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神经网络系统预测采面来压研究
引用本文:李小永,刘立明. 神经网络系统预测采面来压研究[J]. 河北化工, 2014, 0(8): 37-40
作者姓名:李小永  刘立明
作者单位:冀中能源邢台矿业集团公司山西古县金谷煤业有限公司;
摘    要:通过人工神经网络方法,将影响工作面来压的主要因素作为输入层,构建BP神经网络模型,应用黄金分割算法确定最优隐含层节点数,得到最优模型,并对工作面支架平均来压阻力、平均非来压阻力、平均来压步距进行预测,分析可知预测误差在±10%,且符合正态分布,可通过多种方法提高预测精度,控制在±5%,取得了较好的预测结果精度,对于指导工作面的安全生产具有重要意义。

关 键 词:BP网络  来压影响因素  来压预测  误差分析

Study on Working Face Pressure Prediction Based on Artificial Neural Network
LI Xiao-yong;LIU Li-ming. Study on Working Face Pressure Prediction Based on Artificial Neural Network[J]. Hebei Chemical Engineering and Industry, 2014, 0(8): 37-40
Authors:LI Xiao-yong  LIU Li-ming
Affiliation:LI Xiao-yong;LIU Li-ming;Jingu Mining Corporation Ltd.,Xingtai Mining Industry Group, Jizhong Energy;
Abstract:Based on the amficial neural network, the factors affecting the face pressure was set as input layers, and the BP neural network was set up, through gold segmentation algorithm defined the proper nodes, got the optimal model , and predicted the resistance pressure strength, the resistance of un-pressure strength and pressure step, analysis showed that the error controlled in the range of -10%--10%, and the error were normally distributed, through many ways to improve the prediction accuracy, the average can control the prediction accuracy in the range of -5% --5%, which can obtain a better predict accuracy, and possessed great significance to the safety production of the working face.
Keywords:BP network  factors affecting the pressure  pressure prediction  error analysis
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