TY - JOUR
T1 - Pulse pile-up recognition using multi-module DenseNet in neutron-gamma discrimination
AU - Pan, Ye
AU - Gong, Pin
AU - Hu, Zhimeng
AU - Wang, Zeyu
AU - Liang, Dajian
AU - Zhou, Cheng
AU - Zhu, Xiaoxiang
AU - Tang, Xiaobin
N1 - Publisher Copyright:
© 2024 Korean Nuclear Society
PY - 2024
Y1 - 2024
N2 - Neutron-gamma discrimination is crucial for various applications in nuclear science and technology. Currently, the majority of research is focused on pulse shape discrimination, and conventional methods achieve a certain level of accuracy in conventional neutron-gamma discrimination scenarios. However, under high-count-rate conditions, neutron-gamma signals tend to pile-up, resulting in pulse shape changes, that significantly affect the accuracy of conventional methods. In recent years, neural network technology has been shown to be effective for signal waveform recognition. In this study, two Multi-Module DenseNet network structures were designed: Multi-module DenseNet (MMDenseNet) and Multi-module DenseNet with base layer Reuse (MMDenseNet-R). The accuracy and F1-score of MMDenseNet/MMDenseNet-R for recognizing piled-up pulses at different pile-up degrees and noise levels was evaluated using DenseNet and ResNet as comparison networks. Among the various pile-up cases examined in this study, MMDenseNet/MMDenseNet-R consistently outperformed ResNet and DenseNet, showing clear superiority over conventional pulse shape discrimination methods. MMDenseNet/MMDenseNet-R achieved high-precision pulse piled-up recognition under various pile-up conditions through their modular design, thereby improving the usage of piled-up pulses during detection. These network architectures are expected to acquire more valid signals in complex neutron fields, further optimizing the accuracy of particle detection.
AB - Neutron-gamma discrimination is crucial for various applications in nuclear science and technology. Currently, the majority of research is focused on pulse shape discrimination, and conventional methods achieve a certain level of accuracy in conventional neutron-gamma discrimination scenarios. However, under high-count-rate conditions, neutron-gamma signals tend to pile-up, resulting in pulse shape changes, that significantly affect the accuracy of conventional methods. In recent years, neural network technology has been shown to be effective for signal waveform recognition. In this study, two Multi-Module DenseNet network structures were designed: Multi-module DenseNet (MMDenseNet) and Multi-module DenseNet with base layer Reuse (MMDenseNet-R). The accuracy and F1-score of MMDenseNet/MMDenseNet-R for recognizing piled-up pulses at different pile-up degrees and noise levels was evaluated using DenseNet and ResNet as comparison networks. Among the various pile-up cases examined in this study, MMDenseNet/MMDenseNet-R consistently outperformed ResNet and DenseNet, showing clear superiority over conventional pulse shape discrimination methods. MMDenseNet/MMDenseNet-R achieved high-precision pulse piled-up recognition under various pile-up conditions through their modular design, thereby improving the usage of piled-up pulses during detection. These network architectures are expected to acquire more valid signals in complex neutron fields, further optimizing the accuracy of particle detection.
KW - DenseNet
KW - EJ301
KW - MMDenseNet
KW - Neutron detection
KW - Pulse piled-up recognition
UR - http://www.scopus.com/inward/record.url?scp=85211043379&partnerID=8YFLogxK
U2 - 10.1016/j.net.2024.11.031
DO - 10.1016/j.net.2024.11.031
M3 - Article
AN - SCOPUS:85211043379
SN - 1738-5733
JO - Nuclear Engineering and Technology
JF - Nuclear Engineering and Technology
M1 - 103329
ER -