首页> 外文会议>International Conference on Nuclear Engineering >DESIGN OPTIMIZATION OF PERCS IN RELAP5 USING PARALLEL PROCESSING AND A MULTI-OBJECTIVE NON-DOMINATED SORTING GENETIC ALGORITHM
【24h】

DESIGN OPTIMIZATION OF PERCS IN RELAP5 USING PARALLEL PROCESSING AND A MULTI-OBJECTIVE NON-DOMINATED SORTING GENETIC ALGORITHM

机译:用平行处理和多目标非主导分类遗传算法设计RETAP5中PERCS的优化

获取原文

摘要

Multi-objective optimization is a powerful tool that has been successfully applied to many fields but has seen minimal use in the design and development of nuclear power plant systems. When applied to design, multi-objective optimization involves the manipulation of key design parameters in order to develop optimal designs. These design parameters include continuous and/or discrete variables and represent the physical design specifications. They are modified across a specific design space to accomplish a number of set objective functions, representing the goals for both system design and performance, which conflict and cannot be combined into a single objective function. In this paper, a non-dominated sorting genetic algorithm (NSGA) and parallel processing in Python 3 were used to optimize the design of the passive endothermic reaction cooling system (PERCS) model developed in RELAP5/MOD 3.3. This system has been proposed as a retrofit to currently-operating light water reactors (LWR) and is designed to remove decay heat from the reactor core via the endothermic decomposition of magnesium carbonate (MgCO_3) and natural circulation of the reactor coolant. The PERCS design is currently a shell-and-tube heat exchanger, with the coolant flowing through the tube side and MgCO_3 on the shell side. During a station blackout (SBO), the PERCS initially keeps the reactor core outlet temperature from exceeding 635 K and then reduces it to below 620 K for 30 days. The optimization of the PERCS was performed with three different objectives: (1) minimization of equipment costs, (2) minimization of deviation of the core outlet temperature during a SBO from its normal operation steady-state value, and (3) minimization of fractional consumption of MgCO_3, a metric that is measurable and directly related to the operating time of the PERCS. The manipulated parameters of the optimization include the radius of the PERCS shell, the pitch, hydraulic diameter, thickness and length of the PERCS tubes, and the elevation of the PERCS with respect to the reactor core. The NSGA methodology works by creating a population of PERCS options with varying design parameters. Using the evolutionary concepts of selection, reproduction, mutation, and survival of the fittest, the NSGA method repeatedly generates new PERCS options and gets rid of less fit ones. In the end, the result was a Pareto front of PERCS designs, each thermodynamically viable and optimal with respect to the three objectives. The Pareto front of options as a whole represents the optimized trade-off between the objectives.
机译:多目标优化是一种强大的工具,已成功应用于许多领域,但在核电厂系统的设计和开发中已经很少使用。当应用于设计时,多目标优化涉及操纵关键设计参数,以便开发最佳设计。这些设计参数包括连续和/或离散变量,代表物理设计规范。它们在特定的设计空间上被修改,以完成许多设定的目标函数,代表系统设计和性能的目标,这冲突且不能组合成单个目标函数。在本文中,使用非主导的分类遗传算法(NSGA)和Python 3的并行处理来优化Relap5 / Mod 3.3中开发的无源吸热反应冷却系统(PERCS)模型的设计。该系统已经提出为目前操作的轻水反应器(LWR)的改造,并且设计成通过吸热分解碳酸镁(MgCO_3)和反应器冷却剂的自然循环从反应器核中除去腐烂热量。 PERCS设计目前是壳管和管式热交换器,冷却剂流过管侧和壳体侧的MgCO_3。在驻地停电(SBO)期间,PERC最初将反应器核心出口温度保持超过635 k,然后将其降低至低于620k 30天。用三种不同的目标进行PERCS的优化:(1)最小化设备成本,(2)从其正常操作稳态值的SBO期间最小化核心出口温度的偏差,(3)分数最小化MGCO_3的消耗,是可测量的,并且与PERC的操作时间直接相关的度量。优化的操纵参数包括PERCS壳的半径,PERCS管的俯仰,液压直径,厚度和长度,以及相对于反应器芯的PERC的升高。 NSGA方法通过创建具有不同设计参数的Percs选项群体。使用选择,再现,突变和Fittest的生存的进化概念,NSGA方法反复生成新的Percs选项,摆脱更不合适的Percs选项。最后,结果是Percs设计的帕累托前面,每个热力学上可行和相对于三个目标的最佳方式。作为整体的选项前面的帕累托代表了目标之间的优化权衡。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号