AUTOMATED LITHOLOGY PREDICTION BASED ON WELL LOGGING DATA USING MACHINE LEARNING

Understanding of the reservoir characteristics and conditions is important in the development of an oil and gas project. One characteristic that needs to be known is the lithology types of the reservoir formation. Information about the lithology types affect the calculation of petrophysical parame...

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Main Author: Irfan Ibrahim, Muhammad
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/40048
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:40048
spelling id-itb.:400482019-06-29T02:15:58ZAUTOMATED LITHOLOGY PREDICTION BASED ON WELL LOGGING DATA USING MACHINE LEARNING Irfan Ibrahim, Muhammad Indonesia Final Project lithology prediction, machine learning, supervised learning, classification INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/40048 Understanding of the reservoir characteristics and conditions is important in the development of an oil and gas project. One characteristic that needs to be known is the lithology types of the reservoir formation. Information about the lithology types affect the calculation of petrophysical parameter of the reservoir. Generally, identification of lithology types is done manually by geologists based on cuttings sightings, core samples, and well logging data, which may not be efficient enough as it takes lot of time and effort. Therefore, several approaches in supervised learning method are applied to improve the efficiency and accuracy of the identification of lithology types. In this study the supervised learning method was used so that input data and desired output data were needed to build a predictive model that would be used to identify the lithology types. Input data used are well logging data which usually available such as gamma ray (GR), spontaneous potential (SP), density, and neutron porosity. While the desired output data is obtained from core samples in the form of lithology types label. Several approaches in supervised learning method were applied to find model with sufficient accuracy, there are KNearest Neighbors (KNN) model, Support Vector Classifier (SVC) model, NuSVC model, LinearSVC model, and Stochastic Gradient Descent Classifier (SGDC) model. Data set was divided into train data set and test data set. 75% of the data is used to train the model while 25% of the data is used as test data. Several adjusting to parameters of each model was done. Prediction results of each model is compared. All models are able to achieve accuracy higher than 80%, where accuracy of these models is 94.09%, 93.18%, 80.91%, 84.09%, and 84.55% for KNN, SVC, NuSVC, LinearSVC, and SGDC model sequentially. Performances in predicting each label is also compared. KNN and SVC model offer good overall performances. The study shows that the KNN model is the best model in predicting lithology types. KNN model can be applied to predicting lithology with improved efficiency and accuracy. 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 Understanding of the reservoir characteristics and conditions is important in the development of an oil and gas project. One characteristic that needs to be known is the lithology types of the reservoir formation. Information about the lithology types affect the calculation of petrophysical parameter of the reservoir. Generally, identification of lithology types is done manually by geologists based on cuttings sightings, core samples, and well logging data, which may not be efficient enough as it takes lot of time and effort. Therefore, several approaches in supervised learning method are applied to improve the efficiency and accuracy of the identification of lithology types. In this study the supervised learning method was used so that input data and desired output data were needed to build a predictive model that would be used to identify the lithology types. Input data used are well logging data which usually available such as gamma ray (GR), spontaneous potential (SP), density, and neutron porosity. While the desired output data is obtained from core samples in the form of lithology types label. Several approaches in supervised learning method were applied to find model with sufficient accuracy, there are KNearest Neighbors (KNN) model, Support Vector Classifier (SVC) model, NuSVC model, LinearSVC model, and Stochastic Gradient Descent Classifier (SGDC) model. Data set was divided into train data set and test data set. 75% of the data is used to train the model while 25% of the data is used as test data. Several adjusting to parameters of each model was done. Prediction results of each model is compared. All models are able to achieve accuracy higher than 80%, where accuracy of these models is 94.09%, 93.18%, 80.91%, 84.09%, and 84.55% for KNN, SVC, NuSVC, LinearSVC, and SGDC model sequentially. Performances in predicting each label is also compared. KNN and SVC model offer good overall performances. The study shows that the KNN model is the best model in predicting lithology types. KNN model can be applied to predicting lithology with improved efficiency and accuracy.
format Final Project
author Irfan Ibrahim, Muhammad
spellingShingle Irfan Ibrahim, Muhammad
AUTOMATED LITHOLOGY PREDICTION BASED ON WELL LOGGING DATA USING MACHINE LEARNING
author_facet Irfan Ibrahim, Muhammad
author_sort Irfan Ibrahim, Muhammad
title AUTOMATED LITHOLOGY PREDICTION BASED ON WELL LOGGING DATA USING MACHINE LEARNING
title_short AUTOMATED LITHOLOGY PREDICTION BASED ON WELL LOGGING DATA USING MACHINE LEARNING
title_full AUTOMATED LITHOLOGY PREDICTION BASED ON WELL LOGGING DATA USING MACHINE LEARNING
title_fullStr AUTOMATED LITHOLOGY PREDICTION BASED ON WELL LOGGING DATA USING MACHINE LEARNING
title_full_unstemmed AUTOMATED LITHOLOGY PREDICTION BASED ON WELL LOGGING DATA USING MACHINE LEARNING
title_sort automated lithology prediction based on well logging data using machine learning
url https://digilib.itb.ac.id/gdl/view/40048
_version_ 1822925615213314048