论文标题
取消区域体重的无偏见和优化
Unbiasedness and Optimization of Regional Weight Cancellation
论文作者
论文摘要
蒙特卡洛方法通常用于模拟可以通过随机步行建模的系统。为了计算可观察到的物品,在许多实现中,“步行者”具有统计权重,通常假定为正。但是,一些随机的步行模拟可能要求步行者具有正权重或负重:已经表明,正面和负权重的混合物的存在可能会阻碍统计收敛,并且必须采用特殊的重量融合技术以克服这些问题。在最近的一项工作中,我们证明了一种这样的方法,即确切的区域重量取消,以解决三个空间维度中核反应堆物理学中的特征值问题。以前显示的方法有几个局限性(包括多组运输和各向同性散射)和所需的均质立方取消区域。在本文中,我们取消了先前的局限性,鉴于将确切的区域取消应用于更现实的连续能源中子传输问题。该扩展的区域取消框架用于优化重量取消的效率。我们的发现在反应堆物理的基准配置上进行了说明。
The Monte Carlo method is often used to simulate systems which can be modeled by random walks. In order to calculate observables, in many implementations the "walkers" carry a statistical weight which is generally assumed to be positive. Some random walk simulations, however, may require walkers to have positive or negative weights: it has been shown that the presence of a mixture of positive and negative weights can impede the statistical convergence, and special weight-cancellation techniques must be adopted in order to overcome these issues. In a recent work we demonstrated the usefulness of one such method, exact regional weight cancellation, to solve eigenvalue problems in nuclear reactor physics in three spatial dimensions. The method previously exhibited had several limitations (including multi-group transport and isotropic scattering) and needed homogeneous cuboid cancellation regions. In this paper we lift the previous limitations, in view of applying exact regional cancellation to more realistic continuous-energy neutron transport problems. This extended regional cancellation framework is used to optimize the efficiency of the weight cancellation. Our findings are illustrated on a benchmark configuration for reactor physics.