Concatenating data-driven and reduced-physics models for smart production forecasting

被引:0
|
作者
Oscar Ikechukwu Okoronkwo Ogali [1 ]
Oyinkepreye David Orodu [2 ]
机构
[1] University of Port Harcourt,Department of Petroleum and Gas Engineering
[2] KEOT Synergy Limited,undefined
关键词
Hybrid models; Machine learning; Production forecasting; Artificial Intelligence; Capacitance-Resistance Model; Petroleum Reservoir Management.;
D O I
10.1007/s12145-025-01745-9
中图分类号
学科分类号
摘要
Production forecasting is vital for petroleum reservoir management but remains challenging. This study combines the Capacitance-Resistance Model (CRM) (a reduced physics model) with machine learning (ML) (or data-driven) approaches – dubbed CRM-ML hybrids – to enhance production forecast accuracy in petroleum reservoirs. Using both synthetic field (synfield) and real field data, four ML approaches (Nu-Support Vector Machine, NuSVM, Extreme Gradient Boost, XGB, Extreme Learning Machine, ELM, and Multilayer Perceptron, MLP) were tested. Considering all 560 evaluations, the CRM-ML hybrids generally outperformed standalone ML approaches, with the CRM-XGB hybrid achieving the lowest mean absolute error of 7.2 barrels per day. The findings reveal that hybrid models improve production forecasts, with performance influenced by well-specific operational and reservoir factors. Despite possible challenges with interpretability and computational costs, this integration demonstrates the potential for leveraging reduced-physics models and ML for better reservoir predictions.
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