TL;DR
This paper explores the use of deep reinforcement learning algorithms to optimize well control in subsurface reservoirs under uncertainty, demonstrating robustness and benchmarking against traditional optimization methods.
Contribution
It introduces a model-free RL framework with domain randomization for robust well control, applying PPO and A2C algorithms to complex reservoir management problems.
Findings
RL methods outperform traditional optimization in uncertain conditions.
The learned policies are robust to unseen parameter samples.
Benchmarking shows competitive performance with differential evolution.
Abstract
We present a case study of model-free reinforcement learning (RL) framework to solve stochastic optimal control for a predefined parameter uncertainty distribution and partially observable system. We focus on robust optimal well control problem which is a subject of intensive research activities in the field of subsurface reservoir management. For this problem, the system is partially observed since the data is only available at well locations. Furthermore, the model parameters are highly uncertain due to sparsity of available field data. In principle, RL algorithms are capable of learning optimal action policies -- a map from states to actions -- to maximize a numerical reward signal. In deep RL, this mapping from state to action is parameterized using a deep neural network. In the RL formulation of the robust optimal well control problem, the states are represented by saturation and…
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