WNN model.Therefore,it can be derived that the ABC-WNN model has higher prediction accuracy,better computational stability and faster convergence speed for deformation.Originality/value–This article uses firstly the ABC-WNN for the deformation analysis of double-arch tunnels.This attempt laid the foundation for artificial intelligence prediction in deformation analysis of multiarch tunnels and small clearance tunnels.It can provide a new and effective way for deformation prediction in similar projects.
关 键 词:Double arch tunnel Deformation prediction Artificial bee colonies Surrounding rock Wavelet neural network
分 类 号:U21[交通运输工程—道路与铁道工程]
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