A Data Driven Artificial Intelligence Framework for Hydrogen Production Optimization in Waterflooded Hydrocarbon Reservoir

Klemens Katterbauer, A. Qasim, A. Marsala, A. Yousef
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引用次数: 1

Abstract

Hydrogen has become a very promising green energy source that can be easily stored and transported, and it has the potential to be utilized in a variety of applications. Hydrogen, as a power source, has the benefits of being easily transportable and stored over long periods of times, and does not lead to any carbon emissions related to the utilization of the power source. Thermal EOR methods are among the most commonly used recovery methods. They involve the introduction of thermal energy or heat into the reservoir to raise the temperature of the oil and reduce its viscosity. The heat makes the oil mobile and assists in moving it towards the producer wells. The heat can be added externally by injecting a hot fluid such as steam or hot water into the formations, or it can be generated internally through in-situ combustion by burning the oil in depleted gas or waterflooded reservoirs using air or oxygen. This method is an attractive alternative to produce cost-efficiently significant amounts of hydrogen from these depleted or waterflooded reservoirs. A major challenge is to optimize injection of air/oxygen to maximize hydrogen production via ensuring that the in-situ combustion sufficiently supports the breakdown of water into hydrogen molecules. In-situ combustion or fireflood is a method consisting of volumes of air or oxygen injected into a well and ignited. A burning zone is propagated through the reservoir from the injection well to the producing wells. The in-situ combustion creates a bank of steam, gas from the combustion process, and evaporated hydrocarbons that drive the reservoir oil into the producing wells. There are three types of in-situ combustion processes: dry forward, dry reverse and wet forward combustion. In a dry forward process only air is injected and the combustion front moves from the injector to the producer. The wet forward injection is the same process where air and water are injected either simultaneously or alternating. Artificial intelligence (AI) practices have allowed to significantly improve optimization of reservoir production, based on observations in the near wellbore reservoir layers. This work utilizes a data-driven physics-inspired AI model for the optimization of hydrogen recovery via the injection of oxygen, where the injection and production parameters are optimized, minimizing oxygen injection while maximizing hydrogen production and recovery. Multiple physical and data-driven models and their parameters are optimized based on observations with the objective to determine the best sustainable combination. The framework was examined on a synthetic reservoir model with multiple injector and producing wells. Historical injection and production were available for a time period of three years for various oxygen injection and hydrogen production levels. Various time-series deep learning network models were investigated, with random forest time series models incorporating a modified mass balance – reaction kinetics model for in-situ combustion performing most effectively. A robust global optimization approach, based on an artificial intelligence genetic optimization, allows for simultaneously optimization of an injection pattern and uncertainty quantification. Results indicate potential for significant reduction in required oxygen injection volumes, while maximizing hydrogen recovery. This work represents a first and innovative approach to enhance hydrogen recovery from waterflooded reservoirs via oxygen injection. The data-driven physics inspired AI genetic optimization framework allows to optimize oxygen injection while maximizing hydrogen production.
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水淹油气藏产氢优化的数据驱动人工智能框架
氢已经成为一种非常有前途的绿色能源,它可以很容易地储存和运输,并有潜力在各种应用中得到利用。氢作为一种动力源,具有易于运输和长时间储存的优点,并且不会导致与动力源利用相关的任何碳排放。热采收率是最常用的采收率方法之一。它们涉及将热能或热量引入储层以提高油的温度并降低其粘度。热量使石油流动,并有助于将其移动到生产井。热量可以通过向地层中注入热流体(如蒸汽或热水)的方式从外部增加,也可以通过使用空气或氧气燃烧枯竭天然气或水淹油藏中的石油的原位燃烧方式在内部产生。这种方法是一种有吸引力的替代方法,可以从这些枯竭或水淹的储层中经济高效地生产大量氢气。一个主要的挑战是优化空气/氧气的注入,通过确保原位燃烧充分支持水分解成氢分子来最大限度地生产氢气。就地燃烧或灭火是一种将大量空气或氧气注入井中并点燃的方法。从注入井到生产井,燃烧带在整个油藏中蔓延。现场燃烧会产生大量的蒸汽、燃烧过程产生的气体和蒸发的碳氢化合物,这些碳氢化合物将储层油驱入生产井。原位燃烧过程有三种类型:干式正向燃烧、干式反向燃烧和湿式正向燃烧。在干式前进过程中,只注入空气,燃烧前端从喷射器移动到生产者。湿式正向注入与同时或交替注入空气和水的过程相同。基于对近井油藏的观察,人工智能(AI)实践可以显著改善油藏生产的优化。这项工作利用数据驱动的物理启发的人工智能模型,通过注氧优化氢气回收,优化注入和生产参数,最大限度地减少氧气注入,同时最大限度地提高氢气的产量和采收率。多种物理和数据驱动的模型及其参数根据观测结果进行优化,目的是确定最佳的可持续组合。在具有多注井和生产井的合成油藏模型上对该框架进行了验证。对于不同的氧气注入和氢气生产水平,可以获得三年的历史注入和生产数据。研究了各种时间序列深度学习网络模型,其中包含改进的质量平衡-反应动力学模型的随机森林时间序列模型在原位燃烧中表现最有效。基于人工智能遗传优化的鲁棒全局优化方法允许同时优化注入模式和不确定性量化。结果表明,在最大限度地提高氢气回收率的同时,有可能显著减少所需的氧气注入量。这项工作代表了通过注氧提高水淹油藏氢采收率的首个创新方法。数据驱动的物理启发AI遗传优化框架可以优化氧气注入,同时最大化氢气产量。
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