ISSN 1003-8035 CN 11-2852/P
    袁于思,冯小鹏,李勇,等. 基于PSO-DSRVM的边坡变形预测[J]. 中国地质灾害与防治学报,2023,34(1): 1-7. DOI: 10.16031/j.cnki.issn.1003-8035.202112032
    引用本文: 袁于思,冯小鹏,李勇,等. 基于PSO-DSRVM的边坡变形预测[J]. 中国地质灾害与防治学报,2023,34(1): 1-7. DOI: 10.16031/j.cnki.issn.1003-8035.202112032
    YUAN Yusi,FENG Xiaopeng,LI Yong,et al. Prediction of mine slope deformation based on PSO-DSRVM[J]. The Chinese Journal of Geological Hazard and Control,2023,34(1): 1-7. DOI: 10.16031/j.cnki.issn.1003-8035.202112032
    Citation: YUAN Yusi,FENG Xiaopeng,LI Yong,et al. Prediction of mine slope deformation based on PSO-DSRVM[J]. The Chinese Journal of Geological Hazard and Control,2023,34(1): 1-7. DOI: 10.16031/j.cnki.issn.1003-8035.202112032

    基于PSO-DSRVM的边坡变形预测

    Prediction of mine slope deformation based on PSO-DSRVM

    • 摘要: 为了建立高精度的边坡位移预测模型,文章采用基于粒子群优化(PSO)的双稀疏相关向量机(DSRVM)建立边坡稳定性和影响因素之间的非线性关系。双稀疏相关向量机是在变分和相关向量机(RVM)框架下提出的一种多核组合优化的方法,相比于RVM和其他多核学习方法,DSRVM不仅有更少的训练时间,并且能够得到更高的预测精度。由于DSRVM的核参数对预测效果的影响较大,文章采用粒子群算法实现多个核参数的优化选取并应用于边坡位移预测。最后将本文提出的基于粒子群优化的双稀疏相关向量机(PSO-DSRVM)预测结果与极限学习机 (ELM)和小波神经网络(WNN)预测结果进行对比,通过均方根误差(RMSE)、复相关系数(R2)和平均相对预测误差(ARPE)进行评价,验证了PSO-DSRVM模型在边坡变形预测上的可行性。

       

      Abstract: In order to establish a high-precision prediction model of mine slope displacement, Doubly Sparse Relevance Vector Machine (DSRVM) based on Particle Swarm Optimization (PSO) was used to establish the nonlinear relationship between slope stability and influencing factors in this paper. DSRVM was a multi-core combinatorial optimization method, which was proposed under the framework of variational and Relevance Vector Machines (RVM). Compared with RVM and other multiple-kernel learning methods, DSRVM not only had less training time, but also can obtained higher prediction accuracy. Aiming at the influence of the parameter’s selection of DSRVM on the final prediction effect, the optimal multiple kernel parameters was determined by PSO algorithm to be used in the mine slope displacement prediction. Compared the computational results of DSRVM with Extreme Learning Machine (ELM) and Wavelet Neural Network (WNN), the feasibility of PSO-DSRVM in slope deformation prediction was verified by the evaluation indicators such as RMSE, R2 and ARPE.

       

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