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Application of ant colony clustering algorithm in coal mine gas accident analysis under the background of big data research

机译:蚁群聚类算法在大数据研究背景下的煤矿煤气事故分析中的应用

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摘要

In order to better solve the problem of gas outburst prediction, based on the in-depth study of ant colony algorithm, the ant colony clustering algorithm is improved, and the population classification and ant sensory perception characteristics are applied to make the ant colony the most likely to find. The optimal solution effectively avoids the possibility of local optimization, improves the global optimization performance and convergence speed of the algorithm, and reduces the influence of human subjective factors. Based on the prominent basic speech and actual working conditions, the paper selects five indexes of gas velocity, initial gas velocity, gas content, gas pressure and coal firmness coefficient as clustering attributes, and uses ant colony clustering algorithm to judge outstanding the state of occurrence. The paper uses MATLAB programming language to write a coal and gas outburst prediction program based on improved ant colony clustering algorithm, and predicts a coal mine. The final result is the same as the actual observation.
机译:为了更好地解决气体突出预测的问题,基于蚁群算法的深入研究,提高了蚁群聚类算法,施用人口分类和蚂蚁感知特征是使蚁群最多可能会发现。最佳解决方案有效地避免了局部优化的可能性,提高了算法的全局优化性能和收敛速度,并降低了人类主观因素的影响。基于突出的基本语音和实际工作条件,本文选择了五个气体速度,初始气体速度,煤气含量,气体压力和煤炭固体系数作为聚类属性,并使用蚁群聚类算法来判断出现的出现状态。本文采用MATLAB编程语言基于改进的蚁群聚类算法来编写煤和燃气突出预测程序,并预测煤矿。最终结果与实际观察相同。

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