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Stochastic optimization of simulated moving bed process Sensitivity analysis for isocratic and gradient operation

机译:等度和梯度操作的模拟移动床过程随机性敏感性分析

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摘要

A random search strategy has been used for designing and optimization of simulated moving bed process (SMB) under isocratic as well as under solvent gradient conditions. The effectiveness of both the process modes has been compared. For predictions of the objective functions, i.e., the minimum of eluent consumption and/or the maximum of the process productivity a mathematical model of the process dynamics has been employed and implemented in the optimization procedure. Four-dimensional space of decision variables corresponding to the flowrates in the SMB zones has been searched in order to find the optimal set of the process parameters. The optimization was constrained to the purity demand in the outlet streams withdrawn in the raffinate and the extract port. The obtained set of random decision variables fulfilling purity constraints was used to construct the operating window of parameters guaranteeing successful separation. For feasible operating points the sensitivity of the purity constraints with respect to the operating parameters has been calculated. The results of calculations indicated that operating conditions, which ensure similar process efficiency, could correspond to different sensitivity of the process constraints. Such an analysis was found to be useful for the selection of process conditions, for which the best trade-off between the process efficiency and its robustness can be achieved. This appears to be particularly important for designing the gradient SMB process, for which robustness of the operating conditions is a factor of a major importance. In order to improve the efficiency of calculations a modification of the original random search procedure based on the Luus-Jaakola algorithm has been proposed.
机译:在等度及溶剂梯度条件下,随机搜索策略已用于设计和优化模拟移动床工艺(SMB)。比较了两种工艺模式的有效性。为了预测目标函数,即最小的洗脱液消耗量和/或最大的过程生产率,已经采用了过程动力学的数学模型并在优化过程中实现了该模型。已搜索与SMB区域中的流量相对应的决策变量的四维空间,以便找到最佳的过程参数集。优化限制在提余液和提取口中排出的出口物流的纯度要求中。将获得的满足纯度约束的随机决策变量集用于构建可确保成功分离的参数的操作窗口。对于可行的工作点,已经计算出纯度限制相对于工作参数的敏感性。计算结果表明,确保相似过程效率的操作条件可能对应于过程约束的不同敏感性。发现这种分析对于选择工艺条件是有用的,为此可以实现工艺效率与其鲁棒性之间的最佳折衷。这对于设计梯度SMB工艺显得尤为重要,对于该工艺而言,操作条件的稳健性是至关重要的因素。为了提高计算效率,提出了一种基于Luus-Jaakola算法的原始随机搜索过程的改进方法。

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