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Research on Prediction Model of Gas Emission Based on Lasso Penalty Regression Algorithm

机译:基于套索惩罚回归算法的气体排放预测模型研究

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Researches show that the amount of mine gas emission is influenced by many factors, including the buried depth of coal seams, coal thickness, gas content, CH_4 concentration, daily output, coal seam distance, permeability, volatile yield, air volume, etc. Its high-dimensional characteristics could easily lead to dimension disaster. In order to eliminate the collinearity of attributes and avoid the over-fitting of functions, Lasso algorithm is used to reduce the dimension of variables. After low-redundancy feature subset is obtained, the best performance model is selected by 10-fold cross-validation method. Finally, the gas emission is predicted and analyzed based on public data from coal mine. The results show that the prediction model based on Lasso has higher accuracy and better generalization performance than principal component analysis prediction model,and the accurate prediction of gas emission can be realized more effectively.
机译:研究表明,矿井气体排放量受到许多因素的影响,包括煤层的埋藏深度,煤厚度,煤气含量,CH_4浓度,日输出,煤层距离,渗透率,挥发性产量,空气量等高维特征很容易导致维度灾难。为了消除属性的共同性并避免功能的过度拟合,套索算法用于减少变量的尺寸。在获得低冗余功能子集之后,最佳性能模型由10倍交叉验证方法选择。最后,基于来自煤矿的公共数据来预测和分析气体排放。结果表明,基于套索的预测模型具有比主要成分分析预测模型更高的准确度和更好的泛化性能,并且可以更有效地实现气体排放的精确预测。

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