Capacitance Resistance Model and Recurrent Neural Network for Well Connectivity Estimation : A Comparison Study

09/17/2021
by   Deepthi Sen, et al.
0

In this report, two commonly used data-driven models for predicting well production under a waterflood setting: the capacitance resistance model (CRM) and recurrent neural networks (RNN) are compared. Both models are completely data-driven and are intended to learn the reservoir behavior during a water flood from historical data. This report serves as a technical guide to the python-based implementation of the CRM model available from the associated GitHub repository.

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