康正明,秦浩杰,张意,等. 基于LSTM神经网络的随钻方位电磁波测井数据反演[J]. 石油钻探技术,2023, 51(2):116-124. DOI: 10.11911/syztjs.2023047
引用本文: 康正明,秦浩杰,张意,等. 基于LSTM神经网络的随钻方位电磁波测井数据反演[J]. 石油钻探技术,2023, 51(2):116-124. DOI: 10.11911/syztjs.2023047
KANG Zhengming, QIN Haojie, ZHANG Yi, et al. Data inversion of azimuthal electromagnetic wave logging while drilling based on LSTM neural network [J]. Petroleum Drilling Techniques,2023, 51(2):116-124. DOI: 10.11911/syztjs.2023047
Citation: KANG Zhengming, QIN Haojie, ZHANG Yi, et al. Data inversion of azimuthal electromagnetic wave logging while drilling based on LSTM neural network [J]. Petroleum Drilling Techniques,2023, 51(2):116-124. DOI: 10.11911/syztjs.2023047

基于LSTM神经网络的随钻方位电磁波测井数据反演

Data Inversion of Azimuthal Electromagnetic Wave Logging While Drilling Based on LSTM Neural Network

  • 摘要: 随钻方位电磁波测井仪器在地质导向和储层评价等方面具有重要作用,但其测量响应不具有直观性,需要用反演方法获得地层信息,高斯–牛顿法、随机反演算法等传统反演方法计算速度较慢,难以满足实时反演的要求。为此,提出了一种基于长短期记忆人工神经网络(LSTM)的新反演方法,用于求取地层电阻率。首先,基于广义反射系数法建立正演算法,完成样本集的制作;然后,搭建LSTM神经网络模型,基于样本集进行训练和测试,通过遍历的方法优选出合适的网络参数;最后,在测试集上完成电阻率的反演,将反演电阻率与正演电阻率进行对比,对比反演所需时间和相对误差,并在测试集中加入白噪声验证了模型的抗噪能力。研究结果表明,模型能够准确快速地反演地层电阻率信息,能够满足对含有噪声数据的反演需要,具有较好的鲁棒性。此反演方法为测井资料处理提供了新的思路和方向。

     

    Abstract: Azimuthal electromagnetic wave logging while drilling (LWD) tool plays an important role in geosteering and reservoir evaluation, but its measurement response is not intuitive. So inversion method is needed to obtain formation information. Traditional inversion methods (i.e., Gauss-Newton method, random inversion method, etc.) are difficult to meet the requirements of real-time inversion due to the slow calculation speed. In this paper, a new inversion method based on a long and short-term memory (LSTM) artificial neural network was proposed to obtain formation resistivity. Firstly, the forward algorithm was established based on the method of generalized reflection coefficient to produce the sample set. Then, the LSTM neural network model was built, and it was trained and tested on the sample set. The appropriate network parameters were optimized by the traversal method. Finally, the resistivity inversion was completed on the test set. The inverted resistivity was compared with the forward resistivity, and the inversion time and relative error were compared as well. Meanwhile, the anti-noise property of the model is verified by adding white noise to the test set. The results show that the model can accurately and rapidly invert formation resistivity and can invert data containing noise, indicating that the model has good robustness. This inversion method can provide a new idea and direction for logging data processing.

     

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