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Journal Articles

R&D on Accelerator Driven Nuclear Transmutation System (ADS) at J-PARC, 4; Proton beam technology and neutronics

Meigo, Shinichiro; Nakano, Keita; Iwamoto, Hiroki

Purazuma, Kaku Yugo Gakkai-Shi, 98(5), p.216 - 221, 2022/05

For the realization of accelerator-driven transmutation systems (ADS) and the construction of the ADS target test facility (TEF-T) at J-PARC, it is necessary to study the proton beam handling technology and neutronics for protons in the GeV energy region. Accordingly, the Nuclear Transmutation Division of J-PARC has studied these issues with using J-PARC's accelerator facilities, and so on. This paper introduces these topics.

Journal Articles

Determination of reactivity and neutron flux using modified neural network for HTGR

Subekti, M.*; Kudo, Kazuhiko*; Nabeshima, Kunihiko; Takamatsu, Kuniyoshi

Atom Indonesia, 43(2), p.93 - 102, 2017/08

Reactor kinetics based on point kinetic model have been generally applied as the standard method for neutronics codes. As the central control rod (C-CR) withdrawal test has demonstrated in a prismatic core of HTTR, the transient calculation of kinetic parameter, such as reactivity and neutron fluxes, requires a new method to shorten calculation-process time. Development of neural network method was applied to point kinetic model as the necessity of real-time calculation that could work in parallel with the digital reactivity meter. The combination of TDNN and Jordan RNN, such as TD-Jordan RNN, was the result of the modeling approach. The application of TD-Jordan RNN with adequate learning, tested offline, determined results accurately even when signal inputs were noisy. Furthermore, the preprocessing for neural network input utilized noise reduction as one of the equations to transform two of twelve time-delayed inputs into power corrected inputs.

Journal Articles

Application of H$$_{infty}$$ control theory to power control of a nonlinear reactor model

Suzuki, Katsuo; Shimazaki, Junya; Shinohara, Yoshikuni

Nuclear Science and Engineering, 115, p.142 - 151, 1993/00

 Times Cited Count:23 Percentile:87.46(Nuclear Science & Technology)

no abstracts in English

Journal Articles

Development and experience of mini-computer system for library materials

; ; Itabashi, Keizo; Yonezawa, Minoru

1st Pacific Conf.on New Information Technology, p.195 - 203, 1987/00

no abstracts in English

JAEA Reports

Online Control System Programs for PDP-11 Series

; ;

JAERI-M 83-207, 125 Pages, 1983/12

JAERI-M-83-207.pdf:2.32MB

no abstracts in English

Journal Articles

None

;

Nihon Genshiryoku Gakkai-Shi, 25(9), p.691 - 695, 1983/00

 Times Cited Count:0 Percentile:0.02(Nuclear Science & Technology)

no abstracts in English

JAEA Reports

A New Method for Nonlinear Optimization Problems with a Few Variables

JAERI-M 7229, 26 Pages, 1977/08

JAERI-M-7229.pdf:0.88MB

no abstracts in English

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