Liu Baohua, Lin Hang, Chen Yifan, Yang Chaoyi
School of Resources and Safety Engineering, Central South University, Changsha 410083, China.
Yunan Diqing Non-ferrous Metals Co., Ltd., Shangri-La 674400, China.
Materials (Basel). 2024 Aug 26;17(17):4214. doi: 10.3390/ma17174214.
Rock excavation is essentially an unloading behavior, and its mechanical properties are significantly different from those under loading conditions. In response to the current deficiencies in the peak strength prediction of rocks under unloading conditions, this study proposes a hybrid learning model for the intelligent prediction of the unloading strength of rocks using simple parameters in rock unloading tests. The XGBoost technique was used to construct a model, and the PSO-XGBoost hybrid model was developed by employing particle swarm optimization (PSO) to refine the XGBoost parameters for better prediction. In order to verify the validity and accuracy of the proposed hybrid model, 134 rock sample sets containing various common rock types in rock excavation were collected from international and Chinese publications for the purpose of modeling, and the rock unloading strength prediction results were compared with those obtained by the Random Forest (RF) model, the Support Vector Machine (SVM) model, the XGBoost (XGBoost) model, and the Grid Search Method-based XGBoost (GS-XGBoost) model. Meanwhile, five statistical indicators, including the coefficient of determination (R), mean absolute error (MAE), mean absolute percentage error (MAPE), mean square error (MSE), and root mean square error (RMSE), were calculated to check the acceptability of these models from a quantitative perspective. A review of the comparison results revealed that the proposed PSO-XGBoost hybrid model provides a better performance than the others in predicting rock unloading strength. Finally, the importance of the effect of each input feature on the generalization performance of the hybrid model was assessed. The insights garnered from this research offer a substantial reference for tunnel excavation design and other representative projects.
岩石开挖本质上是一种卸载行为,其力学性能与加载条件下有显著差异。针对当前卸载条件下岩石峰值强度预测存在的不足,本研究提出一种混合学习模型,利用岩石卸载试验中的简单参数对岩石卸载强度进行智能预测。采用XGBoost技术构建模型,并通过粒子群优化算法(PSO)对XGBoost参数进行优化,开发出PSO-XGBoost混合模型以实现更好的预测。为验证所提混合模型的有效性和准确性,从国际和国内出版物中收集了134组包含岩石开挖中各种常见岩石类型的岩石样本集用于建模,并将岩石卸载强度预测结果与随机森林(RF)模型、支持向量机(SVM)模型、XGBoost(XGBoost)模型以及基于网格搜索法的XGBoost(GS-XGBoost)模型得到的结果进行比较。同时,计算了决定系数(R)、平均绝对误差(MAE)、平均绝对百分比误差(MAPE)、均方误差(MSE)和均方根误差(RMSE)这五个统计指标,从定量角度检验这些模型的可接受性。对比较结果的回顾表明,所提PSO-XGBoost混合模型在预测岩石卸载强度方面比其他模型具有更好的性能。最后,评估了每个输入特征对混合模型泛化性能影响的重要性。本研究所得见解为隧道开挖设计和其他代表性工程提供了重要参考。