Unlocking optimal performance and flow level control of three-phase separator based on reinforcement learning: A case study in Basra refinery

IF 5.1 3区 工程技术 Q2 ENERGY & FUELS Thermal Science and Engineering Progress Pub Date : 2024-09-07 DOI:10.1016/j.tsep.2024.102885
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Abstract

This research explores the application of a new reinforcement learning (RL-based) controller for a three-phase separator connected to a gas turbine. The control of flow levels within the separator directly impacts fluid flow turbulence, especially when the equipment is linked to waste heat gas from the turbine to improve gas quality. The study introduces the novel RL-based controller and validates its effectiveness in real-world conditions using three-phase separators in Basra, Iraq, and through a review of relevant literature. The controller can adapt to inlet conditions such as pressure, temperature, mass flow rate, and incoming heat from the gas turbine. Waste heat recovery from the gas can enhance gas purity but also increase turbulence in water and oil. Maintaining a calm flow while ensuring high-speed flow over the baffle in the middle of the separator is crucial for optimal performance. The study considers two geometrical configurations of the vessel for redesigning the separator at the Basra refinery. The controller was implemented using the groovyBC utility within the OpenFOAM software. This model was then utilized to simulate real-world scenarios at the Basra refinery, displaying faster convergence, more rapid response, and more accurate tracking of the target fluid level. This study marks the initial effort to apply the deep deterministic policy gradient (DDPG) controller in computational fluid dynamic (CFD) work. The findings demonstrated a significant enhancement in separation efficiency by more than 36%, as well as smoother streamlines through the control and maintenance of pressure and velocity over the baffle.

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基于强化学习的三相分离器优化性能和流量控制:巴士拉炼油厂案例研究
本研究探讨了一种新的基于强化学习(RL)的控制器在与燃气轮机相连的三相分离器中的应用。分离器内的流量控制会直接影响流体的湍流,尤其是当设备与涡轮机的废热气体相连以改善气体质量时。本研究介绍了基于 RL 的新型控制器,并通过在伊拉克巴士拉使用三相分离器和查阅相关文献,验证了该控制器在实际条件下的有效性。该控制器可适应压力、温度、质量流量和燃气轮机输入热量等入口条件。从气体中回收余热可以提高气体纯度,但也会增加水和油的湍流。在确保高速流过分离器中间挡板的同时,保持平稳的气流对于实现最佳性能至关重要。研究考虑了两种容器的几何配置,以重新设计巴士拉炼油厂的分离器。控制器是通过 OpenFOAM 软件中的 groovyBC 工具实现的。然后利用该模型模拟了巴士拉炼油厂的实际情况,结果显示收敛速度更快、响应更迅速、目标液位跟踪更准确。这项研究标志着在计算流体力学(CFD)工作中应用深度确定性策略梯度(DDPG)控制器的初步尝试。研究结果表明,通过控制和保持挡板上的压力和速度,分离效率显著提高了 36% 以上,流线也更加平滑。
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来源期刊
Thermal Science and Engineering Progress
Thermal Science and Engineering Progress Chemical Engineering-Fluid Flow and Transfer Processes
CiteScore
7.20
自引率
10.40%
发文量
327
审稿时长
41 days
期刊介绍: Thermal Science and Engineering Progress (TSEP) publishes original, high-quality research articles that span activities ranging from fundamental scientific research and discussion of the more controversial thermodynamic theories, to developments in thermal engineering that are in many instances examples of the way scientists and engineers are addressing the challenges facing a growing population – smart cities and global warming – maximising thermodynamic efficiencies and minimising all heat losses. It is intended that these will be of current relevance and interest to industry, academia and other practitioners. It is evident that many specialised journals in thermal and, to some extent, in fluid disciplines tend to focus on topics that can be classified as fundamental in nature, or are ‘applied’ and near-market. Thermal Science and Engineering Progress will bridge the gap between these two areas, allowing authors to make an easy choice, should they or a journal editor feel that their papers are ‘out of scope’ when considering other journals. The range of topics covered by Thermal Science and Engineering Progress addresses the rapid rate of development being made in thermal transfer processes as they affect traditional fields, and important growth in the topical research areas of aerospace, thermal biological and medical systems, electronics and nano-technologies, renewable energy systems, food production (including agriculture), and the need to minimise man-made thermal impacts on climate change. Review articles on appropriate topics for TSEP are encouraged, although until TSEP is fully established, these will be limited in number. Before submitting such articles, please contact one of the Editors, or a member of the Editorial Advisory Board with an outline of your proposal and your expertise in the area of your review.
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