基于虚拟现实和超知识库系统的地震数据制图解释

W. Santos, Isabela Chambers, E. V. Brazil, M. Moreno
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引用次数: 0

摘要

地震数据是地球物理学家和地质学家用来推断一个地区的岩性和寻找可能的碳氢化合物沉积证据的信息来源。这些数据的解释对于石油和天然气等行业的自然资源勘探至关重要。然而,数据的本质是体积的,即使对熟练的领域专家来说,解释也是具有挑战性和耗时的。在这项工作中,我们提出了一个虚拟现实系统,通过知识库和人工智能服务来探索地震数据。我们专注于可视化和创建3D注释方面,这些注释是突出显示感兴趣区域的人工制品,将表征地震数据的结构。一个支持多模态数据的混合知识库(Hyperknowledge base)将所有这些注解从用户集成到人工智能服务,反之亦然。因此,用户应该在沉浸式环境中使用该系统进行决策,以保留数据的体积视角,以便更好地了解它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Drafting Interpretation of Seismic Data through Virtual Reality with Hyperknowledge Base Systems
Seismic data are sources of information used by geophysics and geologist to infer the lithology of a region and look for evidence of possible hydrocarbon deposits. The interpretation of this data is critical for natural resources exploration in the business of industries like oil&gas. However, the essence of the data is volumetric, and the interpretation is challenging and time-consuming even for skilled domain specialists. In this work, we present a virtual reality system to explore seismic data assisted by a knowledge base and AI services. We focus on the aspect of visualizing and creating 3D annotations that are artifacts that highlight regions of interest that will characterize structures of the seismic data. A hybrid knowledge base (Hyperknowledge base), which support multimodal data, plays the role to integrate all those annotations from user to AI services and vice-versa. Hence, users shall use the system for decision making in immersive environments that preserve the volumetric perspective of the data for a better understanding of them.
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