Mechanistic Optimization of Commercial Gas Dehydration and Natural Gas Liquids Recovery Units

Satyadileep Dara, Yasser Alwahedi, A. Berrouk, S. Leyland, A. S. E. Nasr, I. Khan, F. Geuzebroek
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Abstract

This study aims at high-fidelity modeling and mechanistic optimization of gas dehydration and NGL (Natural Gas Liquids) systems of a commercial natural gas plant based in Abu Dhabi, UAE. Scope of the work includes development of models, validation of models with plant data, optimization analysis and real-time validation at the plant site. In this work, we developed a dynamic model for the gas dehydration system and a steady state model for the natural gas liquids recovery unit. An advanced process simulator that follows equation-oriented approach is employed as the modelling and optimization platform. We first show the comprehensive plant data reconciliation followed by the model validation using the operating data of the years 2016 and 2018, to ensure that the model predictions match the real plant operation. We then present how the mechanistic optimization entity result in the best operating conditions for the natural gas liquids recovery system. We also show the optimization analysis that aims at maximizing the adsorption cycle time for the dehydration unit while minimizing the total heating duty required for the regeneration of the molecular sieve beds. Optimization analysis reveals a significant increase in the annual net revenue of natural gas liquid recovery unit as a result of modifying various process operating conditions that lead to higher liquid hydrocarbon production and lower operating costs related to steam and refrigeration. Similarly, optimization analysis of the dehydration system indicates that adsorption-step time can be increased to a higher value, which results in significant reduction of regeneration costs. As a next step, we aim to carry out the validation tests on the plant site to verify and implement the model recommendations in the real plant to verify the model recommendations. We also plan to derive the set of operating guidelines that allow the operators to drive the plant towards optimal operation.
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工业天然气脱水和天然气液回收装置的机理优化
本研究旨在对位于阿联酋阿布扎比的一家商业天然气厂的天然气脱水和NGL(天然气液体)系统进行高保真建模和机制优化。工作范围包括开发模型,用工厂数据验证模型,优化分析和在工厂现场进行实时验证。在这项工作中,我们建立了天然气脱水系统的动态模型和天然气液体回收装置的稳态模型。采用一种先进的过程模拟器,采用面向方程的方法作为建模和优化平台。我们首先展示了全面的工厂数据对账,然后使用2016年和2018年的运行数据进行模型验证,以确保模型预测与实际工厂运行相匹配。然后,我们介绍了机制优化实体如何导致天然气液体回收系统的最佳操作条件。我们还展示了优化分析,旨在最大化脱水装置的吸附循环时间,同时最小化分子筛床再生所需的总加热负荷。优化分析表明,由于改进了各种工艺操作条件,提高了液态烃产量,降低了与蒸汽和制冷相关的操作成本,天然气液体回收装置的年净收入显著增加。同样,对脱水系统的优化分析表明,可以将吸附步长增加到更高的值,从而显著降低再生成本。下一步,我们的目标是在工厂现场进行验证测试,在实际工厂中验证和实施模型建议,以验证模型建议。我们还计划推导出一套操作指导方针,使操作员能够将工厂推向最佳运行状态。
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