Studies on $R_K$ with Large Dilepton Invariant-Mass, Scalable Pythonic Fitting, and Online Event Interpretation with GNNs at LHCb

Autor: Eschle, Jonas
Rok vydání: 2024
Předmět:
Druh dokumentu: Working Paper
Popis: The Standard Model of particle physics is well established, yet recently showed tensions with experimental observations. A large part of this thesis is dedicated to the first measurement of the ratio of branching fractions of the decays $B^+ \rightarrow K^+ \mu^+ \mu^-$ and $B^+ \rightarrow K^+ e^+ e^-$ , referred to as $R_K$ , in the high dilepton invariant-mass region. The presented analysis uses the full dataset of proton-proton collisions collected by the LHCb experiment in the years 2011-2018, corresponding to an integrated luminosity of 9 $fb^{-1}$. The final result for $R_K$ is still blinded. The sensitivity of the developed analysis is estimated to be $\sigma_{R_K}^{\mathrm{stat}} = 0.073$ and $\sigma_{R_K}^{\mathrm{stat}} = 0.031$. In addition to the precision measurement of $R_K$ at a high dilepton invariant mass, this thesis contains two more technical topics. First, an algorithm that selects particles in an event in the LHCb detector by performing a full event interpretation, referred to as DFEI. This tool is based on multiple Graph Neural Networks and aims to cope with the increase in luminosity in current and future upgrades of the LHCb detector. Comparisons with the current approach show at least similar, sometimes better, performance with respect to decay reconstruction and selection using charged particles. The efficiency is mostly independent of the luminosity, which is crucial for future upgrades. Second, a Python package for likelihood model fitting called zfit. The increasing popularity of the Python programming language in High Energy Physics creates a need for a flexible, modular, and performant fitting library. The zfit package is well integrated into the Python ecosystem, highly customizable and fast thanks to its computational backend TensorFlow.
Comment: PhD thesis, 269 pages, 130 figures, contains parts of arxiv:1910.13429 and arxiv:2304.08610, future publication on RK coming
Databáze: arXiv