Ir para o conteúdo principal

Escrever uma avaliação PREreview

Hybrid CNN–GA Framework for Optimal Oil Well Placement Under Geological Uncertainty

Publicado
Servidor
Preprints.org
DOI
10.20944/preprints202601.1943.v1

A sequential well placement strategy is important for field development planning under geological uncertainty, because reservoir conditions can change between drilling stages. Motivated by this challenge, this study proposes a hybrid framework that combines convolutional neural networks (CNNs) with a genetic algorithm (GA). The goal is to determine optimal well locations efficiently, while reducing reliance on full-physics reservoir simulation. The methodology uses OPM Flow to generate training datasets for two consecutive six-month periods. This allows the CNN proxy to learn the relationship between permeability realizations, well coordinates, and cumulative oil production. The trained proxies then guide the GA-based optimization in each period. Results for the Egg model show strong predictive performance in both stages. The coefficients of determination are 0.76 and 0.82 for training data, and 0.64 and 0.63 for testing data, in the first and second periods, respectively. In addition, the proxy-based optimization required only about 26% of the computational time of direct simulation in the first period, and roughly 15% in the second. Production estimates were maintained within a 5% error margin. Overall, the proposed sequential, proxy-assisted approach is accurate and computationally efficient for well placement optimization under geological uncertainty.

Você pode escrever uma avaliação PREreview de Hybrid CNN–GA Framework for Optimal Oil Well Placement Under Geological Uncertainty. Uma avaliação PREreview é uma avaliação de um preprint e pode variar de algumas frases a um parecer extenso, semelhante a um parecer de revisão por pares realizado por periódicos.

Antes de começar

Vamos pedir que você faça login com seu ORCID iD. Se você não tiver um iD, pode criar um.

O que é um ORCID iD?

Um ORCID iD é um identificador único que diferencia você de outras pessoas com o mesmo nome ou nome semelhante.

Começar agora