Journal Article10.1016/j.acags.2022.100103
Adaptive Proxy-based robust production optimization with multilayer perceptron
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TL;DR: In this article , a multilayer perceptron was used to build data-driven models based on 10 realizations of the Egg Model and these models were then coupled with two nature-inspired algorithms, viz. particle swarm optimization and grey wolf optimizer to solve waterflooding optimization.
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Abstract: Machine learning (ML) has been a technique employed to build data-driven models that can map the relationship between the input and output data provided. ML-based data-driven models offer an alternative path to solving optimization problems, which are conventionally resolved by applying simulation models. Higher computational cost is induced if the simulation model is computationally intensive. Such a situation aptly applies to petroleum engineering, especially when different geological realizations of numerical reservoir simulation (NRS) models are considered for production optimization. Therefore, data-driven models are suggested as a substitute for NRS. In this work, we demonstrated how multilayer perceptron could be implemented to build data-driven models based on 10 realizations of the Egg Model. These models were then coupled with two nature-inspired algorithms, viz. particle swarm optimization and grey wolf optimizer to solve waterflooding optimization. These data-driven models were adaptively re-trained by applying a training database that was updated via the addition of extra samples retrieved from optimization with the proxy models. The details of the methodology will be divulged in the paper. According to the results obtained, we could deduce that the methodology generated reliable data-driven models to solve the optimization problem, as justified by the excellent performance of the ML-based proxy model (with a coefficient of determination, R2 exceeding 0.98 in training, testing, and blind validation) and accurate optimization result (less than 1% error between the Expected Net Present Values optimized using NRS and proxy models). This study aids in an enhanced understanding of implementing adaptive training in tandem with optimization in ML-based proxy modeling.
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Citations
A critical review on intelligent optimization algorithms and surrogate models for conventional and unconventional reservoir production optimization
TL;DR: In this article , a critical review of intelligent optimization algorithms and surrogate models applied to production optimization problems in conventional and unconventional reservoirs is conducted, and future challenges and prospects within the area of reservoir production optimization are also discussed.
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Proxy Model Development for the Optimization of Water Alternating CO2 Gas for Enhanced Oil Recovery
TL;DR: In this article , proxy models were developed to solve a multi-objective optimization problem using NSGA-II (Non-dominated Sorting Genetic Algorithm II) in two selected reservoir models.
Fast Well Control Optimization with Two-Stage Proxy Modeling
TL;DR: In this article , a multilayer perceptron-based proxy model was used for water flooding optimization in the field of hydrocarbon production, and the results obtained demonstrate that conducting global and local proxy modeling can produce results with acceptable accuracy.
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