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A class-based search for the in-core fuel management optimization of a pressurized water reactor

机译:基于类的压水堆堆芯燃料管理优化搜索

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The In-Core Fuel Management Optimization (ICFMO) is a prominent problem in nuclear engineering, with high complexity and studied for more than 40 years. Besides manual optimization and knowledge-based methods, optimization metaheuristics such as Genetic Algorithms, Ant Colony Optimization and Particle Swarm Optimization have yielded outstanding results for the ICFMO. In the present article, the Class-Based Search (CBS) is presented for application to the ICFMO. It is a novel metaheuristic approach that performs the search based on the main nuclear characteristics of the fuel assemblies, such as reactivity. The CBS is then compared to the one of the state-of-art algorithms applied to the ICFMO, the Particle Swarm Optimization. Experiments were performed for the optimization of Angra 1 Nuclear Power Plant, located at the Southeast of Brazil. The CBS presented noticeable performance, providing Loading Patterns that yield a higher average of Effective Full Power Days in the simulation of Angra 1 NPP operation, according to our methodology.
机译:核内燃料管理优化(ICFMO)是核工程中的一个突出问题,具有很高的复杂性,并且研究了40多年。除了手动优化和基于知识的方法,优化元启发式算法(如遗传算法,蚁群优化和粒子群优化)为ICFMO产生了出色的结果。在本文中,提出了基于类别的搜索(CBS)以应用于ICFMO。这是一种新颖的超启发式方法,它基于燃料组件的主要核特性(例如反应性)执行搜索。然后将CBS与应用于ICFMO的最新算法之一(粒子群优化)进行比较。为优化位于巴西东南部的Angra 1核电站进行了实验。根据我们的方法,CBS表现出显着的性能,提供了在模拟Angra 1 NPP运行时产生更高平均有效满功率日的负载模式。

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