Bayesian Inference of Heavy-Quark Dissipation and Jet Transport Parameters from D-Meson observables in heavy-ion collisions at the LHC energies
Abstract
We perform the first simultaneous Bayesian inference of the temperature-dependent heavy-quark spatial diffusion coefficient 2π TDs and the scaled jet transport coefficient q/T3 in the quark-gluon plasma, utilizing D-meson nuclear modification factor RAA and elliptic flow v2 data from Pb-Pb collisions at sNN = 5.02\ TeV. The analysis employs a unified improved Langevin transport model that incorporates both collisional and radiative energy loss, followed by coalescence plus fragmentation hadronization. The posterior distributions of the parameters of q/T3 and those of 2π TDs are well constrained, and compared with the results of theoretical models or other experimental data extraction, respectively. The 30-50\% centrality data provide significantly stronger constraints than the 0-10\% data. The extracted ratio q/ between the quark jet transport and heavy-quark diffusion coefficients exhibits a non-monotonic temperature dependence, deviating from the value 2 estimated from the definition, with a value interval spanning 0.25--0.8 corresponding to the mean values of the inferred parameters. This work establishes a data-driven quantitative relationship between these two fundamental transport properties in the same observables, offering crucial insight into their interplay in the strongly coupled medium.
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