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Hybrid Grey Wolf Optimization Algorithm-Based Support Vector Machine for Groutability Prediction of Fractured Rock Mass

机译:基于混合灰狼优化算法的支持向量机在裂隙岩体可灌性预测中的应用

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摘要

Groutability determination is a very important task in grouting quality control. There is little research on the groutability of cement-based grout in a fractured rock mass, and the prediction is hampered by a small number of samples along with multidimensional and nonlinear problems. This study proposes an intelligent predictive model that integrates hybrid grey wolf optimization (HGWO) and a support vector machine (SVM) to predict the groutability. The model was built in three steps: HGWO was embedded in a SVM to search for the best hyperparameters (C, g); crossvalidation and error analysis were introduced into the HGWO-SVM model to ensure the generalization performance and prediction accuracy; and the classification and regression prediction of groutability with cement-based grout in a fractured rock mass were predicted by the established HGWO-SVM intelligent prediction method. Taking a curtain grouting project as a case, the applicability of the method was verified. The performance of the proposed prediction model is improved compared with other methods, and the prediction accuracy meets engineering needs. The results show that this method can accurately and conveniently predict the groutability of cement-based grout in a fractured rock mass and provide practical assistance to field projects.
机译:确定灌浆性是灌浆质量控制中非常重要的任务。关于水泥基灌浆在裂隙岩体中的可灌浆性的研究很少,并且该预测受到少量样本以及多维和非线性问题的阻碍。这项研究提出了一个智能的预测模型,该模型集成了混合灰太狼优化(HGWO)和支持向量机(SVM)来预测可灌浆性。该模型分三步构建:将HGWO嵌入SVM中以搜索最佳超参数(C,g);交叉验证和误差分析被引入到HGWO-SVM模型中,以确保泛化性能和预测准确性。通过建立的HGWO-SVM智能预测方法,对裂隙岩体中水泥基灌浆的灌浆性进行分类和回归预测。以帷幕灌浆工程为例,验证了该方法的适用性。与其他方法相比,所提出的预测模型的性能有所提高,预测精度满足工程需要。结果表明,该方法可以准确,方便地预测裂隙岩体中水泥基灌浆的可灌浆性,为现场工程提供实际的帮助。

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