基于探地雷达与PSO−BP神经网络的煤岩界面预测研究

Research on coal-rock interface prediction based on ground-penetrating radar and PSO-BP neural network

  • 摘要: 针对探地雷达在煤岩界面预测应用中精度不足的问题,利用粒子群优化(PSO)算法对BP神经网络进行优化,构建了基于探地雷达与PSO−BP神经网络的煤岩界面预测模型。采用探地雷达单侧反射法探测煤岩界面,总结不同情况下的雷达图像响应特征,从而确定煤岩界面特征参数:煤占比、响应位置振幅、煤响应位置振幅平均值、振幅衰减值、反射波所用双程走时、电磁波波速和煤介电常数;根据选择的特征参数开展介电常数测试和模拟煤岩界面识别实验,获取实测样本数据;采用PSO算法对BP神经网络权值与阈值进行优化,得到最优模型;将煤岩界面特征参数输入PSO−BP神经网络模型,实现煤岩界面预测。实验结果表明:与GA−BP和BP神经网络模型相比,PSO−BP模型的均方误差(MSE)分别下降了22.14%和45.54%,平均绝对百分比误差(MAPE)分别下降了22.22%和46.15%,平均绝对误差(MAE)分别下降了31.58%和55.68%,PSO−BP在预测精度、误差控制能力和数据拟合效果上均具有显著优势,预测煤岩界面位置更贴近实际位置,稳定性更好。

     

    Abstract: To address the problem of insufficient accuracy in the application of ground-penetrating radar for coal-rock interface prediction, the Particle Swarm Optimization (PSO) algorithm was used to optimize the BP neural network, and a coal-rock interface prediction model based on ground-penetrating radar and PSO-BP neural network was established. The single-sided reflection method of ground-penetrating radar was employed to detect the coal-rock interface, and the radar image response characteristics under different conditions were summarized to determine the coal-rock interface characteristic parameters, including coal proportion, amplitude at the response position, average amplitude at coal response position, amplitude attenuation value, two-way travel time of reflection wave, electromagnetic wave velocity, and coal dielectric constant. Based on the selected characteristic parameters, dielectric constant tests and simulated coal-rock interface recognition experiments were carried out to obtain measured sample data. The PSO algorithm was used to optimize the weights and thresholds of the BP neural network to obtain the optimal model. The coal-rock interface characteristic parameters were then input into the PSO-BP neural network model to predict the coal-rock interface. The experimental results showed that, compared with GA-BP and BP neural network models, the MSE of the PSO-BP model decreased by 22.14% and 45.54%, the MAPE decreased by 22.22% and 46.15%, and the MAE decreased by 31.58% and 55.68%, respectively. The PSO-BP model has significant advantages in prediction accuracy, error control ability, and data fitting performance, predicting coal-rock interface positions closer to the actual locations with better stability.

     

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