P. U. Abeshi, T. I. Oliomogbe, J. O. Emegha, V. A. Adeyeye, Y. O. Atunwa
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引用次数: 0
摘要
天然气和天然气凝析油储层被认为有潜力为全球人口增长和工业化扩张同时提供负担得起的清洁能源。本研究利用深度神经网络-人工神经网络(DNN-ANN)模型对储层模拟进行评估,以预测尼日利亚尼日尔三角洲地区 X 油田天然气凝析油储层的露点压力,从而优化生产。气体凝析油储层的露点压力(DPP)是作为气体成分、储层温度、分子量和庚烷比重加百分比的函数进行估算的。结果显示,平均相对误差(MRE)和 R 平方(R2)分别为 0.99965 和 3.35%,表明该模型在预测 DPP 值方面表现出色。深度神经网络-人工神经网络(DNN-ANN)模型也与前人创建的早期模型进行了比较评估。建议将本研究开发的 DNN-ANN 模型应用于油藏模拟和油井性能分析建模、油藏工程问题和生产优化。
Application of Deep Neural Network-Artificial Neural Network Model for Prediction Of Dew Point Pressure in Gas Condensate Reservoirs from Field-X in the Niger Delta Region Nigeria
Reservoirs of natural gas and gas condensate have been proposed as a potential for providing affordable and cleaner energy sources to the global population growth and industrialization expansion simultaneously. This work evaluates reservoir simulation for production optimization using Deep Neural network - artificial neural network (DNN-ANN) model to predict the dew point pressure in gas condensate reservoirs from Field-X in the Niger Delta Region of Nigeria. The dew-point pressure (DPP) of gas condensate reservoirs was estimated as a function of gas composition, reservoir temperature, molecular weight and specific gravity of heptane plus percentage. Results obtained show that the mean relative error (MRE) and R-squared (R2) are 0.99965 and 3.35%, respectively, indicating that the model is excellent in predicting DPP values. The Deep Neural Network - Artificial Neural Network (DNN-ANN) model is also evaluated in comparison to earlier models created by previous authors. It was recommended that the DNN - ANN model developed in this study could be applied to reservoir simulation and modeling well performance analysis, reservoir engineering problems and production optimization.