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Two-dimensional total absorption spectroscopy with conditional generative adversarial networks

Abstract

We explore the use of machine learning techniques to remove the response of large volume γ\gamma-ray detectors from experimental spectra. Segmented γ\gamma-ray total absorption spectrometers (TAS) allow for the simultaneous measurement of individual γ\gamma-ray energy (Eγ_\gamma) and total excitation energy (Ex_x). Analysis of TAS detector data is complicated by the fact that the Ex_x and Eγ_\gamma quantities are correlated, and therefore, techniques that simply unfold using Ex_x and Eγ_\gamma response functions independently are not as accurate. In this work, we investigate the use of conditional generative adversarial networks (cGANs) to simultaneously unfold ExE_{x} and EγE_{\gamma} data in TAS detectors. Specifically, we employ a \texttt{Pix2Pix} cGAN, a generative modeling technique based on recent advances in deep learning, to treat \rawmatrix~ matrix unfolding as an image-to-image translation problem. We present results for simulated and experimental matrices of single-γ\gamma and double-γ\gamma decay cascades. Our model demonstrates characterization capabilities within detector resolution limits for upwards of 93% of simulated test cases.

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