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Optimization of a novel liquefaction process based on Joule-Thomson cycle utilizing high-pressure natural gas exergy by genetic algorithm

机译:利用遗传算法优化基于焦耳-汤姆森循环的利用高压天然气的液化新工艺

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摘要

A novel liquefaction process based on Joule Thomson cycle utilizing high-pressure natural gas exergy is specifically proposed and presented in this paper. Thermodynamic and economic optimization of the novel process are performed with the genetic algorithm (GA) in Microsoft Excel VBA connecting Aspen HYSYS. Five different objective functions are selected: minimization of specific energy consumption (SEC), total cost investment (TCI), specific operation cost (SOPEX), total annualized cost (TAC) and maximization of exergy efficiency. The specific energy consumption objective function is equivalent to exergy efficiency, SOPEX, TAC objective functions. Compared to T CI objective function, the other four objective functions can result in an about 49% reduction of SEC, an about 99% increase of exergy efficiency, an about 2% reduction of SOPEX and an about 2.8% reduction of TAC, but an about 95% increase of TCI. The results show that any of SEC, exergy efficiency, SOPEX and TCI objective functions is more suitable for the optimization of this process. Finally, the exergy analysis of each component is given. It can be found that compressors and water coolers produce the highest exergy losses for the equivalent objective functions. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本文提出并提出了一种基于焦耳汤姆逊循环的利用高压天然气的火化新工艺。通过连接Aspen HYSYS的Microsoft Excel VBA中的遗传算法(GA),可以对新工艺进行热力学和经济优化。选择了五个不同的目标函数:最小化单位能耗(SEC),总成本投资(TCI),特定运营成本(SOPEX),总年度成本(TAC)和最大火用效率。单位能耗目标函数等效于火用效率,SOPEX,TAC目标函数。与T CI目标函数相比,其他四个目标函数可以使SEC降低约49%,用能效率提高约99%,SOPEX降低约2%,TAC降低约2.8%。 TCI增加约95%。结果表明,SEC,火用效率,SOPEX和TCI目标函数中的任何一个都更适合此过程的优化。最后,给出了每种成分的火用分析。可以发现,对于同等的目标函数,压缩机和水冷却器产生的最大火用损失。 (C)2018 Elsevier Ltd.保留所有权利。

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