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基于IPOA-SVR模型的边坡安全系数预测
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作者 张佳琳 王孝东 +4 位作者 吴雅菡 水宽 张玉 程玥淞 杜青文 《有色金属(矿山部分)》 2025年第1期115-123,共9页
安全系数是用来评估边坡稳定性的重要指标之一,复杂的边坡系统导致安全系数预测存在不确定性。因此,为了获得更加可靠的安全系数,同时解决鹈鹕算法(POA)随着迭代次数的增加易陷入局部最优的缺点,提出了一种融合多策略的鹈鹕算法(IPOA)... 安全系数是用来评估边坡稳定性的重要指标之一,复杂的边坡系统导致安全系数预测存在不确定性。因此,为了获得更加可靠的安全系数,同时解决鹈鹕算法(POA)随着迭代次数的增加易陷入局部最优的缺点,提出了一种融合多策略的鹈鹕算法(IPOA)与支持向量机(SVR)结合的回归模型来预测边坡安全系数。首先,融合多策略将原始的鹈鹕算法进行改进;再运用改进的鹈鹕算法与支持向量机结合,选取六个影响因素作为IPOA-SVR模型的输入层指标并对模型进行训练,得到IPOA-SVR边坡稳定性预测模型;最后,分别与KNN、RF和Adaboost模型对比,并计算各个模型在训练集和测试集上的均方误差(MSE),以此来验证IPOA-SVR模型的优越性。实验结果显示:与其他模型相比,IPOA-SVR模型寻优性能强,在测试集上的均方误差为0.030 9、相关系数为0.91,说明本文对POA算法所用策略的有效性,IPOA-SVR模型可以为边坡失稳灾害的相关预测提供坚实的技术基础。 展开更多
关键词 安全系数 鹈鹕算法 支持向量机 边坡稳定性 均方误差
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Optimizing slope safety factor prediction via stacking using sparrow search algorithm for multi-layer machine learning regression models 被引量:2
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作者 shui kuan HOU Ke-peng +2 位作者 HOU Wen-wen SUN Jun-long SUN Hua-fen 《Journal of Mountain Science》 SCIE CSCD 2023年第10期2852-2868,共17页
The safety factor is a crucial quantitative index for evaluating slope stability.However,the traditional calculation methods suffer from unreasonable assumptions,complex soil composition,and inadequate consideration o... The safety factor is a crucial quantitative index for evaluating slope stability.However,the traditional calculation methods suffer from unreasonable assumptions,complex soil composition,and inadequate consideration of the influencing factors,leading to large errors in their calculations.Therefore,a stacking ensemble learning model(stacking-SSAOP)based on multi-layer regression algorithm fusion and optimized by the sparrow search algorithm is proposed for predicting the slope safety factor.In this method,the density,cohesion,friction angle,slope angle,slope height,and pore pressure ratio are selected as characteristic parameters from the 210 sets of established slope sample data.Random Forest,Extra Trees,AdaBoost,Bagging,and Support Vector regression are used as the base model(inner loop)to construct the first-level regression algorithm layer,and XGBoost is used as the meta-model(outer loop)to construct the second-level regression algorithm layer and complete the construction of the stacked learning model for improving the model prediction accuracy.The sparrow search algorithm is used to optimize the hyperparameters of the above six regression models and correct the over-and underfitting problems of the single regression model to further improve the prediction accuracy.The mean square error(MSE)of the predicted and true values and the fitting of the data are compared and analyzed.The MSE of the stacking-SSAOP model was found to be smaller than that of the single regression model(MSE=0.03917).Therefore,the former has a higher prediction accuracy and better data fitting.This study innovatively applies the sparrow search algorithm to predict the slope safety factor,showcasing its advantages over traditional methods.Additionally,our proposed stacking-SSAOP model integrates multiple regression algorithms to enhance prediction accuracy.This model not only refines the prediction accuracy of the slope safety factor but also offers a fresh approach to handling the intricate soil composition and other influencing factors,making it a precise and reliable method for slope stability evaluation.This research holds importance for the modernization and digitalization of slope safety assessments. 展开更多
关键词 Multi-layer regression algorithm fusion Stacking gensemblelearning Sparrow search algorithm Slope safety factor Data prediction
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