6533b823fe1ef96bd127f391
RESEARCH PRODUCT
Digital liquid-scintillation counting and effective pulse-shape discrimination with artificial neural networks
Norbert TrautmannNorbert WiehlHans-otto KlingM. MendelKlaus EberhardtGert LangrockJens Volker KratzGunnar SkarnemarkA. NählerJon Petter OmtvedtUdo Tharunsubject
Artificial neural networkAnalogue electronicsChemistrybusiness.industryLiquid scintillation countingPattern recognitionSignalPulse (physics)Artificial intelligenceTransient (oscillation)Physical and Theoretical ChemistryOscilloscopebusinessDigital recordingdescription
Abstract A typical problem in low-level liquid scintillation (LS) counting is the identification of α particles in the presence of a high background of β and γ particles. Especially the occurrence of β-β and β-γ pile-ups may prevent the unambiguous identification of an α signal by commonly used analog electronics. In this case, pulse-shape discrimination (PSD) and pile-up rejection (PUR) units show an insufficient performance. This problem was also observed in own earlier experiments on the chemical behaviour of transactinide elements using the liquid-liquid extraction system SISAK in combination with LS counting. α-particle signals from the decay of the transactinides could not be unambiguously assigned. However, the availability of instruments for the digital recording of LS pulses changes the situation and provides possibilities for new approaches in the treatment of LS pulse shapes. In a SISAK experiment performed at PSI, Villigen, a fast transient recorder, a PC card with oscilloscope characteristics and a sampling rate of 1 giga samples s−1 (1 ns per point), was used for the first time to record LS signals. It turned out, that the recorded signals were predominantly α, β-β and β-γ pile up, and fission events. This paper describes the subsequent development and use of artificial neural networks (ANN) based on the method of “back-propagation of errors” to automatically distinguish between different pulse shapes. Such networks can “learn” pulse shapes and classify hitherto unknown pulses correctly after a learning period. The results show that ANN in combination with fast digital recording of pulse shapes can be a powerful tool in LS spectrometry even at high background count rates.
year | journal | country | edition | language |
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2014-11-07 | Radiochimica Acta |