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Modified coordinate descent methodology for solving process design optimization problems: Application to natural gas plant

机译:解决工艺设计优化问题的改进协调下降法:在天然气厂中的应用

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A modified form of Coordinate Descent methodology (MCD) is presented for solving process optimization problems. The modifications made to the conventional coordinate descent algorithm include search initialization inspired by a pattern search, sequential coordinate randomization for exploring search space and box search for refining of local optimum. The performance of the proposed MCD methodology was examined on benchmark mathematical test problems. After successful convergence of the test problems in reasonable time the MCD algorithm was exploited for the optimization of Natural gas (NG) liquefaction process plant developed in a commercial simulator. The newly developed Korea Single Mixed Refrigerant (KSMR) process was optimized for compression energy demand which is a strong function of refrigerant composition and its operating pressures. MCD was successful in finding the optimum refrigerant composition and operating pressures levels that results in energy savings of 40% and 11% compared with the representative base cases. The suitability of MCD algorithm for NG process plant was further demonstrated by comparing the results of KSMR process with PSO and NSGA-II algorithm. The comparison results demonstrate a nominal improvement in terms of energy savings however the calculation time and ease of implementation and independence of MCD on parameters give it clear advantage. Thus is suitable for solving process design optimization problems particularly related NG plant. (C) 2014 Elsevier B.V. All rights reserved.
机译:提出了一种改进形式的协调下降方法(MCD),用于解决工艺优化问题。对常规坐标下降算法的修改包括:受模式搜索启发的搜索初始化,用于探索搜索空间的顺序坐标随机化以及用于优化局部最优的盒搜索。在基准数学测试问题上检查了所提出的MCD方法论的性能。在合理的时间内成功解决了测试问题后,MCD算法被用于优化在商用模拟器中开发的天然气(NG)液化过程工厂。新开发的韩国单一混合制冷剂(KSMR)工艺针对压缩能量需求进行了优化,压缩能量需求是制冷剂成分及其运行压力的重要函数。 MCD成功地找到了最佳的制冷剂成分和工作压力水平,与典型的基础案例相比,节能了40%和11%。通过将KSMR处理结果与PSO和NSGA-II算法进行比较,进一步证明了MCD算法在天然气加工厂中的适用性。比较结果证明了在节能方面的名义上的改进,但是MCD的计算时间,易于实施和独立性使其具有明显的优势。因此适合解决工艺设计优化问题,尤其是相关的天然气厂。 (C)2014 Elsevier B.V.保留所有权利。

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