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Journal Articles

Development of atmospheric corrosion model considering meteorological data and airborne sea salt

Igarashi, Takahiro; Komatsu, Atsushi; Kato, Chiaki; Sakairi, Masatoshi*

Bosei Kanri, 65(10), p.365 - 370, 2021/10

We have developed a new atmospheric simulation model considering important environmental factors such as airborne sea salt, temperature, relative humidity, and rainfall. The developed model was verified by comparing predicted values by the simulation and measured data for the weight loss by atmospheric corrosion. In addition, atmospheric corrosion simulations under open and sheltered exposure condition were conducted, and it was confirmed that the air corrosion weight loss was strongly suppressed by the surface cleaning effect due to rainfall.

JAEA Reports

None

JNC TN4420 2000-009, 11 Pages, 2000/06

JNC-TN4420-2000-009.pdf:0.84MB

None

JAEA Reports

None

PNC TJ7439 96-004, 24 Pages, 1996/12

PNC-TJ7439-96-004.pdf:0.58MB

no abstracts in English

JAEA Reports

Implementation of an MRACnn System on an FBR Building Block Type Simulator

Ugolini; Yoshikawa, Shinji; Ozawa, Kenji

PNC TN9410 95-253, 13 Pages, 1995/10

PNC-TN9410-95-253.pdf:0.5MB

This report presents the implementation of the a model reference adaptive control system based on the artificial neural network technique (MRAC$$_{nn}$$) in a fast breeder reactor (FBR) building block type (BBT) simulator representing the Monju prototype reactor. The purpose of this report is to improve the control of the outlet steam temperature of the three evaporators of the Monju prototype reactor. The connection between the MRAC$$_{nn}$$ system and the BBT simulator is achieved through an external shared memory accessible by both systems. The MRAC$$_{nn}$$ system calculates the demand for the position of the feedwater valve replacing the signal of a PID controller collocated inside the heat transport system model of the Monju prototype reactor. Two series of simulation tests havc been performed, one with one loop connected to the MRAC$$_{nn}$$ system (leaving the remaining two connected to the original PID controller), and the other with three loops connected to the MRAC$$_{nn}$$ system. In both simulation tests the MRAC$$_{nn}$$ system performed better than the PID controller, keeping the outlet steam temperature of the evaporators closer to the required set point value through all the transients.

JAEA Reports

Neural Network Predictive and Anticipatory Control Algorithms for a Neural Adaptive Control System

Ugolini; Yoshikawa, Shinji; Ozawa, Kenji

PNC TN9410 95-210, 11 Pages, 1995/09

PNC-TN9410-95-210.pdf:0.47MB

The proper control of the outlet steam temperature of the evaporator is of major importance for improving the overall performance of the balance of plant of a nuclear power reactor. This report presents a predictive and an anticipatory control algorithms based on the artificial neural network (ANN) technique. The two control algorithms are embedded on a model reference adaptive control system based on the ANN technique, defined as MRAC$$_{nn}$$. It has already been illustrated that nonlinear dynamical systems such as the evaporator of a nuclear power plant can be controlled by an MRAC$$_{nn}$$ system. However, little attention has been devoted on exploiting the forecasting potential of the ANN technique for enhancing the accuracy and improving the efficacy of the control action of the MRAC$$_{nn}$$ system. The improved MRAC$$_{nn}$$ system has been tested to simulate the behavior of a fast breeder reactor (FBR) evaporator and to control its outlet steam temperature. The simulation results indicate that the performance of the MRAC$$_{nn}$$ system substantially improves when the predictive and the anticipatory control algorithms are activated.

JAEA Reports

None

; Sumiya, Shuichi;

PNC TN8450 94-006, 28 Pages, 1994/12

no abstracts in English

JAEA Reports

None

Kawamura, Kazuo*; Nakajima, Tatsuya*; Tomori, Masahiko*

PNC TJ7361 93-004, 91 Pages, 1993/03

PNC-TJ7361-93-004.pdf:8.99MB

no abstracts in English

JAEA Reports

None

Kurosawa, Ryuhei*

PNC TJ1615 92-002, 23 Pages, 1992/03

PNC-TJ1615-92-002.pdf:1.54MB

None

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