Netherlands Dataset: A New Public Dataset for Machine Learning in Seismic Interpretation
Reinaldo Mozart Silva, Lais Baroni, Rodrigo S. Ferreira, Daniel, Civitarese, Daniela Szwarcman, Emilio Vital Brazil

TL;DR
This paper introduces the Netherlands seismic dataset, a publicly available, high-quality labeled dataset designed to advance machine learning applications in seismic interpretation, demonstrated through two deep learning case studies.
Contribution
The paper provides a new, openly accessible seismic dataset with detailed labels, facilitating machine learning research in geosciences and seismic interpretation.
Findings
Deep learning models achieved compelling results using the dataset.
The dataset enabled effective seismic facies classification.
Public availability promotes further research in the field.
Abstract
Machine learning and, more specifically, deep learning algorithms have seen remarkable growth in their popularity and usefulness in the last years. This is arguably due to three main factors: powerful computers, new techniques to train deeper networks and larger datasets. Although the first two are readily available in modern computers and ML libraries, the last one remains a challenge for many domains. It is a fact that big data is a reality in almost all fields nowadays, and geosciences are not an exception. However, to achieve the success of general-purpose applications such as ImageNet - for which there are +14 million labeled images for 1000 target classes - we not only need more data, we need more high-quality labeled data. When it comes to the Oil&Gas industry, confidentiality issues hamper even more the sharing of datasets. In this work, we present the Netherlands interpretation…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Reservoir Engineering and Simulation Methods · Hydraulic Fracturing and Reservoir Analysis
