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Signal recognition efficiencies of artificial neural-network pulse-shape discrimination in HPGe 0νββ -decay searches

The European Physical Journal C(2015)

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摘要
A pulse-shape discrimination method based on artificial neural networks was applied to pulses simulated for different background, signal and signal-like interactions inside a germanium detector. The simulated pulses were used to investigate variations of efficiencies as a function of used training set. It is verified that neural networks are well-suited to identify background pulses in true-coaxial high-purity germanium detectors. The systematic uncertainty on the signal recognition efficiency derived using signal-like evaluation samples from calibration measurements is estimated to be 5 %. This uncertainty is due to differences between signal and calibration samples.
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关键词
Hide Layer,Systematic Uncertainty,Compton Scattering,HPGe Detector,Recognition Efficiency
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