Publikationen_1920x250_Detail

PGNAA Spectral Classification of Aluminium and Copper Alloys with Machine Learning

Henrik Folz , Joshua Henjes , Annika Heuer , Joscha Lahl , Philipp Olfert , Bjarne Seen , Sebastian Stabenau , Kai Krycki , Markus Lange-Hegermann and Helmand Shayan,
Apr 2024

In this paper, we explore the optimization of metal recycling with a focus on real-time differentiation between alloys of copper and aluminium. Spectral data, obtained through Prompt Gamma Neutron Activation Analysis (PGNAA), is utilized for classification. The study compares data from two detectors, cerium bromide (CeBr3) and high purity germanium (HPGe), considering their energy resolution and sensitivity. We test various data generation, preprocessing, and classification methods, with Maximum Likelihood Classifier (MLC) and Conditional Variational Autoencoder (CVAE) yielding the best results. The study also highlights the impact of different detector types on classification accuracy, with CeBr3 excelling in short measurement times and HPGe performing better in longer durations. The findings suggest the importance of selecting the appropriate detector and methodology based on specific application requirements.

@misc{2884,
author= {Folz, Henrik and Henjes, Joshua and Heuer, Annika and Lahl, Joscha and Olfert, Philipp and Seen, Bjarne and Stabenau, Sebastian and Krycki, Kai and Lange-Hegermann, Markus and Shayan, Helmand},
title= {PGNAA Spectral Classification of Aluminium and Copper Alloys with Machine Learning},
howpublished= {Preprint: arxiv:2404.14107},
month= {Apr},
year= {2024},
note= {},
}