Gradient-free strategies to robust well control optimization

2019 ◽  
Vol 24 (6) ◽  
pp. 1959-1978
Author(s):  
Jefferson Wellano Oliveira Pinto ◽  
Juan Alberto Rojas Tueros ◽  
Bernardo Horowitz ◽  
Silvana Maria Bastos Afonso da Silva ◽  
Ramiro Brito Willmersdorf ◽  
...  
2020 ◽  
Author(s):  
T. Silva ◽  
M. Bellout ◽  
C. Giuliani ◽  
E. Camponogara ◽  
A. Pavlov

2016 ◽  
Vol 18 (1) ◽  
pp. 105-132 ◽  
Author(s):  
Jan Dirk Jansen ◽  
Louis J. Durlofsky

SPE Journal ◽  
2019 ◽  
Vol 24 (03) ◽  
pp. 912-950
Author(s):  
Abeeb A. Awotunde

Summary This paper evaluates the effectiveness of six dimension-reduction approaches. The approaches considered are the constant-control (Const) approach, the piecewise-constant (PWC) approach, the trigonometric approach, the Bessel-function (Bess) approach, the polynomial approach, and the data-decomposition approach. The approaches differ in their mode of operation, but they all reduce the number of parameters required in well-control optimization problems. Results show that the PWC approach performs better than other approaches on many problems, but yields widely fluctuating well controls over the field-development time frame. The trigonometric approach performed well on all the problems and yields controls that vary smoothly over time.


SPE Journal ◽  
2021 ◽  
pp. 1-21
Author(s):  
Yong Do Kim ◽  
Louis J. Durlofsky

Summary In well-control optimization problems, the goal is to determine the time-varying well settings that maximize an objective function, which is often the net present value (NPV). Various proxy models have been developed to predict NPV for a set of inputs such as time-varying well bottomhole pressures (BHPs). However, when nonlinear output constraints (e.g., maximum well/field water production rate or minimum well/field oil rate) are specified, the problem is more challenging because well rates as a function of time are required. In this work, we develop a recurrent neural network (RNN)–based proxy model to treat constrained production optimization problems. The network developed here accepts sequences of BHPs as inputs and predicts sequences of oil and water rates for each well. A long-short-term memory (LSTM) cell, which is capable of learning long-term dependencies, is used. The RNN is trained using well-rate results from 256 full-order simulation runs that involve different injection and production-well BHP schedules. After detailed validation against full-order simulation results, the RNN-based proxy is used for 2D and 3D production optimization problems. Optimizations are performed using a particle swarm optimization (PSO) algorithm with a filter-basednonlinear-constraint treatment. The trained proxy is extremely fast, although optimizations that apply the RNN-based proxy at all iterations are found to be suboptimal relative to full simulation-based (standard) optimization. Through use of a few additional simulation-based PSO iterations after proxy-based optimization, we achieve NPVs comparable with those from simulation-based optimization but with speedups of 10 or more (relative to performing five simulation-based optimization runs). It is important to note that because the RNN-based proxy provides full well-rate time sequences, optimization constraint types or limits, as well as economic parameters, can be varied without retraining.


SPE Journal ◽  
2021 ◽  
pp. 1-20
Author(s):  
Z. Wang ◽  
J. He ◽  
W. J. Milliken ◽  
X. -H. Wen

Summary Full-physics models in history matching (HM) and optimization can be computationally expensive because these problems usually require hundreds of simulations or more. In a previous study, a physics-baseddata-driven network model was implemented with a commercial simulator that served as a surrogate without the need to build a 3D geological model. In this paper, the network model is reconstructed to account for complex reservoir conditions of mature fields and successfully apply it to a diatomite reservoir in the San Joaquin Valley, California, for rapid HM and optimization. The reservoir is simplified into a network of 1D connections between well perforations. These connections are discretized into gridblocks, and the grid properties are calibrated to historical production data. Elevation change, saturation distribution, capillary pressure, and relative permeability are accounted for to best represent the mature field conditions. To simulate this physics-based network model through a commercial simulator, an equivalent Cartesian model is designed where rows correspond to the previously mentioned connections. Thereafter, the HM can be performed with the ensemble smoother with multiple data assimilation (ESMDA) algorithm under a sequential iterative process. A representative model after HM is then used for well control optimization. The network model methodology has been successfully applied to the waterflood optimization for a 56-well sector model of a diatomite reservoir in the San Joaquin Valley. HM results show that the network model matches with field level production history and gives reasonable matches for most of the wells, including pressure and volumetric data. The calibrated posterior ensemble of HM yields a satisfactory production prediction that is verified by the remaining historical data. For well control optimization, the P50 model is selected to maximize the net present value (NPV) in 5 years under provided well/field constraints. This confirms that the calibrated network model is accurate enough for production forecasts and optimization. The use of a commercial simulator in the network model provided flexibility to account for complex physics, such as elevation difference between wells, saturation nonequilibrium, and strong capillary pressure. Unlike the traditional big-loop workflow that relies on a detailed characterization of geological models, the proposed network model only requires production data and can be built and updated rapidly. The model also runs much faster (tens of seconds) than a full-physics model because of the use of much fewer gridblocks. To our knowledge, this is the first time this physics-baseddata-driven network model is applied with a commercial simulator on a field waterflood case. Unlike approaches developed with analytic solutions, the use of a commercial simulator makes it feasible to be further extended for complex processes (e.g., thermal or compositional flow). It serves as a useful surrogate model for both fast and reliable decision-making in reservoir management.


2016 ◽  
Vol 35 ◽  
pp. 21-32 ◽  
Author(s):  
Qihong Feng ◽  
Hongwei Chen ◽  
Xiang Wang ◽  
Sen Wang ◽  
Zenglin Wang ◽  
...  

2020 ◽  
Author(s):  
Daniel Rodrigues dos Santos ◽  
André Ricardo Fioravanti ◽  
Antonio Alberto de Souza dos Santos ◽  
Denis José Schiozer

2019 ◽  
Vol 123 ◽  
pp. 12-33 ◽  
Author(s):  
Xiang Wang ◽  
Ronald D. Haynes ◽  
Yanfeng He ◽  
Qihong Feng

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