4.7 Article

Smart Proxy Modeling of a Fractured Reservoir Model for Production Optimization: Implementation of Metaheuristic Algorithm and Probabilistic Application

Journal

NATURAL RESOURCES RESEARCH
Volume 30, Issue 3, Pages 2431-2462

Publisher

SPRINGER
DOI: 10.1007/s11053-021-09844-2

Keywords

Reservoir simulation; Dual-porosity dual-permeability; Smart proxy modeling; Backpropagation algorithms; Particle swarm optimization

Funding

  1. NTNU Norwegian University of Science and Technology (incl St. Olavs Hospital - Trondheim University Hospital)

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Numerical reservoir simulation is widely used in reservoir management, but the long computational time due to model complexity is a major drawback. Smart proxy modeling (SPM) is introduced as a new approach utilizing artificial intelligence and machine learning to address this challenge. SPM applies artificial neural network as the ML technique to optimize reservoir modeling and production outcomes.
Numerical reservoir simulation has been recognized as one of the most frequently used aids in reservoir management. Despite having high calculability performance, it presents an acute shortcoming, namely the long computational time induced by the complexities of reservoir models. This situation applies aptly in the modeling of fractured reservoirs because these reservoirs are strongly heterogeneous. Therefore, the domains of artificial intelligence and machine learning (ML) were used to alleviate this computational challenge by creating a new class of reservoir modeling, namely smart proxy modeling (SPM). SPM is a ML approach that requires a spatio-temporal database extracted from the numerical simulation to be built. In this study, we demonstrate the procedures of SPM based on a synthetic fractured reservoir model, which is a representation of dual-porosity dual-permeability model. The applied ML technique for SPM is artificial neural network. We then present the application of the smart proxies in production optimization to illustrate its practicality. Apart from applying the backpropagation algorithms, we implemented particle swarm optimization (PSO), which is one of the metaheuristic algorithms, to build the SPM. We also propose an additional procedure in SPM by integrating the probabilistic application to examine the overall performance of the smart proxies. In this work, we inferred that the PSO had a higher chance to improve the reliability of smart proxies with excellent training results and predictive performance compared with the considered backpropagation approaches.

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