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Predicting quadrupole deformation via anisotropic flow and transverse momentum spectra in isotopic ^128-135_ 54𝐗𝐞 collisions at LHC

The European Physical Journal C(2024)

Banaras Hindu University (BHU)

Cited 0|Views11
Abstract
In the hydrodynamical description of heavy-ion collisions, the elliptic flow v_2 and triangular flow v_3 are sensitive to the quadrupole deformation β _2 of the colliding nuclei. We produce v_2 and v_3 ratios qualitatively and quantitatively in most-central Xe–Xe collisions at 5.44 TeV. By employing HYDJET++ model, we study the sensitivity of anisotropic flow coefficients and mean transverse momentum to the quadrupole deformation and system-size in isotopic Xe–Xe collisions. Flow observables strongly depend on the strength of nucleon–nucleon scattering occurring in even-A and odd-A nuclei. Flow for odd-A nuclei is suppressed in comparison to flow in even-A collisions. There exists a linear inter-dependence between p_T integrated anisotropic flow and nuclear deformation. Mean transverse momentum signifies the fireball temperature in body–body and tip–tip collisions. There exists a negative linear correlation of ⟨p_T⟩ with collision system-size and a positive correlation with nuclear deformation. Flow measurements in high-energy, heavy-ion collisions using isotopic collision systems, offer a new precision tool to study nuclear structure physics. Observation of nuclear structure properties like nuclear deformation in a heavy-ion collision such as this would be very interesting.
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