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A back propagation artificial neural network application in lithofacies identification

机译:反向传播人工神经网络在岩相识别中的应用

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The traditional lithofacies identification by the geology method usually has the flaw of strong subjectivity, high randomness and high requirement of the geological interpreter. In order to accurately identify the lithofacies in each well and thus provide a better guidance for the plan of further exploration and exploitation, an integrated lithofacies identification method based on ANN (artificial neural network) is presented. Take the YJ Oilfield as an example, on the basis of well log data preprocessing, choose appropriate training samples and identify the lithofacies in single well taking advantage of the generalization and self-learning ability of the ANN algorithm, and compare the result to the lithofacies identification from core data. It shows that this method has relatively high accuracy when applied to lithofacies identification of clastic reservoirs which normally have complicated lithological sequences. Compared to the traditional identification method, the ANN method avoid the subjectivity in the well log interpretation and don't have to set up interpretation models for the district which usually calls for abundant experience; what's more, the interpreter could make a balance between accuracy and efficiency by shifting the neuron number of the hidden layer. In general, this method is of high practical value.
机译:传统的通过地质方法识别岩相通常具有主观性强,随机性高,对地质解释人员要求高的缺点。为了准确识别每口井中的岩相,从而为进一步的勘探和开发计划提供更好的指导,提出了一种基于人工神经网络的综合岩相识别方法。以YJ油田为例,在对测井数据进行预处理的基础上,选择合适的训练样本,利用ANN算法的泛化和自学习能力,在单井中识别岩相,并将结果与​​岩相进行比较。从核心数据中识别。结果表明,该方法应用于通常具有复杂岩性层序的碎屑岩储层岩相识别中,具有较高的精度。与传统的识别方法相比,人工神经网络方法避免了测井解释的主观性,无需为通常需要丰富经验的地区建立解释模型。而且,解释器可以通过移动隐藏层的神经元数量来在准确性和效率之间取得平衡。通常,该方法具有较高的实用价值。

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