人工智能在尼日利亚尼日尔三角洲Oredo油田筛井和产量优化中的应用

Lateef T. Akanji, J. Dala, K. Bello, Olafuyi Olalekan, Prashant Jadhawar
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引用次数: 0

摘要

一种增强型神经模糊技术应用于尼日利亚尼日尔三角洲Oredo油田已钻完井的生产优化和流体流动分析。该模型考虑了历史生产数据、储层岩石和流体性质、井的几何形状、结构、完井剖面和地面数据对整体油井产能的影响。人工智能训练过程在获得最小可量化误差或达到小于设定公差极限的值时完成。对Oredo油田完井的长、短管柱生产数据进行处理、分析,并将其输入到增强型神经模糊算法中。所采用的增强型神经模糊系统能够将Mamdani和Sugeno的直接方法建模为五层前馈神经网络和模糊逻辑过程,并在C/ c++数值计算面向对象平台上设计和实现。该研究强调了数据分析和人工智能在油井动态预测、成本降低和优化方面的重要性。
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Application of Artificial Intelligence in Well Screening and Production Optimisation in Oredo Oilfields, Niger Delta, Nigeria
An enhanced neuro-fuzzy technique is deployed in production optimisation and fluid flow analysis for wells drilled and completed in Oredo oilfields Niger delta Nigeria. The impact of historical production data, reservoir rock and fluid properties, well geometry, architecture, completion profile and surface data on overall well deliverability is incorporated in the model. The artificial intelligence training process is complete at the point a minimum quantifiable error is obtained or when a value less than the set tolerance limit is reached. Production data obtained from the short and long-strings for wells completed in Oredo field was processed, analysed and input into the enhanced neuro-fuzzy algorithm. The adopted enhanced neuro-fuzzy system is capable of modelling the direct approach of Mamdani and that of Sugeno in a five-layer feed-forward neural network and fuzzy logic process designed and implemented in a C/C++ numerical computation objected oriented platform. This study highlights the significance of data analytics and artificial intelligence in well performance prediction and cost reduction and optimisation in oil producing wells.
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