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Integration of crude-oil scheduling and refinery planning by Lagrangean Decomposition

机译:荷兰语分解的原油调度与炼油厂规划的整合

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摘要

In this work, a Mixed-Integer Nonlinear Programming (MINLP) modeling framework for integrating short-term Crude-oil Scheduling (CS) and mid-term Refinery Planning (RP) has been developed and effectively solved by a proposed Lagrangean Decomposition (LD) algorithm. The principles of this integration are based on the fact that both Crude-oil Scheduling and Refinery Planning have their economic net values as their objectives, and that they are physically linked by Crude Distillation Units (CDUs). A multi-scale approach is proposed in the framework to aggregate continuous- and discrete-time formulations in CS and RP, respectively. Compared to hierarchically solving the non-integrated CS and RP, computational results show significant improvement regarding the economic objective values. Moreover, the proposed LD approach requires less CPU time converging to a small (1%-5%) optimality gap when compared to the monolithic approach using state-of-the-art MINLP solvers.
机译:在这项工作中,通过提出的拉格朗日分解(LD)开发并有效地解决了用于整合短期原油调度(CS)和中期炼油厂规划(RP)的混合整数非线性编程(MINLP)建模框架算法。这种整合的原则基于原油调度和炼油厂规划的事实是他们的经济净值作为其目标,并且它们与原油蒸馏单位(CDU)物理相关。在框架中提出了一种多种方法,分别在CS和RP中聚合连续和离散时间制剂。与分层求解非集成CS和RP相比,计算结果显示有关经济目标值的显着改善。此外,与使用最先进的MINLP溶剂的单片方法相比,所提出的LD方法需要较少的CPU时间会聚到小(1%-5%)的最优性间隙。

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  • 来源
    《Computers & Chemical Engineering》 |2020年第jul12期|106812.1-106812.17|共17页
  • 作者单位

    Department of Chemical Engineering Carnegie Mellon University Pittsburgh PA 15213 USA;

    Department of Chemical Engineering Carnegie Mellon University Pittsburgh PA 15213 USA;

    Department of Chemical Engineering Universidade de Sao Paulo Sao Paulo SP 05508-010 Brazil;

    Optimization and Analytics Lab SK Innovation Seoul 110-728 South Korea;

    Optimization and Analytics Lab SK Innovation Seoul 110-728 South Korea;

    Optimization and Analytics Lab SK Innovation Seoul 110-728 South Korea;

    Department of Chemical Engineering Carnegie Mellon University Pittsburgh PA 15213 USA;

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