ΛΛCorrelation Function Inau+aucollisions Ats…
Physical Review Letters(2015)
AGH University of Krakow
Abstract
We present ΛΛ correlation measurements in heavy-ion collisions for Au+Au collisions at √sNN=200 GeV using the STAR experiment at the Relativistic Heavy-Ion Collider. The Lednický-Lyuboshitz analytical model has been used to fit the data to obtain a source size, a scattering length and an effective range. Implications of the measurement of the ΛΛ correlation function and interaction parameters for dihyperon searches are discussed.Received 18 August 2014DOI:https://doi.org/10.1103/PhysRevLett.114.022301© 2015 American Physical Society
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