Time-Series Prediction of Gamma-Ray Counts Using XGB Algorithm
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Date
2022-07-25
Journal Title
Journal ISSN
Volume Title
Publisher
Center for Open Access in Science
Abstract
Radioactivity is spontaneous and thus not easy to predict when it will occur. The average number
of decay events in a given interval can lead to accurate projection of the activity of a sample. The
possibility of predicting the number of events that will occur in a given time using machine
learning has been investigated. The prediction performance of the Extreme gradient boosted
(XGB) regression algorithm was tested on gamma-ray counts for K-40, Pb-212 and Pb-214 photo
peaks. The accuracy of the prediction over a six-minute duration was observed to improve at
higher peak energies. The best performance was obtained at 1460keV photopeak energy of K-40
while the least is at 239keV peak energy of Pb-212. This could be attributed to higher number of
data points at higher peak energies which are broad for NaITi detector hence the model had more
features to learn from. High R-squared values in the order of 0.99 and 0.97 for K-40 and Pb-212
peaks respectively suggest model overfitting which is attributed to the small number of detector
channels. Although radioactive events are spontaneous in nature and not easy to predict when
they will occur, it has been established that the average number of counts during a given period
of time can be modelled using the XGB algorithm. A similar study with a NaITi gamma detector
of high channel numbers and modelling with other machine learning algorithms would be
important to compare the findings of the current study.
Description
Journal Article
Keywords
radioactivity, extreme gradient boost, regression, Gamma-rays, photo-peaks, NaITi.
Citation
Mutuku, V., Mwema, J., & Joseph, M. (2022). Time-series prediction of gamma-ray counts using XGB algorithm. Open Journal for Information Technology, 5(1), 33.