多不确定参数柔性过程综合的鲁棒分解方法——在HEN综合中的应用

IF 1.6 4区 生物学 Q4 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Chemical and Biochemical Engineering Quarterly Pub Date : 2019-01-16 DOI:10.15255/CABEQ.2018.1400
Klavdija Zirngast, Z. Kravanja, Z. N. Pintarič
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引用次数: 5

摘要

这一贡献提出了一种新的鲁棒分解方法,用于生成具有大量不确定参数的最优柔性工艺流程图。在初始步骤中,通过在标称条件下对流程图进行混合整数非线性规划(MINLP)合成来确定第一阶段变量,然后将获得的流程图依次暴露在一组参数不确定的极端MINLP场景中。因此,流程图单元的大小逐渐增加,和/或增加新的单元,直到达到所需的可行性。在测试了所获得的设计的灵活性后,采用抽样方法对第二阶段变量进行蒙特卡罗随机优化,以获得期望目标变量的最优值。所提出的方法的优点是过程模型大小与不确定参数的数量无关,直接使用确定性模型来纳入不确定性,以及相对简单地执行不确定条件下过程的MINLP综合。因此,它可以用于设计具有大量不确定参数的大型过程。以柔性换热器网络的综合为例说明了该方法。
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A Robust Decomposition Methodology for Synthesis of Flexible Processes with Many Uncertainty Parameters – Application to HEN Synthesis
This contribution presents a new robust decomposition methodology for generating optimal flexible process flow sheets with a large number of uncertain parameters. During the initial steps, first-stage variables are determined by performing mixed-integer nonlinear programming (MINLP) synthesis of a flow sheet at the nominal conditions, and then by exposing the obtained flow sheet sequentially over a set of extreme MINLP scenarios of uncertain parameters. As a result, the sizes of the flow-sheet units gradually increase, and/or new units are added until the required feasibility is achieved. After testing the flexibility of the obtained design, a Monte Carlo stochastic optimization of the second-stage variables is performed using a sampling method in order to obtain an optimum value of the expected objective variable. The advantages of the proposed methodology are the independence of process model sizes from the number of uncertain parameters, the straightforward use of deterministic models for incorporating uncertainty, and relatively simple execution of MINLP synthesis of processes under uncertainty. Thus, it could be used for designing large processes with a large number of uncertain parameters. The methodology is illustrated by synthesis of a flexible Heat Exchanger Network.
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来源期刊
Chemical and Biochemical Engineering Quarterly
Chemical and Biochemical Engineering Quarterly 工程技术-工程:化工
CiteScore
2.70
自引率
6.70%
发文量
23
审稿时长
>12 weeks
期刊介绍: The journal provides an international forum for presentation of original papers, reviews and discussions on the latest developments in chemical and biochemical engineering. The scope of the journal is wide and no limitation except relevance to chemical and biochemical engineering is required. The criteria for the acceptance of papers are originality, quality of work and clarity of style. All papers are subject to reviewing by at least two international experts (blind peer review). The language of the journal is English. Final versions of the manuscripts are subject to metric (SI units and IUPAC recommendations) and English language reviewing. Editor and Editorial board make the final decision about acceptance of a manuscript. Page charges are excluded.
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