Deep learning based pulse shape discrimination for germanium detectors

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Abstract

Experiments searching for rare processes like neutrinoless double beta decay heavily rely on the identification of background events to reduce their background level and increase their sensitivity. We present a novel machine learning based method to recognize one of the most abundant classes of background events in these experiments. By combining a neural network for feature extraction with a smaller classification network, our method can be trained with only a small number of labeled events. To validate our method, we use signals from a broad-energy germanium detector irradiated with a 228Th gamma source. We find that it matches the performance of state-of-the-art algorithms commonly used for this detector type. However, it requires less tuning and calibration and shows potential to identify certain types of background events missed by other methods.

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Holl, P., Hauertmann, L., Majorovits, B., Schulz, O., Schuster, M., & Zsigmond, A. J. (2019). Deep learning based pulse shape discrimination for germanium detectors. European Physical Journal C, 79(6). https://doi.org/10.1140/epjc/s10052-019-6869-2

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