灰色关联聚类和CGNN在煤矿深部巷道围岩稳定性控制分析中的应用

Wanbin Yang, Zhiming Qu
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引用次数: 0

摘要

将灰色神经网络(CGNN)与灰色关联聚类相结合,构建模型,用于解决煤矿深部巷道围岩稳定性控制参数的预测与比较问题。结果表明,灰色关联聚类是一种有效的聚类方法,具有较好的短期预测研究能力。组合灰色神经网络与时变序列预测相结合,具有趋势性和波动性的特点。结果表明,该方法在稳定控制深部巷道围岩方面,与任何趋势预测方法和简单因子组合灰色神经网络方法相比,有较大的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of grey relational clustering and CGNN in analyzing stability control of surrounding rocks in deep entry of coal mine
With combination of grey neural network (CGNN) and grey relational clustering, the models are constructed, which are used to solve the prediction and comparison of surrounding rocks stability controlling parameters in deep entry of coal mine. The results show that grey relational clustering is an effective way and CGNN has perfect ability to be studied in a short-term prediction. Combined grey neural network has the features of trend and fluctuation while combining with the time-dependent sequence prediction. It is concluded that great improvements compared with any methods of trend prediction and simple factor in combined grey neural network is stated and described in stably controlling the surrounding rocks in deep entry.
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