ESTIMATION OF FLUIDS AND LITHOLOGIC DISTRIBUTION USING THE COMBINATION OF AVO INVERSION AND MULTI-ATTRIBUTE

Some methods like the Amplitude Versus Offset (AVO), inversion, and multi-attribute were used in purpose to discriminate lithology and identifies fluids from the seismic data. In fact, those methods are not always successfully used, because the seismic data itself also have differences from one ano...

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Main Author: S.R. IABUY (NIM 12403024), ALAN
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/7128
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:7128
spelling id-itb.:71282008-07-14T17:07:36ZESTIMATION OF FLUIDS AND LITHOLOGIC DISTRIBUTION USING THE COMBINATION OF AVO INVERSION AND MULTI-ATTRIBUTE S.R. IABUY (NIM 12403024), ALAN Indonesia Final Project INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/7128 Some methods like the Amplitude Versus Offset (AVO), inversion, and multi-attribute were used in purpose to discriminate lithology and identifies fluids from the seismic data. In fact, those methods are not always successfully used, because the seismic data itself also have differences from one another. In aim to have the optimal results, pre-analysis are necessary needed. This kind of analysis could help us in making a decision about what kind of data processing we should do, what methods we use, furthermore how to get the best workflow. In this case, pre-analysis were makes after doing some works like sensitivity analysis, and also the synthetic data modeling. From the sensitivity analysis, we conclude that Supernova* field have two different data characteristic, the first case is high-impedance sand, and the other ones is low-impedance sand. Besides that, the sensitivity analysis also tells us that the Lambda / Mu parameters could possibly used to discriminate sands from shale. But from the Lambda / Mu log data we could found out that the contrast are not significantly separates sands from shale, therefore the seismic data processing focused on estimating the lithologic distribution using multi attribute method with gamma ray as log target. The seismic data processing result shows that the sand at 930 ms (S3) is potentially filled with gas. In the other hand, the estimation of lithologic distribution using multi-attribute method could give fine results, especially the low-impedance sand which distributed at 800 until 1000 ms more or less. <br /> text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Some methods like the Amplitude Versus Offset (AVO), inversion, and multi-attribute were used in purpose to discriminate lithology and identifies fluids from the seismic data. In fact, those methods are not always successfully used, because the seismic data itself also have differences from one another. In aim to have the optimal results, pre-analysis are necessary needed. This kind of analysis could help us in making a decision about what kind of data processing we should do, what methods we use, furthermore how to get the best workflow. In this case, pre-analysis were makes after doing some works like sensitivity analysis, and also the synthetic data modeling. From the sensitivity analysis, we conclude that Supernova* field have two different data characteristic, the first case is high-impedance sand, and the other ones is low-impedance sand. Besides that, the sensitivity analysis also tells us that the Lambda / Mu parameters could possibly used to discriminate sands from shale. But from the Lambda / Mu log data we could found out that the contrast are not significantly separates sands from shale, therefore the seismic data processing focused on estimating the lithologic distribution using multi attribute method with gamma ray as log target. The seismic data processing result shows that the sand at 930 ms (S3) is potentially filled with gas. In the other hand, the estimation of lithologic distribution using multi-attribute method could give fine results, especially the low-impedance sand which distributed at 800 until 1000 ms more or less. <br />
format Final Project
author S.R. IABUY (NIM 12403024), ALAN
spellingShingle S.R. IABUY (NIM 12403024), ALAN
ESTIMATION OF FLUIDS AND LITHOLOGIC DISTRIBUTION USING THE COMBINATION OF AVO INVERSION AND MULTI-ATTRIBUTE
author_facet S.R. IABUY (NIM 12403024), ALAN
author_sort S.R. IABUY (NIM 12403024), ALAN
title ESTIMATION OF FLUIDS AND LITHOLOGIC DISTRIBUTION USING THE COMBINATION OF AVO INVERSION AND MULTI-ATTRIBUTE
title_short ESTIMATION OF FLUIDS AND LITHOLOGIC DISTRIBUTION USING THE COMBINATION OF AVO INVERSION AND MULTI-ATTRIBUTE
title_full ESTIMATION OF FLUIDS AND LITHOLOGIC DISTRIBUTION USING THE COMBINATION OF AVO INVERSION AND MULTI-ATTRIBUTE
title_fullStr ESTIMATION OF FLUIDS AND LITHOLOGIC DISTRIBUTION USING THE COMBINATION OF AVO INVERSION AND MULTI-ATTRIBUTE
title_full_unstemmed ESTIMATION OF FLUIDS AND LITHOLOGIC DISTRIBUTION USING THE COMBINATION OF AVO INVERSION AND MULTI-ATTRIBUTE
title_sort estimation of fluids and lithologic distribution using the combination of avo inversion and multi-attribute
url https://digilib.itb.ac.id/gdl/view/7128
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