基于GA-LSSVR的露天矿边坡稳定性预测

    Prediction of Slope Stability in Open-pit Mine Based on GA-LSSVR

    • 摘要: 针对露天矿边坡稳定性问题的小样本、非线性等特点,利用遗传算法的全局搜索能力优势,提出了基于遗传算法的最小二乘支持向量回归参数寻优方法,并建立基于遗传最小二乘支持向量回归(GA-LSSVR)的露天矿边坡稳定性预测模型。通过遗传算法对LSSVR进行优化,提高了预测精度和速度。实验结果表明,与BP神经网络、LSSVR模型相比,GA-LSSVR的精度更高,基于GA-LSSVR的露天矿边坡稳定性预测模型更有效。

       

      Abstract: Aiming at the small samples, nonlinear characteristics of slope stability problems in open-pit. Taking advantages of global search ability of genetic algorithm, a method of least squares support vector regression parameters optimized based on genetic algorithm is proposed, and a prediction model of slope stability in open-pit mine base on genetic least squares support vector regression (GA - LSSVR) is established. Genetic algorithm is applied to optimize the LSSVR,which can improve the accuracy and speed of the prediction. Experimental results demonstrate that the accuracy of GA-LSSVR is higher compared to the BP neural network and LSSVR model. The prediction method of slope stability in open-pit mine based on GA-LSSVR is more effective.

       

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