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首页> 外文期刊>Journal of Cleaner Production >Energetic, economic and environmental (3E) multi-objective optimization of the back-end separation of ethylene plant based on adaptive surrogate model
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Energetic, economic and environmental (3E) multi-objective optimization of the back-end separation of ethylene plant based on adaptive surrogate model

机译:精力充沛,经济和环境(3E)基于自适应替代模型的乙烯植物后端分离的多目标优化

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摘要

Ethylene separation is an important part in olefin production process, but it brings about high energy consumption and emissions. Therefore, the energetic, economic and environmental (3E) multi-objective optimization of ethylene separation process is of great significance for the sustainable development of olefin industry. Regarding the high computation cost of conventional optimization approach based on process simulation model, a novel optimization framework named multi-objective adaptive surrogate model assisted optimization (MOASO) is introduced. In this framework, adaptive sampling based on sparsity and IGGD improvement is proposed, aiming at promoting the accuracy of surrogate model successively as optimization proceeds. In addition, a modified non-dominant sorting genetic algorithm-II (NSGAII) embedding a density-based local search operator is developed for evolutionary optimization. The MOASO is applied to typical test functions and a practical ethylene separation process. The results show that the proposed framework has highly acceptable optimization performance and computational efficiency, reducing 72% of the calculation burden. Compared with the actual operating condition, the energy consumption and CO2 emission can be reduced by 3.5 x 104 GJ/year and 3.81 x 105 kg/year while increasing the annual gross profit by 4.36 x 105 $/year under a typical optimized condition. In general, the proposed framework can be used as an effective tool for multi-objective optimization, from which insights for clean production and sustainable development in complex large-scale chemical processes could be gained.
机译:乙烯分离是烯烃生产过程中的重要组成部分,但它带来了高能耗和排放。因此,乙烯分离过程的能量,经济和环境(3E)多目标优化对于烯烃工业的可持续发展具有重要意义。关于基于过程仿真模型的传统优化方法的高计算成本,介绍了一种名为多目标自适应替代模型辅助优化(Moaso)的新型优化框架。在该框架中,提出了基于稀疏性和IGGD改进的自适应采样,旨在通过优化进行,促进替代模型的准确性。此外,为进化优化开发了嵌入基于密度的本地搜索操作员的修改的非显着分类遗传算法-II(NSGaii)。 Moaso应用于典型的测试功能和实际的乙烯分离过程。结果表明,该框架具有高度可接受的优化性能和计算效率,降低了计算负担的72%。与实际操作条件相比,能源消耗和二氧化碳排放量可减少3.5 x 104 GJ /年,3.81 x 105公斤/年,同时在典型的优化条件下将年度毛利增加4.36 x 105美元/年。通常,所提出的框架可用作多目标优化的有效工具,可以获得复杂大规模化学过程中清洁生产和可持续发展的洞察力。

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