针对瓦斯煤尘爆炸和煤与瓦斯突出给煤炭矿山企业带来的危害极大的问题,将蚁群优化算法和BP神经网络技术结合应用到瓦斯涌出量预测,建立比较准确的预测模型。重点研究了BP网络模型的选择与优化训练,通过蚁群算法优化解决了BP神经网络易陷入局部收敛的问题。仿真与实际数据验证表明:改进的神经网络算法对瓦斯涌出量预测能达到良好的效果。
In view of the harmful effects of gas and coal dust explosion and gas outburst in coat mine,the ant colony optimization algorithm and BP neural network technology are applied to the prediction of gas emission to establish more accurate prediction models. Focus on the BP network model selection and optimization of training, the ant colony optimization algorithm is used to solve the problem that the BP neural networks is easy to fall into local convergence. Simulation and actual data show that the improved neural network algorithm for the prediction of gas emission can achieve good results.