2022
DOI: 10.32591/coas.ojit.0501.03033m
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Time-Series Prediction of Gamma-Ray Counts Using XGB Algorithm

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 ove… Show more

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