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Research and application of improved gas concentration prediction model based on grey theory and BP neural network in digital mine

机译:基于灰色理论和BP神经网络在数字矿井中改进气浓缩模型的研究与应用

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Gas disaster is one of the most serious disasters in coal mine safety production. Therefore, it is of great significance to strengthen the coal mine gas disasters forecasting warning technology research for improving the ability of prevention and control gas disaster in coal mine and promoting the development of digital mine in our country. The biggest characteristics of using grey prediction model GM (1,1) is that the algorithm is quite simple, and also, when building the model, less data can be used. It is convenient for modelling and operation, but the effect of forecast of the grey prediction model for systems with volatility is not very ideal, and the prediction accuracy will reduce gradually along with the extrapolation of time. BP neural network has a good performance for prediction of nonlinear system, but when the network was trained, it often requires large amounts of data. This paper is based on the grey prediction model, using advantages of grey prediction that the model algorithm is simple and the procedure of model building needs less data, and the BP neural network that the performance of grey forecast model for nonlinear system prediction is good. We revise the grey prediction model through BP neural network and finally we build an improved gas concentration prediction model based on grey theory and BP neural network, and carry out a specific computer simulation. Results show that the model effectively improved the precision of gas prediction.
机译:煤气灾害是煤矿安全生产最严重的灾难之一。因此,加强煤矿煤气灾害预测警告技术研究具有重要意义,以提高煤矿预防和控制煤气灾害的能力,促进我国数字矿山的发展。使用灰色预测模型GM(1,1)的最大特征是该算法非常简单,而且在构建模型时,可以使用更少的数据。它方便的建模和操作,但是对具有波动性的系统的灰色预测模型预测的效果不是非常理想,并且预测精度将随着时间的推断而逐渐减少。 BP神经网络具有良好的性能,可预测非线性系统,但是当网络训练时,它通常需要大量数据。本文基于灰色预测模型,利用灰色预测的优点,模型算法简单,模型建筑的程序需要更少的数据,以及BP神经网络,即非线性系统预测的灰色预测模型的性能良好。我们通过BP神经网络修改灰色预测模型,最后我们构建基于灰色理论和BP神经网络的改进的气体浓度预测模型,并进行特定的计算机模拟。结果表明,该模型有效提高了气体预测的精度。

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