Skip to content

  • Home
  • The collaboration
    • People
    • Institutes
    • Structure
  • Research
    • Global QCD analysis and machine learning
    • General strategy
    • Data
    • Neural Networks
    • Minimization
    • Cross-validation
    • Closure testing
    • Future testing
    • Hyperparameter Scan
    • Current research
  • For users
    • NNPDF code
    • Unpolarized PDF sets
    • Polarized PDF sets
    • Nuclear PDFs
    • Fragmentation functions
    • Neutrino Structure Functions
    • Tools
  • Documents
    • Papers
    • Talks
    • Lectures
    • Theses
    • Schools
  • Media
  • For the public

Search

NNPDF3.1singletop

NNPDF3.1singletop

We study the impact of recent LHC t-channel single top-quark and top-antiquark measurements at centre-of-mass energies of 7, 8 and 13 TeV on the parton distribution functions (PDFs) of the proton. We consider, namely, total cross sections, top-antitop cross section ratios, and differential distributions. We present a critical appraisal of the data, studying in particular how their description is affected by the theoretical details that enter the computation of the corresponding observables: QCD and electroweak higher-order corrections, the flavour scheme, and the value of the bottom-quark threshold. We perform a series of fits to the data within the NNPDF3.1 framework, whereby next-to-next-to-leading order QCD corrections are applied to single top measurements in a systematic way. We find that there exists an optimal combination of data that maximises consistency with the rest of the dataset, and efficiency in constraining the up, down and, partially, gluon PDFs.

Paper: https://arxiv.org/abs/1912.09543

NNPDF3.1 + singletop (optimal fit)
https://data.nnpdf.science/singletop/NNPDF31_nnlo_as_0118_singletop.tar.gz

About Accepta

Accepta is a modern, responsive WordPress theme designed for businesses, portfolios, and blogs.

About WPDINO

WPDINO is a WordPress development company. We create beautiful, functional themes that help businesses grow online.

Quick Links

  • Home
  • About
  • Services
  • Contact
  • Privacy Policy

Search

LinkedIn
© 2026 . Powered by WordPress.

NNPDF privacy and cookies

Our website uses cookies to improve your experience. We'll assume you're ok with this, but you can opt-out if you wish. Please visit our Privacy and cookies page for more information about cookies and how to disable them.

Close