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Application of dynamic fuzzy neural networks based on EBF to multifactorial flooding index prediction

机译:基于EBF的动态模糊神经网络在多因素洪水指数预测中的应用。

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Multifactorial flooding index is an important parameter to flooding reservoir analysis. It is very necessary to consider the weight of each flooding strength indicator in calculation of multifactorial flooding index by using of logging data. Therefore, a fuzzy neural network prediction system of multifactorial flooding index based on Ellipse Basis Function was established on the basis of the analysis of a variety of static and dynamic data of Gasikule oil field N1-N21 reservior. This prediction system can create or delete fuzzy rules by analyzing samples and take the dynamic weight values of the input variables into consideration. The information contained in the log data is enormous. By using this prediction system with self-learning mechanism, the extraction and utilization of information is more effective. Practical application shows that the accuracy of identification is high. Especially for complex reservoirs, the application of this Fuzzy Neural Networks to reservoir characteristic parameters prediction improves the precision of prediction results and reduces the dependency on prior informations.
机译:多因素驱油指数是驱油油藏分析的重要参数。在利用测井数据计算多元洪水指数时,非常有必要考虑每个洪水强度指标的权重。因此,在对加斯库勒油田N1-N2 1 储层静态和动态数据进行分析的基础上,建立了基于椭圆基函数的多因素洪水指数模糊神经网络预测系统。该预测系统可以通过分析样本来创建或删除模糊规则,并考虑输入变量的动态权重值。日志数据中包含的信息是巨大的。通过使用具有自学习机制的预测系统,信息的提取和利用将更加有效。实际应用表明,该方法具有较高的识别率。特别是对于复杂的油藏,该模糊神经网络在油藏特征参数预测中的应用提高了预测结果的精度,减少了对先验信息的依赖。

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