Título: | DIRECT HYDROCARBON INDICATORS BASED ON LSTM | ||||||||||||
Autor: |
LUIZ FERNANDO TRINDADE SANTOS |
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Colaborador(es): |
MARCELO GATTASS - Orientador |
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Catalogação: | 02/ABR/2020 | Língua(s): | PORTUGUESE - BRAZIL |
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Tipo: | TEXT | Subtipo: | THESIS | ||||||||||
Notas: |
[pt] Todos os dados constantes dos documentos são de inteira responsabilidade de seus autores. Os dados utilizados nas descrições dos documentos estão em conformidade com os sistemas da administração da PUC-Rio. [en] All data contained in the documents are the sole responsibility of the authors. The data used in the descriptions of the documents are in conformity with the systems of the administration of PUC-Rio. |
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Referência(s): |
[pt] https://www.maxwell.vrac.puc-rio.br/projetosEspeciais/ETDs/consultas/conteudo.php?strSecao=resultado&nrSeq=47319&idi=1 [en] https://www.maxwell.vrac.puc-rio.br/projetosEspeciais/ETDs/consultas/conteudo.php?strSecao=resultado&nrSeq=47319&idi=2 |
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DOI: | https://doi.org/10.17771/PUCRio.acad.47319 | ||||||||||||
Resumo: | |||||||||||||
Detecting hydrocarbon reservoirs from a seismic survey is a complex task,
requiring specialized professionals and long time. Consequently, many authors
today seek to automate this task by using deep neural networks. Following the
success of deep convolutional networks, CNNs, in the identification of objects
in images and videos, CNNs have been used as detectors of geological events
in seismic images. Training a deep neural network, however, requires hundreds
of thousands of labeled data, that is, samples that we know the response that
the network must provide. If we treat seismic data as images, the hydrocarbon
reservoirs usually constitute a small sub-image unable to provide so many samples.
The methodology proposed in this dissertation treats the seismic data as a set
of traces and the sample that feeds the neural network are fragments of a onedimensional signal resembling a sound or voice signal. A labeled reservoir seismic
image usually provides the required number of labeled one-dimensional samples for
training. Another important aspect of our proposal is the use of a recurrent neural
network. The influence of a hydrocarbon reservoir on a seismic trace occurs not only
in its location but throughout the trace that follows. For this reason, we propose
the use of a Long Short-Term Memory, LSTM, network to characterize regions
that present gas signatures in seismic images. This dissertation further details the
implementation of the proposed methodology and test results on the Netherlands
F3-Block public seismic data. The results on this data set, evaluated by sensitivity,
specificity, accuracy and AUC indexes, are all excellent, above 95 percent.
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