Well Control Optimization using Derivative-Free Algorithms and a Multiscale Approach
Xiang Wang, Ronald D. Haynes, Qihong Feng

TL;DR
This paper explores derivative-free optimization algorithms combined with a multiscale approach to improve well control strategies in reservoir management, balancing operational costs and yield.
Contribution
It introduces a hybrid multiscale optimization framework using GPS, PSO, and CMA-ES algorithms, demonstrating enhanced solution quality especially with CMA-ES.
Findings
CMA-ES outperforms GPS and PSO in small and large problems.
Hybrid multiscale approach improves optimization results.
Control frequency significantly impacts well management effectiveness.
Abstract
In this paper, we use numerical optimization algorithms and a multiscale approach in order to find an optimal well management strategy over the life of the reservoir. The large number of well rates for each control step make the optimization problem more difficult and at a high risk of achieving a suboptimal solution. Moreover, the optimal number of adjustments is not known a priori. Adjusting well controls too frequently will increase unnecessary well management and operation cost, and an excessively low number of control adjustments may not be enough to obtain a good yield. We investigate three derivative-free optimization algorithms, chosen for their robust and parallel nature, to determine optimal well control strategies. The algorithms chosen include generalized pattern search (GPS), particle swarm optimization (PSO) and covariance matrix adaptation evolution strategy (CMA-ES).…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · Hydraulic Fracturing and Reservoir Analysis · Drilling and Well Engineering
