An Yu, Guo Jiulin, Ye Qing, Childs Conrad, Walsh John, Dong Ruihai
The Insight Centre for Data Analytics, School of Computer Science, University College Dublin, Dublin, Ireland.
C&C Reservoirs, Brunel House, Reading, United Kingdom.
Data Brief. 2021 Jun 12;37:107219. doi: 10.1016/j.dib.2021.107219. eCollection 2021 Aug.
The lack of large-scale open-source expert-labelled seismic datasets is one of the barriers to applying today's AI techniques to automatic fault recognition tasks. The dataset present in this article consists of a large number of processed seismic images and their corresponding fault annotations. The processed seismic images, which are originally from a seismic survey called Thebe Gas Field in the Exmouth Plateau of the Carnarvan Basin on the NW shelf of Australia, are represented in Python Numpy format, which can be easily adopted by various AI models and will facilitate cooperation with researchers in the field of computer science. The corresponding fault annotations were firstly manually labelled by expert interpreters of faults from seismic data in order to investigate the structural style and associated evolution of the basin. Then the fault interpretation and seismic survey are processed and collected using Petrel software and Python programs separately. This dataset can help to train, validate, and evaluate the performance of different automatic fault recognition workflow.
缺乏大规模开源的专家标注地震数据集是将当今人工智能技术应用于自动断层识别任务的障碍之一。本文中的数据集由大量处理后的地震图像及其相应的断层标注组成。处理后的地震图像最初来自澳大利亚西北大陆架卡那封盆地埃克斯茅斯高原的一个名为西贝气田的地震勘探,以Python Numpy格式表示,各种人工智能模型都可以轻松采用,这将便于与计算机科学领域的研究人员合作。相应的断层标注首先由地震数据的断层专家解释人员手动标注,以研究盆地的构造样式和相关演化。然后分别使用Petrel软件和Python程序对断层解释和地震勘探进行处理和收集。该数据集有助于训练、验证和评估不同自动断层识别工作流程的性能。