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DESIGN OPTIMIZATION OF REVERSE OSMOSIS WATER DESALINATION SYSTEMS VIA GENETIC ALGORITHMS

机译:通过遗传算法设计反渗透水脱盐系统的设计优化

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This paper explores the application of genetic algorithms (GA) for optimal design of reverse osmosis (RO) water desalination systems. While RO desalination is among the most cost and energy efficient methods for water desalination, optimal design of such systems is rarely an easy task. In these systems, salty water is made to flow at high pressure through vessels that contain semi-permeable membrane modules. The membranes can allow water to flow through, but prohibit the passage of salt ions. When the pressure is sufficiently high, water molecules will flow through the membranes leaving the salt ions behind and are collected in a fresh water stream. Typical system design variables for RO systems include the number and layout of the vessels and membrane modules, as well as the operating pressure and flow rate. This paper explores models for single and two-stage RO pressure vessel configurations. The number and layout of the vessels and membrane modules are regarded as discrete variables, while the operating pressures and flow rate are regarded as continuous variables. GA is applied to optimize the models for minimum overall cost of unit produced fresh water. Case studies are considered for four different water salinity concentration levels. In each of the studies, three different types of crossover are explored in the GA. While all the studied crossover types yielded satisfactory results, the crossover types that attempt to exploit design variable continuity performed slightly better, even for the discrete variables of this problem.
机译:本文探讨了遗传算法(GA)对反渗透(RO)水脱盐系统的最佳设计的应用。虽然RO脱盐是水脱盐的最具成本和节能的方法之一,但这种系统的最佳设计很少是一项简单的任务。在这些系统中,使咸水通过含有半透膜模块的容器在高压下流动。膜可以让水流过,但禁止通过盐离子。当压力足够高,水分子将流过膜,使盐离子在后面并被收集在淡水流中。 RO系统的典型系统设计变量包括血管和膜模块的数量和布局,以及操作压力和流速。本文探讨了单级和两级RO压力容器配置的模型。血管和膜模块的数量和布局被认为是离散变量,而操作压力和流速被认为是连续变量。 GA适用于优化模型,以实现单位生产淡水的最小总成本。案例研究被认为是四种不同的水盐度浓度水平。在每个研究中,在GA中探讨了三种不同类型的交叉。虽然所有研究的交叉类型产生令人满意的结果,但是尝试利用设计变量连续性的交叉类型稍微更好地执行,即使对于这个问题的离散变量也是如此。

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