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Justification of Artificial Neural Network Structure and Parameters for Predicting Concentration of Methane in Coal Face

机译:人工神经网络结构的理由和预测煤面甲烷浓度的参数

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A problem of continuous forecasting a concentration of methane in a working face of a coal mine in order to increase a safety of operations in a longwall face and increase a volume of produced coal by reducing the downtime of the longwall face on a gas factor is considered. It is proposed to solve this problem using neural networks. To justify the rational structure of a neural network that provides the maximum prediction accuracy, four types of neural networks were selected: NARX network; Elman network; Feed-Forward Network and neural network with time delay. It is shown that in order to predict the level of methane concentration in the face, it is necessary to measure the methane concentration at least at three points of the exhaust air and the parameters of the operation mode of the combine and its location in the longwall face. The result of forecasting the level of methane concentration for a neural network of the type NARX as the best in terms of the minimum value of the mean square error is presented. Analysis of the obtained graphs indicates the acceptability of the result, the forecasting accuracy is 93%. The introduction of the proposed technology to predict the level of the methane concentration in the longwall face will increase the safety of operations in the longwall face of the coal mine, as well as increase the volume of the produced coal by reducing a longwall face downtime due by the gas factor.
机译:在煤矿的工作面上连续预测甲烷浓度的问题,以提高长壁面中的操作安全性,并考虑通过减少气体因子上的长壁面的停机时间来增加生产的煤量的体积。建议使用神经网络解决这个问题。为了证明提供最大预测准确性的神经网络的合理结构,选择了四种类型的神经网络:NARX网络;埃尔曼网络;馈通网络和神经网络随时间延迟。结果表明,为了预测面部的甲烷浓度的水平,必须至少在排气空气的三个点和合并的操作模式的参数中测量甲烷浓度及其在长壁中的位置脸。提出了呈均线误差最小值的NARX型神经网络的甲烷浓度水平的结果。所获得的图表的分析表明了结果的可接受性,预测精度为93%。提出了所提出的技术来预测长墙面中的甲烷浓度水平将增加煤矿的长壁面中的操作的安全性,以及通过减少长墙面停机时间来增加所生产的煤的体积通过气体因子。

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