用于生产目的的自动化全孔岩心描述应用程序。从一个想法到it产品

E. E. Baraboshkin, A. Demidov, E. A. Panchenko, N. Gatina, A. Hahina, D.A. Mamaev, V. Alekseev, R. R. Nyazhemetdinov, A. Tkachev, D. Orlov, D. Koroteev
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引用次数: 0

摘要

自动化是现代地质各领域的发展趋势。本文提出了一种基于卷积神经网络(CNN)的核心自动描述系统。该系统已成功应用于生产数据。该系统的应用使核心描述过程加快了7倍。沉积学家花了40分钟,而不是5小时,以1:10厘米的比例描述了60米的岩心。结果以数字格式存储,从而消除了所有文书工作。该系统有助于描述大多数所需的岩性类型(岩石类型及其结构)。如有遗漏,用户可将其添加到系统中。描述了一个准备和训练CNN模型的管道。
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Automated Full-Bore Core Description Application for Production Purposes. From an Idea to IT-Product
Summary The automatization is a modern trend in various field of geology. In this work we present a system which were constructed based on convolutional neural network (CNN) for automated core description. The system was successfully applied to production data. The application of the system speeds up the core description process in 7x. A sedimetnologist spent 40 minutes to describe 60 meters of core in a scale of 1:10cm instead of 5 hours. The results are stored in digital format which removes all paperwork. The system helps to describe most of required lithologic types (rock type and its structure). In case of missed rare lithotype – user can add it to the system. A pipeline to prepare and train the CNN model described.
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