Intelligent Production Prediction of Deep Offshore Hydrocarbon Reservoir: A Case Study of Niger-Delta Region of Nigeria

T. Akano, Kenneth Chukwudi Ochulor
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Abstract

Current methods for predicting output, such as material balancing and numerical simulation, need years of production history, and the model parameters employed determine how accurate they are. The use of artificial neural network (ANN) technology in the production forecasting of a deep offshore field under water injection/water flooding in Nigeria’s Niger-Delta region is investigated in this study. Oil, water, and gas production rates were predicted using well models and engineering features. Real-world field data from producer and water injection wells in deep offshore is used to test the models’ performance. Ninety percent (90%) of the historical data were utilised for training and validating the model framework before being put to the test with the remaining information. The predictive model takes little data and computation and is capable of estimating fluid production rate with a coefficient of prediction of more than 90%, with simulated results that match real-world data. The discoveries of this work could assist oil and gas businesses in forecasting production rates, determining a well’s estimated ultimate recovery (EUR), and making informed financial and operational decisions.
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海上深水油气藏智能产量预测——以尼日利亚尼日尔三角洲地区为例
目前预测产量的方法,如物料平衡和数值模拟,需要多年的生产历史,所采用的模型参数决定了它们的准确性。本文研究了人工神经网络(ANN)技术在尼日利亚尼日尔三角洲地区深水海上油田注水/水驱生产预测中的应用。利用井模型和工程特征预测油、水和气的产量。来自深海采油井和注水井的实际现场数据用于测试模型的性能。在使用剩余信息进行测试之前,90%(90%)的历史数据被用于训练和验证模型框架。该预测模型只需要很少的数据和计算,能够以90%以上的预测系数估算出流体产量,模拟结果与实际数据吻合。这项工作的发现可以帮助油气企业预测产量,确定一口井的估计最终采收率(EUR),并做出明智的财务和运营决策。
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