Data-driven subtraction of anisotropic flows in jet-like correlation studies in heavy-ion collisions

2019 
Background: Measurements of two-particle azimuthal angle correlation are an useful tool to study the distribution of jet energy loss, however, they are complicated because of the significant anisotropic flow background. Purpose: We devise a data-driven method for subtracting anisotropic flow background in jet-like correlation analysis. Method: We first require a large recoil momentum ($P_x$) with in a given pseudo-rapidity ($\eta$) range from a high-transverse momentum particle to enhance in-acceptance population of away-side jet-like correlations. Then we take the difference of two-particle correlation in the close-region and far-region with respect to the $\eta$ region of $P_x$ to subtract the anisotropic flow background. Results: We use a toy model which contains only anisotropic flow and PYTHIA8 which have jets to demonstrate the validity of our data-driven method. Conclusions: The results indicate that the data-driven method can subtract anisotropic flow effectively.
    • Correction
    • Source
    • Cite
    • Save
    • Machine Reading By IdeaReader
    10
    References
    0
    Citations
    NaN
    KQI
    []