基于改进卷积神经网络的矿井巷道场强预测

Mine roadway field strength prediction based on improved convolutional neural network

  • 摘要: 针对现有场强预测模型建模过程复杂、计算复杂度高、预测精度低等问题,提出了一种基于改进卷积神经网络(CNN)的矿井巷道场强预测模型。通过分析矿井大尺度衰落信道电磁波传输影响因素,以天线工作频率、巷道截面尺寸、巷道壁粗糙度、巷道壁倾斜度、巷道壁相对介电常数、收发端距离等作为模型输入,将电磁波传播路径损耗作为模型输出,从而预测巷道场强变化;改进CNN在每个卷积层后加入批量归一化层来代替原有的池化层,以避免池化层下采样导致的数据特征丢失,让每一层卷积输出保持相似分布,提高网络泛化能力,加快网络收敛。仿真结果表明,与基于CNN、BP神经网络、支持向量机的场强预测模型相比,该模型预测值与实际值吻合度较高,具有较强的鲁棒性,有效提高了矿井巷道场强预测精度。

     

    Abstract: In order to solve the problems of the complex modeling process, high computational complexity, and low prediction accuracy of the existing field strength prediction models, a mine roadway field strength prediction model based on improved convolutional neural network(CNN) is proposed. By analyzing the influence factors of electromagnetic wave transmission in large-scale fading channels in mines, using antenna operating frequency, roadway cross-sectional dimensions, roadway wall roughness, roadway wall inclination, roadway wall relative permittivity and transceiver distance as model inputs, using the electromagnetic wave propagation path loss as model outputs, the model is able to predict the changes of the roadway field strength. The improved CNN adds batch normalization layer after each convolutional layer to replace the original pooling layer so as to avoid the loss of data characteristics due to down-sampling of the pooling layer, to keep the output of each convolutional layer similarly distributed, to improve the network generalization capacity and to speed up the network convergence. The simulation results show that compared with the field strength prediction models based on CNN, BP neural network and support vector machine, the model has high consistency between the predicted value and the actual value, has stronger robustness, and improves the accuracy of mine roadway field strength prediction effectively.

     

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