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Reactor and Nuclear Systems Division, Consistent Adjoint Driven Importance Sampling Using Space, Energy and Angle.

机译:反应堆和核系统部门,使用空间,能量和角度的一致伴随驱动重要性采样。

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For challenging radiation transport problems, hybrid methods combine the accuracy of Monte Carlo methods with global information present in deterministic methods. One of the most successful hybrid methods is CADIS-- Consistent Adjoint Driven Importance Sampling. This method uses a deterministic adjoint solution to construct a biased source distribution and consistent weight windows to optimize a specific tally in a Monte Carlo calculation. The method has been implemented into transport codes using just the spatial and energy information from the deterministic adjoint solution and has been used in many applications to compute tallies with much higher figures-of-merit than analog calculations. CADIS also outperforms user-supplied importance values, which usually take long periods of user time to develop. This work extends CADIS to develop weight windows that are a function of the position, energy, and direction of the Monte Carlo particle. Two types of consistent source biasing are presented: one method that biases the source in space and energy while preserving the original directional distribution, and one method that biases the source in space, energy, and direction. Seven simple example problems are presented which compare the use of the standard space/energy CADIS with the two new space/energy/angle treatments.

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