What is it about?

The study focuses on enhancing the process of history matching in reservoir modeling, a critical task for reservoir teams. This process typically involves back-and-forth iterations between geo-modelers and simulation engineers to achieve accuracy. The challenge lies in accurately incorporating data into the subsurface geological model, particularly in determining permeability, a key factor influencing fluid flow and hydrocarbon distribution in the reservoir. The objective of this study is to predict the absolute reservoir permeability in partially cored and un-cored wells using the hydraulic flow unit (HFU) concept based on flow zone indicator (FZI) distribution. To achieve this, an Adaptive Neuro-Fuzzy Inference System (ANFIS) algorithm is employed. ANFIS uses input variables from relevant well logs (gamma-ray, sonic, density, deep resistivity, and neutron porosity) along with core data to calculate FZI. The clustering analysis of predicted FZI helps characterize various reservoir units, facilitating the calculation of absolute reservoir permeability using a modified Kozeny-Carman correlation. The study's results demonstrate a strong correlation between calculated permeability and core data in OPW-1 (R2= 0.98). Extending this approach to six other wells in the Sif Fatima field in Algeria, un-cored wells utilized the ANFIS model from neighboring cored wells. Validation occurred at both well and field levels, incorporating calculated permeability into reservoir simulation models and matching bottom-hole pressure and historical production rates. Ultimately, this method proves efficient in predicting absolute reservoir permeability for un-cored sections and wells, minimizing time consumption during initial history matching. This process aids in validating the accuracy of the subsurface geological static model within dynamic models, offering a quicker and effective means of assessment.

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Why is it important?

This study holds significance in the realm of reservoir management and modeling for various reasons: History Matching Efficiency: The history matching process in reservoir management often involves prolonged iterations between geo-modelers and simulation engineers. Enhancing this process is crucial, and this study's approach offers a potentially more efficient method. Permeability as a Crucial Factor: Permeability plays a pivotal role in determining reservoir quality and fluid flow. Achieving history matching with minimal alterations in permeability is challenging but critical for accurately modeling hydrocarbon distribution in reservoirs. Predictive Technique: The study introduces the use of the hydraulic flow unit (HFU) concept based on flow zone indicators (FZIs) and employs an Artificial Intelligence algorithm (Adaptive Neuro-Fuzzy Inference System - ANFIS) to predict absolute reservoir permeability. This method is innovative and aims to streamline the prediction process. Validating Model Performance: The research extends its approach to multiple wells in the Sif Fatima field, validating the calculated permeability against core data. The validation process considers well bottom-hole pressure and field-wide historical performance, ensuring robustness in assessing key reservoir parameters. Time and Resource Efficiency: By enabling the prediction of absolute reservoir permeability for un-cored sections and wells, this approach potentially reduces the time required for the initial history matching process. This efficiency is crucial in expediting the validation of subsurface geological static models within dynamic models. In summary, the study introduces a novel predictive method for determining absolute reservoir permeability, aiming to streamline the history matching process. Its potential for faster validation of subsurface geological models within dynamic models could significantly impact the efficiency of reservoir management and modeling practices.

Perspectives

This research offers valuable insights and solutions in reservoir management and modeling: Efficient History Matching: The history matching process, crucial for reservoir teams, often involves extensive exchanges between geo-modelers and simulation engineers. This study presents an innovative method that potentially streamlines this process. Significance of Permeability: Permeability plays a pivotal role in determining reservoir quality and fluid flow, impacting hydrocarbon distribution. Achieving accurate history matching with minimal changes in permeability is a key challenge, and this research addresses this crucial aspect. Predictive Technique: The study introduces a novel approach, utilizing the hydraulic flow unit concept (HFU) based on flow zone indicators (FZIs). An Artificial Intelligence algorithm (Adaptive Neuro-Fuzzy Inference System - ANFIS) predicts absolute reservoir permeability using relevant well logs data and core data, streamlining the prediction process. Model Validation: The research validates the predictive models against core data and extends this method to multiple wells in the Sif Fatima field. It rigorously assesses the calculated permeability against well bottom-hole pressure and overall historical performance of the field's key reservoir parameters. Time and Resource Optimization: By enabling absolute reservoir permeability prediction for un-cored sections and wells, this methodology potentially reduces the time needed for initial history matching. This efficiency aids in validating subsurface geological static models within dynamic models more swiftly. In conclusion, this research presents an efficient and innovative method for predicting absolute reservoir permeability over un-cored sections and wells. Its potential to expedite the validation of subsurface geological static models within dynamic models could significantly impact the efficiency of reservoir management and modeling practices.

Dr Zohreh Movahed
zmovahed@gmail.com

Read the Original

This page is a summary of: Integrating hydraulic flow unit concept and adaptive neuro-fuzzy inference system to accurately estimate permeability in heterogeneous reservoirs: Case study Sif Fatima oilfield, southern Algeria, Journal of African Earth Sciences, October 2023, Elsevier,
DOI: 10.1016/j.jafrearsci.2023.105027.
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