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The Development of a Synthesis Approach for Optimal Design of Seawater Reverse Osmosis Desalination Networks

机译:海水反渗透海水淡化网络优化设计综合方法的发展

摘要

This work introduces a systematic seawater reverse osmosis (SWRO) membrane network synthesis approach, based on the coordinated use of process superstructure representations and global optimization. The approach makes use of superstructure formulations that are capable of extracting a globally optimal design as a performance target, by taking into consideration desired process conditions and constraints that are typically associated with reverse osmosis systems. Thermodynamic insights are employed to develop lean network representations so that any underperforming solutions can be eliminated a priori. This essentially results in considerable improvement of the overall search speed, compared to previously reported attempts. In addition, the approach enables the extraction of structurally different design alternatives. In doing so, distinct membrane network design classes were established by partitioning the search space, based on network size and connectivity. As a result, corresponding lean superstructures were then systematically generated, which capture all structural and operational variants within each design class. The overall purpose is thus to enable the extraction of multiple distinct optimal designs, through global optimization. This mainly helps provide design engineers with a better understanding of the design space and trade-offs between performance and complexity.The approach is illustrated by means of a numerical example, and the results obtained were compared to previously related work. As anticipated, the proposed approach consistently delivered the globally optimal solutions, as well as alternative efficient design candidates attributed to different design classes, with reduced CPU times.This work further capitalizes on the developed representation, by accounting for detailed water quality information, within the SWRO desalination network optimization problem. The superstructures were modified to incorporate models that capture the performance of common membrane elements, as predicted by commercially available simulator tools, e.g. ROSA (Dow) and IMSDesign (Hydranautics). These models allow tracing of individual components throughout the system. Design decisions that are supported by superstructure optimization include network size and connectivity, flow rates, pressures, and post treatment requirements. Moreover, a detailed economic assessment capturing all the significant capital and operating costs associated in SWRO processes, including intake, pre and post treatment has also been accounted for. These modifications were then illustrated using a case study involving four seawater qualities, with salinities ranging from 35 to 45 ppt. The results highlight the dependency of optimal designs on the feed water quality involved, as well as on specified permeate requirements.
机译:在协同使用过程上层结构表示法和全局优化的基础上,这项工作介绍了系统的海水反渗透(SWRO)膜网络综合方法。通过考虑所需的工艺条件和通常与反渗透系统相关的约束条件,该方法利用了能够提取全局最佳设计作为性能目标的上部结构配方。利用热力学见解来开发精益网络表示,以便可以事先消除任何性能不佳的解决方案。与先前报告的尝试相比,这实质上导致整体搜索速度的显着提高。另外,该方法能够提取结构上不同的设计替代方案。通过这样做,基于网络大小和连接性,通过划分搜索空间来建立不同的膜网络设计类。结果,系统地生成了相应的精益上层建筑,这些上层建筑捕获了每个设计类别内的所有结构和操作变型。因此,总体目的是能够通过全局优化来提取多个不同的最佳设计。这主要是帮助设计工程师更好地了解设计空间以及性能和复杂性之间的权衡取舍。通过一个数字示例说明了该方法,并将获得的结果与以前的相关工作进行了比较。如预期的那样,该提议的方法始终如一地提供了全球最佳解决方案以及归因于不同设计类别的替代高效设计候选方案,同时减少了CPU时间。这项工作通过考虑详细的水质信息,进一步利用了已开发的表示形式。 SWRO海水淡化网络优化问题。修改了上部结构,以合并捕获常见膜元件性能的模型,这是通过商用模拟器工具(例如ROSA(Dow)和IMSDesign(Hydranautics)。这些模型允许跟踪整个系统中的各个组件。上层结构优化支持的设计决策包括网络大小和连通性,流速,压力和后处理要求。此外,还进行了详细的经济评估,涵盖了SWRO过程中所有相关的重大资本和运营成本,包括进水,预处理和后处理。然后通过案例研究说明了这些修改,其中涉及四种海水质量,盐度范围为35至45 ppt。结果表明,最佳设计取决于所涉及的给水水质以及特定的渗透物要求。

著录项

  • 作者

    Alnouri Sabla;

  • 作者单位
  • 年度 2012
  • 总页数
  • 原文格式 PDF
  • 正文语种 en_US
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