Abstract
The time- or temperature-resolved detector signal from a thermoluminescence dosimeter can reveal additional information about circumstances of an exposure to ionising irradiation. We present studies using deep neural networks to estimate the date of a single irradiation with 12 mSv within a monitoring interval of 42 days from glow curves of novel TL-DOS personal dosimeters developed by the Materialprüfungsamt NRW in cooperation with TU Dortmund University. Using a deep convolutional network, the irradiation date can be predicted from raw time-resolved glow curve data with an uncertainty of roughly 1-2 days on a 68% confidence level without the need for a prior transformation into temperature space and a subsequent glow curve deconvolution (GCD). This corresponds to a significant improvement in prediction accuracy compared to a prior publication, which yielded a prediction uncertainty of 2-4 days using features obtained from a GCD as input to a neural network.
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CITATION STYLE
Mentzel, F., Derugin, E., Jansen, H., Kröninger, K., Nackenhorst, O., Walbersloh, J., & Weingarten, J. (2021). No more glowing in the dark: How deep learning improves exposure date estimation in thermoluminescence dosimetry. Journal of Radiological Protection, 41(4), S506–S521. https://doi.org/10.1088/1361-6498/ac20ae
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