Cooperative Design and Optimization of Reactor Coolant System Piping Supports Under Static and Dynamical Load Conditions

F. Xiong, Bin Lan
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引用次数: 1

Abstract

The main pipes of reactor coolant systems (RCS) are usually long flexible structures that are connected to multiple key equipment and components of the nuclear system (e.g., reactor pressure vessel, steam generator, main pump, etc.). Mechanical analysis of pipe responses at key elbows and weld seams under static and dynamical load conditions is an essential step to ensure safety and reliability of the whole RCS. Common practice to keep the structural integrity of RCS piping under dynamical load (seismic or shock load) is to impose supporting devices at various locations so that the stiffness at weak spots can be improved. Nevertheless, the introduction of supporting devices, especially the mechanical stops, may cause significant increase of thermal stress due to the block of thermal expansion path of the piping. Hence, cooperative design and optimization of RCS piping supports by jointly considering the piping responses under static and dynamical load cases becomes quite a necessity. In this paper, such an optimal design task is formulated as a multi-objective optimization problem (MOP) with the stress level at key elbows and weld seams of the main pipes as objectives; and various parameters of each supporting device as design variables. The key feature of such MOP is that the number of design variables is unknown in prior. A single support sampling strategy is first proposed to observe the influence of one supporting device. Clustering algorithms are then applied to discover patterns from the single support sampling pool. A 3-snubber-3-stop main pipe support layout is determined via unsupervised clustering algorithms. We perform the surrogatemodel based parameter optimization once the optimization framework is fixed. Simulation results of the optimal piping support design show good satisfactions of stress level according to ASME boiler and pressure vessel code (BPVC) under both static and dynamical load cases. The data-driven design and optimization procedures presented in this paper suit the optimal design with conflicting objectives and unclear number of design variables.
静、动负荷条件下反应堆冷却剂系统管道支撑协同设计与优化
反应堆冷却剂系统(RCS)的主管道通常是长柔性结构,连接核系统的多个关键设备和部件(如反应堆压力容器、蒸汽发生器、主泵等)。静、动载荷作用下关键弯头和焊缝的力学响应分析是保证整个RCS安全可靠运行的重要环节。在动力载荷(地震或冲击载荷)作用下保持RCS管道结构完整性的常用方法是在不同位置加装支撑装置,以提高薄弱处的刚度。然而,在引入支撑装置,特别是机械止动装置后,由于管道热膨胀路径被阻断,热应力可能会显著增加。因此,综合考虑管道在静、动荷载作用下的响应,对RCS管道支架进行协同设计与优化是十分必要的。本文将该优化设计任务表述为以主管道关键弯头和焊缝应力水平为目标的多目标优化问题(MOP);并将各支承装置的各项参数作为设计变量。这种MOP的主要特点是设计变量的数量是事先未知的。首先提出了单支撑采样策略,以观察单个支撑装置的影响。然后应用聚类算法从单个支持采样池中发现模式。通过无监督聚类算法确定3-缓冲器-3-停止主支撑布局。在优化框架确定后,进行基于代理模型的参数优化。仿真结果表明,在静、动载荷工况下,管道支架优化设计均能满足ASME锅炉压力容器规范(BPVC)规定的应力水平要求。本文提出的数据驱动设计和优化程序适用于目标冲突和设计变量数量不明确的优化设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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