Cargando…

Application of Deep Learning techniques in the search for BSM Higgs bosons in the $\mu\mu$ final state in CMS

The Standard Model (SM) of particle physics predicts the existence of a Higgs field responsible for the generation of the particles' mass. The excitation of such field, known as the Higgs boson, has been observed for the first time by the ATLAS and CMS Collaborations in 2012. However, some aspe...

Descripción completa

Detalles Bibliográficos
Autor principal: Diotalevi, Tommaso
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:https://dx.doi.org/10.48676/unibo/amsdottorato/10356
http://cds.cern.ch/record/2813591
Descripción
Sumario:The Standard Model (SM) of particle physics predicts the existence of a Higgs field responsible for the generation of the particles' mass. The excitation of such field, known as the Higgs boson, has been observed for the first time by the ATLAS and CMS Collaborations in 2012. However, some aspects of this theory still remain unsolved, supposing the presence of new physics Beyond the Standard Model (BSM) with the production of new particles at a higher energy scale compared to the current experimental limits. The search for additional Higgs bosons is, in fact, predicted by theoretical extensions of the SM including the Minimal Supersymmetry Standard Model (MSSM). In the MSSM, the Higgs sector consists of two Higgs doublets, one of which couples to up-type fermions and the other to down-type fermions. This results in five physical Higgs particles: two charged bosons $H^{\pm}$, two neutral scalars $h$ and $H$, and one pseudoscalar $A$. The work presented in this thesis is dedicated to the search of neutral non Standard Model Higgs bosons decaying to two muons in the context of a model independent MSSM scenario. Proton-proton collision data recorded by the CMS experiment at the CERN LHC at a center-of-mass energy of 13 TeV are used, corresponding to an integrated luminosity of $35.9\ \text{fb}^{-1}$. Such search is sensitive to neutral Higgs bosons produced either via gluon fusion process or in association with a $\text{b}\bar{\text{b}}$ quark pair. The extensive usage of Machine and Deep Learning techniques, that I largely developed during my PhD work, is a fundamental element in the discrimination between signal and background simulated events. A new network structure called parameterised Neural Network (pNN) has been implemented, replacing a whole set of single neural networks trained at a specific mass hypothesis value with a single neural network able to generalise well and interpolate in the entire mass range considered. The results of the pNN signal/background discrimination are used to set a model independent 95% confidence level expected upper limit on the production cross section times branching ratio, for a generic $\phi$ boson decaying into a muon pair in the range from 130 to 1000 GeV.