학술논문

A New Technique Based on Convolutional Neural Networks to Measure the Energy of Protons and Electrons With a Single Timepix Detector
Document Type
Periodical
Source
IEEE Transactions on Nuclear Science IEEE Trans. Nucl. Sci. Nuclear Science, IEEE Transactions on. 68(8):1746-1753 Aug, 2021
Subject
Nuclear Engineering
Bioengineering
Protons
Instruments
Neural networks
Space radiation
Solar radiation
Ionizing radiation
Training
Geant4
Monte-Carlo simulations
neural networks
radiation belts
radiation monitor
space environment
Timepix
Language
ISSN
0018-9499
1558-1578
Abstract
The Timepix chip has been exposed to the outer space for the first time with the Space Application of Timepix-based Radiation Monitor (SATRAM) instrument on Project for On-Board Autonomy Vegetation (Proba-V), a European Space Agency’s (ESA) satellite. The objective of this study is to develop a new technique to improve the separation of protons and electrons, which are detected by the single-layer Timepix detector in SATRAM. The current identification method proposed by Gohl et al. (2019) is based on pattern recognition and stopping power measurements. In this article, the limitations of this method are discussed. A new method based on neural network trained with Geant4 data is proposed. Its validation with SATRAM data is presented. Similarly, a neural network trained with Geant4 data is introduced. Its purpose is to deduce the particles’ incident energy using the energy deposited in the Timepix.