Cross-block oil-water layer(OWL) identification is essential for petroleum development. Traditional methods are greatly affected by subjective factors due to depending mainly on the human experience. AI-based methods have promoted the development of OWL identification. However, because of the significant geological differences across blocks and the severe long-tailed distribution(class imbalanced), the identification effects of existing artificial intelligence(AI) models are limited. In this paper, we address this limitation by proposing a dynamic fusion-based federated learning(FL) for OWL identification. To overcome geological differences, we propose a dynamic weighted strategy to fuse models and train a general OWL identification model. In addition, an F1 score-based re-weighting scheme is designed and a novel loss function is derived theoretically to solve the data long-tailed problem. Further, a geological knowledge-based mask-attention mechanism is proposed to enhance model feature extraction. To our best knowledge, this is the first work to identify OWL using FL. We evaluate the proposed approach with an actual well logging dataset from the oil field and a public 3W dataset. Experimental results demonstrate that our approach significantly out-performs other AI methods.
翻译:传统方法主要取决于人类经验,因此受到主观因素的极大影响。基于AI的方法促进了OWL识别的发展。然而,由于各区之间的地质差异很大,而且长期分布严重(分类不平衡),现有人工智能(AI)模型的识别效果有限。在本文件中,我们通过提出一种动态的聚变联合学习(FL)来应对这一局限性。为了克服地质差异,我们提出了一种动态加权战略来整合模型,并培训了一般OWL识别模型。此外,还设计了一个基于F1分的重新加权计划,从理论上产生了一种新的损失功能,以解决长期形成的数据问题。此外,还提议了一个基于地质知识的遮罩注意机制,以加强模型特征提取。据我们所知,这是用FL来识别OWL的首项工作。我们用实际的精密采采样数据集和公开的3W数据集来评估拟议的方法。实验结果表明,我们的方法大大超越了AI的其他方法。