Discriminant analysis and secondary-beam charge recognition
✍ Scribed by J. Łukasik; P. Adrich; T. Aumann; C.O. Bacri; T. Barczyk; R. Bassini; S. Bianchin; C. Boiano; A.S. Botvina; A. Boudard; J. Brzychczyk; A. Chbihi; J. Cibor; B. Czech; J.-É. Ducret; H. Emling; J. Frankland; M. Hellström; D. Henzlova; G. Immè; I. Iori; H. Johansson; K. Kezzar; A. Lafriakh; A. Le Fèvre; E. Le Gentil; Y. Leifels; J. Lühning; W.G. Lynch; U. Lynen; Z. Majka; M. Mocko; W.F.J. Müller; A. Mykulyak; M. De Napoli; H. Orth; A.N. Otte; R. Palit; P. Pawłowski; A. Pullia; G. Raciti; E. Rapisarda; H. Sann; C. Schwarz; C. Sfienti; H. Simon; K. Sümmerer; W. Trautmann; M.B. Tsang; G. Verde; C. Volant; M. Wallace; H. Weick; J. Wiechula; A. Wieloch; B. Zwiegliński
- Book ID
- 103856981
- Publisher
- Elsevier Science
- Year
- 2008
- Tongue
- English
- Weight
- 537 KB
- Volume
- 587
- Category
- Article
- ISSN
- 0168-9002
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✦ Synopsis
The discriminant-analysis method has been applied to optimize the exotic-beam charge recognition in a projectile fragmentation experiment. The experiment was carried out at the GSI using the fragment separator (FRS) to produce and select the relativistic secondary beams, and the ALADIN setup to measure their fragmentation products following collisions with Sn target nuclei. The beams of neutron poor isotopes around 124 La and 107 Sn were selected to study the isospin dependence of the limiting temperature of heavy nuclei by comparing with results for stable 124 Sn projectiles. A dedicated detector to measure the projectile charge upstream of the reaction target was not used, and alternative methods had to be developed. The presented method, based on the multivariate discriminant analysis, allowed to increase the efficacy of charge recognition up to about 90%, which was about 20% more than achieved with the simple scalar methods.
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