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Unsupervised domain adaptation using maximum mean discrepancy optimization for lithology identification

机译:使用最大平均差异优化对岩性识别的最大平均差异优化无监督

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摘要

Lithology identification plays an essential role in geologic exploration and reservoir evaluation. In recent years, machine-learning-based logging lithology identification has received considerable attention due to its ability to fit complex models. Exist- ing work develops machine-learning models under the assumption that the data gathered from different wells are from the same probability distribution, so that the model trained on data from old wells can be directly applied to predict the lithologies of a new well without losing accuracy. In fact, due to variations in sedimentary environment and well-logging technique, the data from different wells may not have the same probability distribution. Therefore, such a direct application is unreliable. To prevent the accuracy from being reduced by the distribution difference, we integrate the unsupervised domain adaptation method into lithol-ogy identification, under the assumption that no lithology labels are available on a new well. Specifically, we have developed a two-flow multilayer neural network. We train our network with a maximum mean discrepancy optimization, and the training process is interrupted by an early stopping criterion. These methods ensure that the feature representations learned by our network are domain invariant and discriminative. Our method is evaluated from multiple perspectives on a total of 21 wells located in the Jiyang depression, Bohai Bay Basin. The experimental results demonstrate that our method effectively mitigates the performance degradation caused by data distribution differences and outperforms the baselines by approximately 10%.
机译:岩性识别在地质勘探和水库评估中起着重要作用。近年来,由于其符合复杂模型的能力,基于机器学习的测井岩性识别已经得到了相当大的关注。存在的工作在假设中,从不同井收集的数据来自相同的概率分布,因此可以直接应用从旧井的数据培训的模型来预测新井的岩性而不会失去准确性。事实上,由于沉积环境和测井技术的变化,来自不同井的数据可能没有相同的概率分布。因此,这种直接应用是不可靠的。为了防止分布差异减少了准确性,我们将无监督的域适应方法集成到Lithol-ogy识别中,假设没有岩性标签在一个新井上。具体而言,我们开发了一个双流量多层神经网络。我们用最大的平均差异优化培训我们的网络,并且通过早期停止标准中断培训过程。这些方法确保我们网络学到的特征表示是域不变和歧视。我们的方法是在渤海湾盆地济阳坳陷的21个井中的多个观点评估。实验结果表明,我们的方法有效地减轻了数据分布差异引起的性能下降,并优于基线大约10%。

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  • 来源
    《Oceanographic Literature Review》 |2021年第6期|1398-1399|共2页
  • 作者

    J. Chang; J. Li; Y. Kang;

  • 作者单位

    University of Science and Technology of China Institute of Advanced Technology Hefei 230027 China;

    University of Science and Technology of China Institute of Advanced Technology Hefei 230027 China;

    University of Science and Technology of China Institute of Advanced Technology Hefei 230027 China;

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  • 正文语种 eng
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