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A General Spatio-Temporal Clustering-Based Non-local Formulation for Multiscale Modeling of Compartmentalized Reservoirs

Authors :
Esmaeilzadeh, Soheil
Salehi, Amir
Hetz, Gill
Olalotiti-lawal, Feyisayo
Darabi, Hamed
Castineira, David
Source :
Machine Learning Session, WRM 2019 Conference
Publication Year :
2019

Abstract

Representing the reservoir as a network of discrete compartments with neighbor and non-neighbor connections is a fast, yet accurate method for analyzing oil and gas reservoirs. Automatic and rapid detection of coarse-scale compartments with distinct static and dynamic properties is an integral part of such high-level reservoir analysis. In this work, we present a hybrid framework specific to reservoir analysis for an automatic detection of clusters in space using spatial and temporal field data, coupled with a physics-based multiscale modeling approach. In this work a novel hybrid approach is presented in which we couple a physics-based non-local modeling framework with data-driven clustering techniques to provide a fast and accurate multiscale modeling of compartmentalized reservoirs. This research also adds to the literature by presenting a comprehensive work on spatio-temporal clustering for reservoir studies applications that well considers the clustering complexities, the intrinsic sparse and noisy nature of the data, and the interpretability of the outcome. Keywords: Artificial Intelligence; Machine Learning; Spatio-Temporal Clustering; Physics-Based Data-Driven Formulation; Multiscale Modeling

Details

Database :
arXiv
Journal :
Machine Learning Session, WRM 2019 Conference
Publication Type :
Report
Accession number :
edsarx.1904.13236
Document Type :
Working Paper
Full Text :
https://doi.org/10.2118/195329-MS