Data-driven models for production forecasting and decision supporting in petroleum reservoirs
Mateus A. Fernandes, Michael M. Furlanetti, Eduardo Gildin, Marcio A. Sampaio

TL;DR
This paper develops a data-driven machine learning methodology for forecasting petroleum reservoir production using simple operational data, aiming to improve reservoir management without relying on complex geological models.
Contribution
It introduces a novel approach that uses supervised learning and neural networks to predict reservoir behavior based solely on production and injection data, addressing issues like concept drift and real-time applicability.
Findings
Effective production forecasting on synthetic data
Successful application to Brazilian pre-salt reservoirs
Potential for real-time reservoir management support
Abstract
Forecasting production reliably and anticipating changes in the behavior of rock-fluid systems are the main challenges in petroleum reservoir engineering. This project proposes to deal with this problem through a data-driven approach and using machine learning methods. The objective is to develop a methodology to forecast production parameters based on simple data as produced and injected volumes and, eventually, gauges located in wells, without depending on information from geological models, fluid properties or details of well completions and flow systems. Initially, we performed relevance analyses of the production and injection variables, as well as conditioning the data to suit the problem. As reservoir conditions change over time, concept drift is a priority concern and require special attention to those observation windows and the periodicity of retraining, which are also objects…
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