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Oral presentation

Spatial homogenization method and acceleration method for neutronics calculation codes

Tada, Kenichi

no journal, , 

Many accelerated methods are introduced and implemented to increase the speed of the neutronics calculation. However, there is no good Japanese text book, which explains these methods for beginner. This paper explains the detail of these methods and example of the application of the diffusion calculation code. The coarse mesh diffusion calculation method is widely used for the current neutronics analysis codes and this method is used spatial homogenization method. To improve the understanding of this method, this paper also explains the spatial homogenization methods. This paper explains the discontinuity factor and the Superhomogenization (SPH) method for the spatial homogenization method and the Successive Over Relaxation (SOR) method, the Chebyshev extrapolation method, the Wielandt method, the Coarse Mesh Rebalance (CMR) method, the Coarse Mesh Finite Difference (CMFD) method, and the Generalized Coarse Mesh Rebalance (GCMR) method for the acceleration method.

Oral presentation

Neutronics calculation with Python, 2; Stochastic method

Nagaya, Yasunobu

no journal, , 

This is a textbook for a lecture entitled with "Neutronics calculation with Python, 2; Stochastic method", which will be presented at the summer seminar of reactor physics organized by Atomic Energy Society of Japan, Reactor physics division. Fundamentals of Monte Carlo methods including random number generation and sampling method are illustrated with sample codes of the Python language. Monte Carlo algorithms are also described for a fixed-source problem, 1-group/2-group eigenvalue problems for simple spherical geometry.

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