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首页> 外文期刊>Acta Geophysica >Application of Multiboost-KELM algorithm to alleviate the collinearity of log curves for evaluating the abundance of organic matter in marine mud shale reservoirs: a case study in Sichuan Basin, China
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Application of Multiboost-KELM algorithm to alleviate the collinearity of log curves for evaluating the abundance of organic matter in marine mud shale reservoirs: a case study in Sichuan Basin, China

机译:应用Multiboost-KELM算法减轻测井曲线的共线性,以评价海洋泥页岩储层有机质的含量:以中国四川盆地为例

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The total organic carbon (TOC) content reflects the abundance of organic matter in marine mud shale reservoirs and reveals the hydrocarbon potential of the reservoir. Traditional TOC calculation methods based on statistical and machine learning have limited effect in improving the computational accuracy of marine mud shale reservoirs. In this study, the collinearity between log curves of marine mud shale reservoirs was revealed for the first time, which was found to be adverse to the improvement of TOC calculation accuracy. To this end, a new TOC prediction method was proposed based on Multiboost-Kernel extreme learning machine (Multiboost-KELM) bridging geostatistics and machine learning technique. The proposed method not only has good data mining ability, generalization ability and sound adaptivity to small samples, but also has the ability to improve the computational accuracy by reducing the effect of collinearity between logging curves. In prediction of two mud shale reservoirs of Sichuan basin with proposed model, the results showed that the predicted value of TOC was in good consistence with the measured value. The root-mean-square error of TOC predicting results was reduced from 0.415 (back-propagation neural networks) to 0.203 and 1.117 (back-propagation neural networks) to 0.357, respectively; the relative error value decreased by up to 8.9%. The Multiboost-KELM algorithm proposed in this paper can effectively improve the prediction accuracy of TOC in marine mud shale reservoir.
机译:总有机碳(TOC)含量反映了海洋泥页岩储层中有机质的丰富程度,并揭示了该储层的碳氢化合物潜力。传统的基于统计和机器学习的TOC计算方法在提高海相泥页岩储层计算精度方面效果有限。本研究首次揭示了海相泥页岩储层测井曲线之间的共线性,这不利于TOC计算精度的提高。为此,提出了一种基于Multiboost-Kernel极限学习机(Multiboost-KELM)桥接地统计学和机器学习技术的TOC预测新方法。所提出的方法不仅具有良好的数据挖掘能力,泛化能力和对小样本的声音适应性,而且还具有通过减少测井曲线之间共线性的影响来提高计算精度的能力。利用该模型对四川盆地的两个泥页岩储层进行了预测,结果表明,TOC的预测值与实测值吻合较好。 TOC预测结果的均方根误差分别从0.415(反向传播神经网络)减少到0.203和1.117(反向传播神经网络)减少到0.357;相对误差值降低了8.9%。本文提出的Multiboost-KELM算法可以有效提高海相泥页岩油藏TOC的预测精度。

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