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Selection of Affecting Factors of Coal and Gas Outburst on Genetic Algorithm

机译:基于遗传算法的煤与瓦斯突出影响因素选择

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Genetic algorithm (GA) is applied to select main affecting factors of coal and gas outburst to solve the over-fitting problem of BP neural network (NN) in predicting coal and gas outburst, and a modified BP NN predictor is established, which input variables are the factors selected. In our GA, chromosome is a binary encoding which each gene corresponds to a variable, penalty function is introduced into fitness function. Finally, the method is studied using real samples of PingMei 8th mine in MATLAB2009b environment. The results demonstrate that fitting effect and prediction accuracy of the modified BP NN predictor is improved significantly and simulation time is shorter after predictor's input valuables are optimized on GA.
机译:应用遗传算法(GA)选择煤与瓦斯突出的主要影响因素,解决了BP神经网络(NN)在煤与瓦斯突出预测中的过拟合问题,建立了改进的BP神经网络预测器,输入变量是选择的因素。在我们的遗传算法中,染色体是一种二进制编码,每个基因对应一个变量,惩罚函数被引入适应度函数。最后,在MATLAB2009b环境下,以平梅八矿的真实样品为研究对象。结果表明,在遗传算法上优化BP神经网络预测器的输入价值后,改进后的BP神经网络预测器的拟合效果和预测精度大大提高,仿真时间缩短。

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