Occupying an important role in the global energy sector, carbonate reservoirs are
the source of over half of the world’s remaining hydrocarbon reserves. Their
successful recovery is key to maintaining a stable energy supply. In this context,
an accurate modelling of the heterogeneous distribution of their petrophysical
properties is essential for an optimized recovery of hydrocarbons. Among these
petrophysical properties, permeability, which describes the ease of fluid flow in
rocks, stands out as a vital factor for creating effective reservoir management and
recovery strategies. Permeability measurements in carbonates are done using well
core samples, which are time consuming and expensive to get, and since carbonate
reservoirs in a field can extend laterally for kilometers, it is impossible to collect
core samples from all wells in the field. Given the fact that a fraction of the total
wells in the field has core samples, there is a high level of uncertainty on the
permeability distribution in uncored wells and in the inter-well region. Addressing
this gap, this thesis aims to integrate machine learning models with production
data to model permeability for the whole reservoir. In this study, 36 carbonates
reservoir model incorporating different uncertainties on permeability distribution
inherent to carbonate reservoirs, and their simulated production data are used to
train and test an artificial neural network (ANN). These models are based on the
COSTA model which represents a realistic set of heterogeneous carbonate
reservoirs belonging to the Upper Kharaib member in UAE. The ANN was
rigorously tested, showing remarkable accuracy with the highest mean squared
error (MSE) being 7.02 and the lowest MSE being 1.19, demonstrating its
capability of modeling permeability. The ANN performance was further improved
by integrating it with unsupervised learning techniques to cluster the production
data of the 36 reservoir models into 3 different clusters based on the gas flow rates
of production wells in each reservoir model. Consequently, separate neural
networks were created for each cluster, each trained on reservoir models with a
certain range and pattern of production data. This segmentation improved the
ANN performance by 35%, highlighting the benefits of integrating unsupervised
learning techniques in permeability modelling. One key finding in this thesis is
understanding the effect of well interference on the ANN performance. It was
noted that in cases where permeability increases from one well to another, the
production data showed a decrease. Removing these producers from the training
dataset led to an 10% decrease in ANN performance, highlighting their importance
in capturing the non-linear relationship between permeability and production data.
| Date of Award | 2024 |
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| Original language | American English |
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| Awarding Institution | - HBKU College of Science and Engineering
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- Carbonate reservoirs
- Permeability Modelling
- Reservoir Characterization
- Sustainable Energy
MACHINE LEARNING AND CARBONATE RESERVOIRS: A PRODUCTION DATA PERSPECTIVE ON PERMEABILITY MODELLING
Baalbaki, M. (Author). 2024
Student thesis: Master's Dissertation