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基于人工智能算法的隧道锚承载能力评价
引用本文:王中豪,郭喜峰,杨星宇. 基于人工智能算法的隧道锚承载能力评价[J]. 西南交通大学学报, 2021, 56(3): 534-540. DOI: 10.3969/j.issn.0258-2724.20200165
作者姓名:王中豪  郭喜峰  杨星宇
摘    要:针对隧道锚承载能力评价合理的解析计算公式缺乏、模型试验测试方法耗时费力、数值模拟可靠性不佳的问题,提出了一种人工智能化隧道锚承载能力预测方法.从隧道锚受力传力过程出发,分析了影响承载能力的因子,确定了承载能力评价指标体系;基于最小二乘支持向量机(least squares support vector machines...

关 键 词:隧道锚  承载能力  最小二乘支持向量机  粒子群优化算法
收稿时间:2020-04-06

Bearing Capacity Evaluation of Tunnel-Type Anchorage Based on Artificial Intelligent Algorithm
WANG Zhonghao,GUO Xifeng,YANG Xingyu. Bearing Capacity Evaluation of Tunnel-Type Anchorage Based on Artificial Intelligent Algorithm[J]. Journal of Southwest Jiaotong University, 2021, 56(3): 534-540. DOI: 10.3969/j.issn.0258-2724.20200165
Authors:WANG Zhonghao  GUO Xifeng  YANG Xingyu
Abstract:At present, the tunnel-type anchorage is short of reasonable analytical formula for the evaluation of the bearing capacity, the model test is time-consuming and labor-consuming, and its numerical simulation has poor reliability. To handle the above problems, an artificial intelligence method is presented for predicting the bearing capacity of the tunnel-type anchorage. Starting from its force transmission process, the factors influencing the bearing capacity are analyzed and the evaluation index system of bearing capacity has been determined. Then, given the strong learning prediction ability of least squares support vector machines (LSSVM) and excellent performance of particle swarm optimization (PSO), a PSO-LSSVM model with nonlinear mapping of bearing capacity is established. After training the model with 17 cases of the tunnel-type anchorage as input samples, the optimal combination of kernel parameters and penalty coefficients is determined to be (1,500). Finally, the model is used to predict the bearing capacity of a bridge tunnel-type anchorage and the prediction result is determined as 10.2P. The comparison with the bearing capacity result of 11.0P that is determined by the comprehensive study of the scale model test and numerical simulation method, demonstrate that the predicted result is slightly lower but very close to the result of other method. This also shows that the prediction results of the model are reasonable, reliable and conservative, and the prediction effect is desirable. 
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