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Multiobjective optimization for multiproduct batch plant design under economic and environmental considerations

机译:考虑经济和环境因素的多产品批处理工厂设计的多目标优化

摘要

This work deals with the multicriteria cost–environment design of multiproduct batch plants, where the design variables are the size of the equipment items as well as the operating conditions. The case study is a multiproduct batch plant for the production of four recombinant proteins.udGiven the important combinatorial aspect of the problem, the approach used consists in coupling a stochastic algorithm, indeed a genetic algorithm (GA) with a discrete-event simulator (DES). Another incentive to use this kind of optimization method is that, there is no easy way of calculating derivatives of the objective functions, which then discards gradient optimization methods. To take into account the conflicting situations that may beudencountered at the earliest stage of batch plant design, i.e. compromise situations between cost and environmental consideration, a multiobjective genetic algorithm (MOGA) was developed with a Pareto optimal ranking method. The results show how the methodology can be used to find audrange of trade-off solutions for optimizing batch plant design.
机译:这项工作涉及多产品批处理厂的多标准成本环境设计,其中设计变量是设备项目的大小以及操作条件。案例研究是一种用于生产四种重组蛋白的多产品批处理工厂。 ud鉴于该问题的重要组合方面,所使用的方法包括将随机算法,实际上是遗传算法(GA)与离散事件模拟器( DES)。使用这种优化方法的另一个诱因是,没有简单的方法可以计算目标函数的导数,从而无法使用梯度优化方法。考虑到在批工厂设计的最早阶段可能会遇到的冲突情况,即在成本和环境考虑之间的折衷情况,开发了一种采用帕累托最优排序方法的多目标遗传算法(MOGA)。结果表明如何使用该方法来找到用于优化批量工厂设计的权衡解决方案的范围。

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