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    基于CNN-BiLSTM-Attention的水淹层原始地层电阻率反演及应用

    Inversion and application of original formation resistivity in water-flooded layers based on CNN-BiLSTM-Attention

    • 摘要: 水淹层的准确识别与评价是油田中后期提高采收率的重要基础。针对复杂储层中传统反演方法精度不足、抗干扰能力较弱的问题,笔者提出融合卷积神经网络(convolutional neural network,CNN)、双向长短期记忆网络(bidirectional long short-term memory,BiLSTM)和注意力机制Attention(CNN-BiLSTM-Attention)原始地层电阻率反演模型。该模型利用CNN提取测井曲线局部响应特征,利用BiLSTM刻画井深方向的序列依赖关系,通过Attention机制增强有效特征的权重分配,提高了非线性建模能力和反演稳定性。以珠江口盆地X油田为目的区块,结合常规测井曲线开展模型训练,结果表明,CNN-BiLSTM-Attention模型相较传统模型具有更高的反演精度。在此基础上,引入电阻率衰减率(electrical resistivity attenuation rate,M)及综合参数(comprehensive parameters,GPR)构建水淹识别图版,实现了不同水淹等级的精细划分,识别符合率达92.71%,为高含水油田水淹层评价与精细开发提供了技术支撑。

       

      Abstract: Accurate identification and evaluation of water-flooded layers is important for enhancing oil recovery in the middle and later stages of oil field development. To address the limitations of traditional inversion methods in terms of insufficient accuracy and weak anti-interference for complex reservoirs, this paper proposes an original formation resistivity inversion model based on a fusion of convolutional neural network (CNN), bidirectional long short-term memory (BiLSTM), and attention mechanism (CNN-BiLSTM-Attention). This model utilizes CNN to extract local response features from log curves, BiLSTM to characterize sequence dependencies along the depth direction, and an attention mechanism to enhance weight allocation for effective features, thereby improving nonlinear modeling capability and inversion stability. Trained on conventional log curves from the target block, X Oilfield in the Pearl River Mouth Basin, the proposed CNN-BiLSTM-Attention model shows higher inversion accuracy than traditional models. On this basis, the resistivity attenuation rate (M) and comprehensive parameter (GPR) are introduced to construct a water-flooded layer identification chart, achieving fine classification of different water flooding levels with an accuracy of 92.71%. This model provides technical support for the evaluation and precise development of water-flooded layers in oil fields with high water cut.

       

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