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Research Papers

A Study on the Improvement of Scaling Factor Determination Using Artificial Neural Network

원문정보

인공신경망 이론을 이용한 척도인자 결정방법의 향상방안에 관한 연구

Sang-Chul Lee, Ki-Ha Hwang, Sang-Hee Kang, Kun-Jai Lee

피인용수 : 0(자료제공 : 네이버학술정보)

초록

영어

Final disposal of radioactive waste generated from Nuclear Power Plant (NPP) requires the detailed information about the characteristics and the quantities of radionuclides in waste package. Most of these radionuclides are difficult to measure and expensive to assay. Thus it is suggested to the indirect method by which the concentration of the Difficult-to-Measure (DTM) nuclide is estimated using the correlations of concentration - it is called the scaling factor - between Easy-to-Measure (Key) nuclides and DTM nuclides with the measured concentration of the Key nuclide. In general, the scaling factor is determined by the log mean average (LMA) method and the regression method. However, these methods are inadequate to apply to fission product nuclides and some activation product nuclides such as 14 and 90 . In this study, the artificial neural network (ANN) method is suggested to improve the conventional SF determination methods - the LMA method and the regression method. The root mean squared errors (RMSE) of the ANN models are compared with those of the conventional SF determination models for 14 and 90 in two parts divided by a training part and a validation part. The SF determination models are arranged in the order of RMSEs as the following order: ANN model

목차

Abstract
 I. Introduction
 II. Converntional SF Determination Method
 III. Artificial Neural Network
 IV. Application of SF determination
 V. Results and Discussion
 VI. Concluded Remarks
 VII. Acknowledgments
 VIII. References

저자정보

  • Sang-Chul Lee 이상철. 한국과학기술원
  • Ki-Ha Hwang 황기하. 한국과학기술원
  • Sang-Hee Kang 강상희. 한국과학기술원
  • Kun-Jai Lee 이건재. 한국과학기술원

참고문헌

자료제공 : 네이버학술정보

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