Lin Li, Linlong Zuo, Guangfeng Wei, Shouming Jiang, Jian Yu
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引用次数: 0
摘要
在救灾工作中,小型地锚被广泛用于固定帐篷。鉴于救援行动的紧迫性,及时、准确地估算其拉拔能力至关重要。在本研究中,利用锥体穿透数据,开发了一种堆叠式机器学习(ML)模型,用于快速估算临时帐篷所用小型地锚的拉拔能力。所提出的堆叠模型采用了三种 ML 算法作为基础回归模型:K 近邻(KNN)、支持向量回归(SVR)和极梯度提升(XGBoost)。数据集包括 119 次原位锚固拉拔测试(其中测量了锥体穿透数据),用于训练和评估堆叠模型的性能。采用了三个指标,即判定系数(R2)、平均绝对误差(MAE)和均方根误差(RMSE),来评估所提出模型的预测准确性,并将其性能与四个流行的 ML 模型和一个经验公式进行比较,以突出所提出的堆叠方法的优势。结果表明,所提出的堆叠模型优于其他 ML 模型和经验方法,因为它获得了更高的 R2、更低的 MAE 和 RMSE,以及更多的预测数据点位于 20% 误差线以内。因此,作为有效预测小型地锚拉拔能力的一种解决方案,所提出的堆叠模型具有广阔的前景。
A stacking machine learning model for predicting pullout capacity of small ground anchors
Small ground anchors are widely used to fix securing tents in disaster relief efforts. Given the urgent nature of rescue operations, it is crucial to obtain prompt and accurate estimations of their pullout capacity. In this study, a stacking machine learning (ML) model is developed for the rapid estimation of pullout capacity offered by small ground anchors used for temporary tents, leveraging cone penetration data. The proposed stacking model incorporates three ML algorithms as the base regression models: K-nearest neighbors (KNN), support vector regression (SVR), and extreme gradient boosting (XGBoost). A dataset comprising 119 in-situ anchor pullout tests, where the cone penetration data were measured, is utilized to train and assess the stacking model performance. Three metrics, i.e., coefficient of determination (R2), mean absolute error (MAE), and root mean square error (RMSE), are employed to evaluate the predictive accuracy of the proposed model and compare its performance against four popular ML models and an empirical formula to highlight the advantages of the proposed stacking approach. The results affirm that the proposed stacking model outperforms other ML models and the empirical approach as achieving higher R2 and lower MAE and RMSE and more predicted data points falling within 20% error line. Thus, the proposed stacking model holds promising potential as a solution for efficiently predicting the pullout capacity of small ground anchors.