LGSYMar 23, 2021

On gray-box modeling for virtual flow metering

arXiv:2103.12513v316 citations
Originality Incremental advance
AI Analysis

This work addresses the need for accurate and scientifically consistent virtual flow meters for real-time control and optimization in the petroleum industry, though it is incremental as it builds on existing hybrid modeling approaches.

The study tackled the problem of predicting flow rates in petroleum production systems using gray-box modeling, which combines mechanistic and data-driven approaches, and found that it could reduce prediction errors, with oil flow rate errors ranging from 1.8% to 40.6% in a case study on 10 wells.

A virtual flow meter (VFM) enables continuous prediction of flow rates in petroleum production systems. The predicted flow rates may aid the daily control and optimization of a petroleum asset. Gray-box modeling is an approach that combines mechanistic and data-driven modeling. The objective is to create a computationally feasible VFM for use in real-time applications, with high prediction accuracy and scientifically consistent behavior. This article investigates five different gray-box model types in an industrial case study using real, historical production data from 10 petroleum wells, spanning at most four years of production. The results are diverse with an oil flow rate prediction error in the range of 1.8%-40.6%. Further, the study casts light upon the nontrivial task of balancing learning from both physics and data. Consequently, providing general recommendations towards the suitability of different hybrid models is challenging. Nevertheless, the results are promising and indicate that gray-box VFMs may reduce the prediction error of a mechanistic VFM while remaining scientifically consistent. The findings motivate further experimentation with gray-box VFM models and suggest several future research directions to improve upon the performance and scientific consistency.

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