Anomaly-free models for flavour anomalies.

Eur Phys J C Part Fields

1Theoretical Particle Physics and Cosmology Group, Physics Department, King's College London, London, WC2R 2LS UK.

Published: March 2018

AI Article Synopsis

  • The study discusses how triangle anomalies affect theoretical models with an additional U(1) gauge boson Z linked to flavor anomalies observed in recent experiments, such as those by LHCb.
  • It suggests that under certain conditions—like no extra fermions—U(1) charges for quarks must all equal zero to avoid these anomalies, while also noting the existence of anomaly-free models with more complex structures.
  • Additionally, the paper explores how introducing extra vector-like leptons can ease the constraints imposed by LHC experiments on these models, due to a suppression in certain decay processes.

Article Abstract

We explore the constraints imposed by the cancellation of triangle anomalies on models in which the flavour anomalies reported by LHCb and other experiments are due to an extra U(1) gauge boson Z . We assume universal and rational U(1) charges for the first two generations of left-handed quarks and of right-handed up-type quarks but allow different charges for their third-generation counterparts. If the right-handed charges vanish, cancellation of the triangle anomalies requires all the quark U(1) charges to vanish, if there are either no exotic fermions or there is only one Standard Model singlet dark matter (DM) fermion. There are non-trivial anomaly-free models with more than one such 'dark' fermion, or with a single DM fermion if right-handed up-type quarks have non-zero U(1) charges. In some of the latter models the U(1) couplings of the first- and second-generation quarks all vanish, weakening the LHC constraint, and in some other models the DM particle has purely axial couplings, weakening the direct DM scattering constraint. We also consider models in which anomalies are cancelled via extra vector-like leptons, showing how the prospective LHC Z constraint may be weakened because the branching ratio is suppressed relative to other decay modes.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6560685PMC
http://dx.doi.org/10.1140/epjc/s10052-018-5725-0DOI Listing

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