• NUCLEAR TECHNIQUES
  • Vol. 47, Issue 9, 090404 (2024)
Feng CHEN, Jianbin ZHOU*, and Yi LIU
Author Affiliations
  • College of Nuclear Technology and Automation Engineering, Chengdu University of Technology, Chengdu 610059, China
  • show less
    DOI: 10.11889/j.0253-3219.2024.hjs.47.090404 Cite this Article
    Feng CHEN, Jianbin ZHOU, Yi LIU. Weak peak identification of gamma spectrum based on singular value decomposition[J]. NUCLEAR TECHNIQUES, 2024, 47(9): 090404 Copy Citation Text show less

    Abstract

    Background

    When performing gamma-ray spectroscopy analysis of samples with low levels of radioactive nuclide content, the weak peaks are difficult to be identified.

    Purpose

    This study aims to propose a new method for identifying peaks in γ spectra by utilizing singular value decomposition (SVD) to improve the detection efficiency of weak peaks.

    Methods

    Firstly, the matrix construction of spectrum data was improved by transforming the γ spectrum into a two-way cyclic matrix, and singular value decomposition of matrix was performed to get singular values and singular vectors. Then, the second singular value was selected to reconstruct the matrix and perform peak finding. Finally, the γ spectrum of the radioactive source 152Eu was used as the experimental object, the peak finding performance of proposed method was compared with that of first-order derivative peak finding, symmetric zero-area peak finding, and singular value decomposition peak finding.

    Results

    Comparison result show that the bidirectional circular matrix SVD peaking method has higher recall rate, precision rate, and F1 value, achieving 100%, 87% and 0.94, respectively.

    Conclusions

    The approach of this study can optimize weak peak detection and offer additional options for peak finding methods.

    Feng CHEN, Jianbin ZHOU, Yi LIU. Weak peak identification of gamma spectrum based on singular value decomposition[J]. NUCLEAR TECHNIQUES, 2024, 47(9): 090404
    Download Citation