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首页> 外文期刊>Geophysics: Journal of the Society of Exploration Geophysicists >A dynamic adaptive radial basis function approach for total organic carbon content prediction in organic shale
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A dynamic adaptive radial basis function approach for total organic carbon content prediction in organic shale

机译:一种动态自适应径向基函数预测有机页岩总有机碳含量的方法

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摘要

Total organic carbon (TOC) is an important parameter for characterizing shale gas and oil reservoirs. Estimation of TOC from well logs has previously been achieved by an empirical model. The radial basis function (RBF) neural network is a new quantitative method that can generate a smooth and continuous function of several input variables to approximate the unknown forward model. We investigated the basic principles of the RBF including network structure, basis function, network training method, and its application in the TOC prediction. The nearest neighbor algorithm was selected for the network training. Then, the Gaussian width was investigated to improve the TOC prediction accuracy through leave-one-out cross-validation. Finally, field cases of organic shale were studied for the TOC prediction, and the prediction results using the RBF method were compared with those of the Δlog R method. Furthermore, according to sensitive attribute ranking, the impacts of different input logs on the predicted results were also investigated through various experiments, and the best network model was finally chosen. The error analysis between the prediction results and lab-measured TOC in some examples indicated that the new approach is more accurate than a single empirical regression method and more flexible than the Δlog R method.
机译:总有机碳(TOC)是表征页岩气和油藏的重要参数。以前已经通过经验模型实现了对测井中TOC的估算。径向基函数(RBF)神经网络是一种新的定量方法,可以生成多个输入变量的平滑连续函数来近似未知的正向模型。我们研究了RBF的基本原理,包括网络结构,基本功能,网络训练方法及其在TOC预测中的应用。选择了最近邻居算法进行网络训练。然后,研究了高斯宽度以通过留一法交叉验证来提高TOC预测精度。最后,对有机页岩的田间案例进行了TOC预测研究,并将使用RBF方法的预测结果与使用ΔlogR方法的预测结果进行了比较。此外,根据敏感属性的排名,还通过各种实验研究了不同输入日志对预测结果的影响,最终选择了最佳的网络模型。在一些示例中,预测结果与实验室测量的TOC之间的误差分析表明,新方法比单个经验回归方法更准确,并且比ΔlogR方法更灵活。

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