A probabilistic model-based approach to assess and minimize scaling in geothermal plants

IF 2.9 2区 地球科学 Q3 ENERGY & FUELS
Pejman Shoeibi Omrani, Jonah Poort, Eduardo G. D. Barros, Hidde de Zwart, Cintia Gonçalves Machado, Laura Wasch, Aris Twerda, Huub H. M. Rijnaarts, Shahab Shariat Torbaghan
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引用次数: 0

Abstract

Geothermal installations often face operational challenges related to scaling which can lead to loss in production, downtime, and an increase in operational costs. To accurately assess and minimize the risks associated with scaling, it is crucial to understand the interplay between geothermal brine composition, operating conditions, and pipe materials. The accuracy of scaling predictive models can be impacted by uncertainties in the brine composition, stemming from sub-optimal sampling of geothermal fluid, inhibitor addition, or measurement imprecision. These uncertainties can be further increased for fluid at extreme conditions especially high salinity and temperature. This paper describes a comprehensive method to determine operational control strategies to minimize the scaling considering brine composition uncertainties. The proposed modelling framework to demonstrate the optimization under uncertainty workflow consists of a multiphase flow solver coupled with a geochemistry model and an uncertainty quantification workflow to locally estimate the probability of precipitation potential, including its impact on the hydraulic efficiency of the geothermal plant by increasing the roughness and/or decreasing the diameter of the casings and pipelines. For plant operation optimization, a robust control problem is formulated with scenarios which are generated based on uncertainties in brine composition using an exhaustive search method. The modelling and optimization workflow was demonstrated in a geothermal case study dealing with barite and celestite scaling in a heat exchanger. The results showed the additional insights in the potential impact of brine composition uncertainties (aleatoric uncertainties) in scaling potential and precipitation location. Comparing the outcome of optimization problem for the deterministic and fluid composition uncertainties, a change of up to 2.5% in the temperature control settings was observed to achieve the optimal coefficient of performance.

一种基于概率模型的方法来评估和最小化地热发电厂的结垢
地热设施通常面临着与规模相关的运营挑战,这可能导致生产损失、停机时间和运营成本的增加。为了准确评估和降低结垢风险,了解地热盐水成分、操作条件和管道材料之间的相互作用至关重要。由于地热流体取样不理想、抑制剂添加或测量不精确,盐水成分的不确定性会影响标度预测模型的准确性。对于极端条件下的流体,特别是高盐度和高温度的流体,这些不确定性可能会进一步增加。本文描述了一种综合的方法来确定操作控制策略,以最大限度地减少卤水成分的不确定性。为了演示不确定工作流下的优化,所提出的建模框架包括一个多相流求解器和一个地球化学模型,以及一个不确定性量化工作流,用于局部估计降水潜力的概率,包括其通过增加粗糙度和/或减小套管和管道直径对地热发电厂水力效率的影响。针对电厂运行优化问题,采用穷举搜索方法,建立了基于卤水成分不确定性的鲁棒控制问题。在换热器中重晶石和天青石结垢的地热案例研究中,演示了建模和优化工作流程。结果显示了盐水组成不确定性(任意不确定性)对结垢势和沉淀位置的潜在影响的额外见解。将确定性和流体成分不确定性优化问题的结果进行比较,可以观察到温度控制设置的变化高达2.5%,以达到最佳性能系数。
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来源期刊
Geothermal Energy
Geothermal Energy Earth and Planetary Sciences-Geotechnical Engineering and Engineering Geology
CiteScore
5.90
自引率
7.10%
发文量
25
审稿时长
8 weeks
期刊介绍: Geothermal Energy is a peer-reviewed fully open access journal published under the SpringerOpen brand. It focuses on fundamental and applied research needed to deploy technologies for developing and integrating geothermal energy as one key element in the future energy portfolio. Contributions include geological, geophysical, and geochemical studies; exploration of geothermal fields; reservoir characterization and modeling; development of productivity-enhancing methods; and approaches to achieve robust and economic plant operation. Geothermal Energy serves to examine the interaction of individual system components while taking the whole process into account, from the development of the reservoir to the economic provision of geothermal energy.
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