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Subsurface Analytics Case Study; Reservoir Simulation and Modeling of Highly Complex Offshore Field in Malaysia,Using Artificial Intelligent and Machine Learning

机译:地下分析案例研究; 利用人工智能和机器学习,马来西亚高度复杂的离岸领域的水库仿真与建模

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Using commercial numerical reservoir simulators to build a full field reservoir model and simultaneously history match multiple dynamic variables for a highly complex,offshore mature field in Malaysia,had proven to be challenging,manpower intensive,highly expensive,and not very successful.This field includes almost two hundred wells that have been completed in more than 60 different,non-continuous reservoir layers.The field has been producing oil,gas and water for decades.The objective of this article is to demonstrate how Artificial Intelligence(AI)and Machine Learning is used to build a purely data-driven reservoir simulation model that successfully history match all the dynamic variables for all the wells in this field and subsequently used for production forecast.The model has been validated in space and time.The AI and Machine Learning technology that was used to build the dynamic reservoir simulation and modeling is called spatio-temporal learning.Spatio-temporal learning is a machine-learning algorithm specifically developed for data-driven modeling of the physics of fluid flow through porous media.Spatiotemporal learning is used in the context of Deconvolutional Neural Networks.In this article Spatio-temporal Learning and Deconvolutional Neural Networks will be explained.This new technology is the result of more than 20 years of research and development in the application of AI and Machine Learning in reservoir modeling.This technology develops a coupled reservoir and wellbore model that for this particular oil & gas field in Malaysia uses choke setting,well-head pressure and well-head temperature as input and simultaneously history matches Oil production,GOR,WC,reservoir pressure,and water saturation for more than a hundred wells through a completely automated process.Once the data-driven reservoir model is developed and history matched,it is blind validated in space and time in order to establish a reliable and robust reservoir model to be used for decision making purposes and opportunity generation to maximise the field value.The concepts and the methodology of history match of multiple wells,individual offshore platforms,and the entire field will be presented in this article along with the results of blind validation and production forecasting.Results of using this model to perform uncertainty quantification will also be presented.A case study of a highly complex mature field with large number of wells and years of production has been used to be studied and simulated by this data-driven approach.Time,efforts,and resources required for the development of the dynamic reservoir simulation models using AI and Machine Learning is considerably less than time and resources required using the commercial numerical simulators.It is validated that the TDM developed model can make very reasonable prediction of field behavior and production from the existing wells based on modification of operational constraints and can be a prudent complementary tool to conventional numerical simulators for such complex assets.
机译:使用商业数字储层模拟器构建全场储层模型,同时历史匹配马来西亚高度复杂的高度复杂的多种动态变量,已被证明是具有挑战性的,人力密集,高度昂贵,而不是非常成功。这个领域包括几乎两百个井已经完成超过60个不同的非连续的储层层。该领域几十年来生产石油,天然气和水。本文的目的是展示人工智能(AI)和机器学习方式用于构建纯粹的数据驱动的储层仿真模型,成功历史匹配该字段中所有井的所有动态变量,随后用于生产预测。模型已在空间和时间验证。AI和机器学习技术用于构建动态储层模拟和建模称为时空学习.Spatio-temporal学习是ma专门用于通过多孔介质的流体流动物理学的数据驱动建模专门开发的研究算法。在去卷积神经网络的背景下使用了石利尿学习。本文将解释这篇文章时空学习和解卷积神经网络。这是新的技术是在储层建模中应用AI和机器学习的研究和开发的结果。这项技术开发了一个耦合储层和井筒模型,即马来西亚的这种特殊的石油和天然气场使用扼流圈设定,井 - 头部压力和井头温度作为输入和同时历史与油生产,GOR,WC,储层压力和水饱和度与完全自动化的过程相匹配。通过完全自动化的过程,开发数据驱动的储层模型和历史匹配,它在空间和时间验证是盲目的,以便建立可靠且坚固的储层模型以用于Decisio n旨在最大化现场价值的目的和机会。本文将在本文中介绍多个井,单个海上平台和整个字段的历史匹配概念和方法的概念和方法。与盲验证和生产预测的结果一起展示。结果使用该模型来执行不确定性量化。还将展示不确定量化。通过这种数据驱动方法来研究和模拟具有大量井和多年的高度复杂成熟领域的案例研究.Te,努力,努力,努力,使用AI和机器学习开发动态储层模拟模型所需的资源远低于使用商业数值模拟器所需的时间和资源。验证了TDM开发的模型可以非常合理地预测现场行为和生产现有的井基于运作限制的修改,可以是谨慎的互补用于传统数值模拟器的工具,用于此类复杂资产。

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