Characterization of the low-lying0+and2+states inNi68viaβdecay of the low-spinCo68isomer
Physical Review C2015Vol. 91(3)
Citations Over TimeTop 10% of 2015 papers
F. Flavigny, D. Pauwels, D. Radulov, I. J. Darby, H. De Witte, J. Diriken, Д. В. Федоров, V. N. Fedosseev, L. M. Fraile, M. Huyse, V. S. Ivanov, U. Köster, B. A. Marsh, Takaharu Otsuka, L. Popescu, R. Raabe, M. D. Seliverstov, Noritaka Shimizu, A. M. Sjödin, Y. Tsunoda, P. Van den Bergh, P. Van Duppen, J. Van de Walle, M. Venhart, W. B. Walters, K. Wimmer
Abstract
The low-energy structure of the neutron-rich nucleus $^{68}\mathrm{Ni}$ has been investigated by measuring the $\ensuremath{\beta}$ decay of the low-spin isomer in $^{68}\mathrm{Co}$ selectively produced in the decay chain of $^{68}\mathrm{Mn}$. A revised level scheme has been built based on the clear identification of $\ensuremath{\beta}\ensuremath{-}\ensuremath{\gamma}\ensuremath{-}E0$ delayed coincidences. Transitions between the three lowest-lying ${0}^{+}$ and ${2}^{+}$ states are discussed on the basis of measured intensities or their upper limits for unobserved branches and state-of-the-art shell model calculations.
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