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VeerNet: Using Deep Neural Networks for Curve Classification and Digitization of Raster Well-Log Images

Raster logs are scanned representations of the analog data recorded in subsurface drilling. Geologists rely on these images to interpret well-log curves and deduce the physical properties of geological formations. Scanned images contain various artifacts, including hand-written texts, brightness var...

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Autores principales: Nasim, M. Quamer, Patwardhan, Narendra, Maiti, Tannistha, Marrone, Stefano, Singh, Tarry
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10381386/
https://www.ncbi.nlm.nih.gov/pubmed/37504813
http://dx.doi.org/10.3390/jimaging9070136
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author Nasim, M. Quamer
Patwardhan, Narendra
Maiti, Tannistha
Marrone, Stefano
Singh, Tarry
author_facet Nasim, M. Quamer
Patwardhan, Narendra
Maiti, Tannistha
Marrone, Stefano
Singh, Tarry
author_sort Nasim, M. Quamer
collection PubMed
description Raster logs are scanned representations of the analog data recorded in subsurface drilling. Geologists rely on these images to interpret well-log curves and deduce the physical properties of geological formations. Scanned images contain various artifacts, including hand-written texts, brightness variability, scan defects, etc. The manual effort involved in reading the data is substantial. To mitigate this, unsupervised computer vision techniques are employed to extract and interpret the curves digitally. Existing algorithms predominantly require manual intervention, resulting in slow processing times, and are erroneous. This research aims to address these challenges by proposing VeerNet, a deep neural network architecture designed to semantically segment the raster images from the background grid to classify and digitize (i.e., extracting the analytic formulation of the written curve) the well-log data. The proposed approach is based on a modified UNet-inspired architecture leveraging an attention-augmented read–process–write strategy to balance retaining key signals while dealing with the different input–output sizes. The reported results show that the proposed architecture efficiently classifies and digitizes the curves with an overall F1 score of 35% and Intersection over Union of 30%, achieving 97% recall and 0.11 Mean Absolute Error when compared with real data on binary segmentation of multiple curves. Finally, we analyzed VeerNet’s ability in predicting Gamma-ray values, achieving a Pearson coefficient score of 0.62 when compared to measured data.
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spelling pubmed-103813862023-07-29 VeerNet: Using Deep Neural Networks for Curve Classification and Digitization of Raster Well-Log Images Nasim, M. Quamer Patwardhan, Narendra Maiti, Tannistha Marrone, Stefano Singh, Tarry J Imaging Article Raster logs are scanned representations of the analog data recorded in subsurface drilling. Geologists rely on these images to interpret well-log curves and deduce the physical properties of geological formations. Scanned images contain various artifacts, including hand-written texts, brightness variability, scan defects, etc. The manual effort involved in reading the data is substantial. To mitigate this, unsupervised computer vision techniques are employed to extract and interpret the curves digitally. Existing algorithms predominantly require manual intervention, resulting in slow processing times, and are erroneous. This research aims to address these challenges by proposing VeerNet, a deep neural network architecture designed to semantically segment the raster images from the background grid to classify and digitize (i.e., extracting the analytic formulation of the written curve) the well-log data. The proposed approach is based on a modified UNet-inspired architecture leveraging an attention-augmented read–process–write strategy to balance retaining key signals while dealing with the different input–output sizes. The reported results show that the proposed architecture efficiently classifies and digitizes the curves with an overall F1 score of 35% and Intersection over Union of 30%, achieving 97% recall and 0.11 Mean Absolute Error when compared with real data on binary segmentation of multiple curves. Finally, we analyzed VeerNet’s ability in predicting Gamma-ray values, achieving a Pearson coefficient score of 0.62 when compared to measured data. MDPI 2023-07-06 /pmc/articles/PMC10381386/ /pubmed/37504813 http://dx.doi.org/10.3390/jimaging9070136 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Nasim, M. Quamer
Patwardhan, Narendra
Maiti, Tannistha
Marrone, Stefano
Singh, Tarry
VeerNet: Using Deep Neural Networks for Curve Classification and Digitization of Raster Well-Log Images
title VeerNet: Using Deep Neural Networks for Curve Classification and Digitization of Raster Well-Log Images
title_full VeerNet: Using Deep Neural Networks for Curve Classification and Digitization of Raster Well-Log Images
title_fullStr VeerNet: Using Deep Neural Networks for Curve Classification and Digitization of Raster Well-Log Images
title_full_unstemmed VeerNet: Using Deep Neural Networks for Curve Classification and Digitization of Raster Well-Log Images
title_short VeerNet: Using Deep Neural Networks for Curve Classification and Digitization of Raster Well-Log Images
title_sort veernet: using deep neural networks for curve classification and digitization of raster well-log images
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10381386/
https://www.ncbi.nlm.nih.gov/pubmed/37504813
http://dx.doi.org/10.3390/jimaging9070136
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