Application of neural networks for the analysis of gamma-ray spectra measured with a Ge spectrometer

URI http://harp.lib.hiroshima-u.ac.jp/hbg/metadata/5752
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Title
Application of neural networks for the analysis of gamma-ray spectra measured with a Ge spectrometer
Author
氏名 岡 隆光
ヨミ オカ タカミツ
別名 Oka Takamitsu
氏名 静間 清
ヨミ シズマ キヨシ
別名 Shizuma Kiyoshi
氏名
ヨミ エンドウ サトル
別名 Endo Satoru
氏名
ヨミ ヨシダ エイジ
別名 Yoshida Eiji
Subject
Gamma-ray spectrometr
Neural network
Radioisotope identification
Abstract

The analysis of gamma-ray spectra to identify lines and their intensities usually requires expert knowledge and timeconsuming calculations with complex fitting functions. A neural network algorithm can be applied to a gamma-ray spectral analysis owing to its excellent pattern recognition characteristics. However, a gamma-ray spectrum typically having 4096 channels is too large as a typical input data size for a neural network. We show that by applying a suitable peak search procedure, gamma-ray data can be reduced to peak energy data, which can be easily managed as input by neural networks. The method was applied to the analysis of gamma-ray spectra composed of mixed radioisotopes and the spectra of uranium ores. Radioisotope identification was successfully achieved.

Journal Title
Nuclear Instruments & Methods in Physics Research Section A
Volume
484
Spage
557
Epage
563
Published Date
2002-05
Language
eng
NIIType
Journal Article
Text Version
Old URI
Set
hbg