Multi-Asset Closed-Loop Reservoir Management Using Deep Reinforcement Learning
Yusuf Nasir, Louis J. Durlofsky

TL;DR
This paper introduces a multi-asset closed-loop reservoir management framework using deep reinforcement learning to create a single, efficient control policy applicable across various assets, reducing computational costs and maintaining high performance.
Contribution
The authors develop a multi-asset CLRM framework with a global control policy using deep reinforcement learning, enabling efficient management across assets with different configurations.
Findings
Global control policy achieves similar objectives to asset-specific policies.
Framework offers about 3x speedup in training.
Effective across 2D and 3D water-flooding examples.
Abstract
Closed-loop reservoir management (CLRM), in which history matching and production optimization are performed multiple times over the life of an asset, can provide significant improvement in the specified objective. These procedures are computationally expensive due to the large number of flow simulations required for data assimilation and optimization. Existing CLRM procedures are applied asset by asset, without utilizing information that could be useful over a range assets. Here, we develop a CLRM framework for multiple assets with varying numbers of wells. We use deep reinforcement learning to train a single global control policy that is applicable for all assets considered. The new framework is an extension of a recently introduced control policy methodology for individual assets. Embedding layers are incorporated into the representation to handle the different numbers of decision…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · Hydraulic Fracturing and Reservoir Analysis · Enhanced Oil Recovery Techniques
