Journal of Hydroelectric Engineering ›› 2026, Vol. 45 ›› Issue (1): 99-108.doi: 10.11660/slfdxb.20260110
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Abstract: For a dam curtain-grouting project, accurate prediction of its unit grout injection volume is crucial to engineering cost control and effective mitigation of its seepage-related risks. To address the complicated nonlinear relationship between its evaluation indicators and unit cement consumption, this paper presents a novel prediction model based on stacking ensemble learning, and compares it with the models of Random Forest (RF), XGBoost, and Support Vector Machine (SVM). We optimize the hyper-parameters of these models using a Newton-Raphson-based optimizer (NRBO), and test their predictive performance based on both training sets and validation sets. Results show the stacking model markedly outperforms the single-method models, with R2 = 0.998 and RMSE = 0.350 achieved on the training sets, and R2 = 0.971 and RMSE = 1.224 on the validation sets. By contrast, validation-set R2 values of the three single-method models are 0.905, 0.930 and 0.728 respectively, and RMSEs are 2.219, 1.896 and 3.748 respectively. Ensemble-learning models (Stacking, RF, and XGBoost) feature a stronger fitting capacity and robustness in the case of high-dimensional nonlinear data, while the stacking model, by leveraging the strengths of multiple base learners, further enhances predictive accuracy and robustness to outliers. Thus, our NRBO-Stacking model offers high accuracy, effective solutions, and better generalization performance for dam curtain-grouting projects.
Key words: dam engineering, curtain grouting, cement consumption prediction, random forest, NRBO algorithm, ensemble learning model
ZHANG Pengcheng, MA Chao, GU Xiqian. Prediction of injection volume in curtain grouting using hybrid optimized stacking ensemble learning algorithm[J].Journal of Hydroelectric Engineering, 2026, 45(1): 99-108.
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URL: http://www.slfdxb.cn/EN/10.11660/slfdxb.20260110
http://www.slfdxb.cn/EN/Y2026/V45/I1/99
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