首页> 外文会议>Innovation Management, 2009. ICIM '09 >Application of Grey Neural Network in Analyzing Disaster Prevention and Control in Coal Mine Based on CC and RBF-DDA Algorithms
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Application of Grey Neural Network in Analyzing Disaster Prevention and Control in Coal Mine Based on CC and RBF-DDA Algorithms

机译:灰色神经网络在基于CC和RBF-DDA算法的煤矿灾害防治分析中的应用

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Prevention and control of the disastrous accident is the top priority of coal mine production safety. RBF and the combined grey neural network (CGNN) model are established. Combined with cascade-correlation (CC) and RBF-DDA algorithms, gas explosion impacting on coal mine production safety largely is analyzed. The analysis results show that gas explosion accident is caused by many reasons. The relationship between coal mine production and safety needs to be effectively coordinated. It is concluded that, at the beginning, CC and RBF-DDA algorithms are used to structure the initial hidden nodes to zero. Through the training process, the hidden units are added in the light of adaptive algorithm constantly. These units are of a higher classification accuracy and robustness, which, in the future, provides the basis for the deep application and study in coal mine safety and production.
机译:预防和控制灾难性事故是煤矿安全生产的重中之重。建立了RBF和组合灰色神经网络(CGNN)模型。结合级联(CC)和RBF-DDA算法,分析了瓦斯爆炸对煤矿安全生产的影响。分析结果表明,瓦斯爆炸事故是由多种原因引起的。煤矿生产与安全之间的关系需要有效协调。结论是,一开始,使用CC和RBF-DDA算法将初始隐藏节点的结构构造为零。通过训练过程,根据自适应算法不断增加隐藏单元。这些单元具有更高的分类精度和鲁棒性,将来为深入应用和研究煤矿安全和生产提供基础。

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