Affiliation:
1. School of Mining & Petroleum Engineering, Department of Civil & Environmental Engineering, University of Alberta
2. School of Mining & Petroleum Engineering, Department of Civil & Environmental Engineering, University of Alberta (Corresponding author)
Abstract
Summary
Production time-series forecasting for newly drilled wells or those with limited flow and pressure historical data poses a significant challenge, and this problem is exacerbated by the complexities and uncertainties encountered in fractured subsurface systems. While many existing models rely on static features for prediction, the production data progressively offer more informative insights as production unfolds. Leveraging ongoing production data can enhance forecasting accuracy over time. However, effectively integrating the production stream data presents significant model training and updating complexities. We propose two innovative methods to address this challenge: masked recurrent alignment (MRA) and masked encoding decoding (MED). These methods enable the model to continually update its predictions based on historical data. In addition, by incorporating sequence padding and masking, our model can handle inputs of varying lengths without trimming, thereby avoiding the potential loss of valuable training samples. We implement these models with gated recurrent unit (GRU) and evaluate their performance in a case study involving 6,154 shale gas wells in the Central Montney Region. The data set encompasses 39 production-related features, including reservoir properties, completion, and wellhead information. Performance evaluation is based on root mean square error (RMSE) to predict 36-month production from 200 wells during testing. Empirical findings highlight the efficacy of the proposed models in handling challenges associated with variable-length input sequences, showcasing their superior performance. Our research emphasizes the value of including shorter time-series segments, often overlooked, to improve predictive accuracy, especially in scenarios with limited training samples.
Publisher
Society of Petroleum Engineers (SPE)
Reference59 articles.
1. Abadi, M., Agarwal, A., Barham, P. et al. 2016. Tensorflow: Large-Scale Machine Learning on Heterogeneous Distributed Systems. arXiv:1603.04467 (preprint
2. last revised 16 March 2016). https://doi.org/10.48550/arXiv.1603.04467.
3. Crude Oil Reserve Estimation: An Application of the Autoregressive Integrated Moving Average (ARIMA) Model;Ayeni;J Pet Sci Eng,1992
4. BC Oil and Gas Commission
. 2022. 2021 Oil and Gas Reserves and Production Report. https://www.bc-er.ca/files/reports/Reserves-and-Production-Reports/2021-Oil-and-Gas-Reserves-and-Production-Report.pdf.
5. Language Models Are Few-Shot Learners;Brown;Adv Neural Inf Process Syst,2020