A Hybrid Model for Real-Time Reservoir Pressure and Temperature Estimation Using Flowing Tubing Head Pressure Data with a LightGBM Ensemble Algorithm
DOI:
https://doi.org/10.63561/jca.v2i4.1076Keywords:
Hybrid predictive model, LightGBM, reservoir pressure, reservoir temperature, Flowing Tubing Head Pressure (FTHP), edge computingAbstract
This study develops and evaluates a hybrid predictive model for real-time estimation of reservoir pressure and temperature using flowing tubing head pressure (FTHP) and complementary surface sensor data. Operational data—comprising FTHP, wellhead temperature, multiphase flow rates, and environmental variables—were collected from field-deployed sensors across multiple reservoir sites. After preprocessing with Kalman filtering, outlier removal, and extensive feature engineering, the dataset was partitioned into training (80%), validation (10%), and testing (10%) subsets. The Light Gradient Boosting Machine (LightGBM) algorithm was implemented to model nonlinear relationships between surface measurements and subsurface conditions. Empirical results show that the hybrid model achieved high predictive accuracy, with RMSE values of 0.85 psi and 0.65 psi MAE for pressure estimation, and 0.45 °C RMSE with 0.32 °C MAE for temperature estimation. The model explained most of the variance in the data, achieving R² values of 0.96 (pressure) and 0.95 (temperature). Comparative testing against Linear Regression, Ridge Regression, Random Forest, and XGBoost indicated that the hybrid LightGBM model outperformed all benchmarks across all metrics. Real-time deployment on an edge-computing gateway produced an average prediction latency below 350 ms, confirming operational suitability. The empirical evidence demonstrates that integrating physics-informed reasoning with LightGBM significantly enhances reservoir condition prediction accuracy. The hybrid model provides a non-invasive, computationally efficient, and scalable solution for continuous reservoir monitoring in modern smart-oilfield environments.
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