TY - JOUR
T1 - Data-driven deep-learning forecasting for oil production and pressure
AU - Werneck, Rafael de Oliveira
AU - Prates, Raphael
AU - Moura, Renato
AU - Gonçalves, Maiara Moreira
AU - Castro, Manuel
AU - Soriano-Vargas, Aurea
AU - Ribeiro Mendes Júnior, Pedro
AU - Hossain, M. Manzur
AU - Zampieri, Marcelo Ferreira
AU - Ferreira, Alexandre
AU - Davólio, Alessandra
AU - Schiozer, Denis
AU - Rocha, Anderson
N1 - Publisher Copyright:
© 2021 Elsevier B.V.
PY - 2022/3
Y1 - 2022/3
N2 - Production forecasting plays an important role in oil and gas production, aiding engineers to perform field management. However, this can be challenging for complex reservoirs such as the highly heterogeneous carbonate reservoirs from Brazilian Pre-salt fields. We propose a new setup for forecasting multiple outputs using machine-learning algorithms and evaluate a set of deep-learning architectures suitable for time-series forecasting. The setup proposed is called N-th Day and it provides a coherent solution for the problem of forecasting multiple data points in which a sliding window mechanism guarantees there is no data leakage during training. We also devise four deep-learning architectures for forecasting, stacking the layers to focus on different timescales, and compare them with different existing off-the-shelf methods. The obtained results confirm that specific architectures, as those we propose, are crucial for oil and gas production forecasting. Although LSTM and GRU layers are designed to capture temporal sequences, the experiments also indicate that the investigated scenario of production forecasting requires additional and specific structures.
AB - Production forecasting plays an important role in oil and gas production, aiding engineers to perform field management. However, this can be challenging for complex reservoirs such as the highly heterogeneous carbonate reservoirs from Brazilian Pre-salt fields. We propose a new setup for forecasting multiple outputs using machine-learning algorithms and evaluate a set of deep-learning architectures suitable for time-series forecasting. The setup proposed is called N-th Day and it provides a coherent solution for the problem of forecasting multiple data points in which a sliding window mechanism guarantees there is no data leakage during training. We also devise four deep-learning architectures for forecasting, stacking the layers to focus on different timescales, and compare them with different existing off-the-shelf methods. The obtained results confirm that specific architectures, as those we propose, are crucial for oil and gas production forecasting. Although LSTM and GRU layers are designed to capture temporal sequences, the experiments also indicate that the investigated scenario of production forecasting requires additional and specific structures.
KW - Data-driven
KW - Deep learning
KW - Forecasting
KW - Oil production
KW - Pre-salt
UR - http://www.scopus.com/inward/record.url?scp=85121978415&partnerID=8YFLogxK
U2 - 10.1016/j.petrol.2021.109937
DO - 10.1016/j.petrol.2021.109937
M3 - Article
AN - SCOPUS:85121978415
SN - 0920-4105
VL - 210
JO - Journal of Petroleum Science and Engineering
JF - Journal of Petroleum Science and Engineering
M1 - 109937
ER -