Home > Books, Theses & Reports > Theses > Fast Simulation of Electromagnetic Calorimeter Responses using Deep Learning |
Thesis | BELLE2-PTHESIS-2023-010 |
Jubna Irakkathil Jabbar ; Prof. Dr. Guenter Quast ; Prof. Dr. Florian Bernlochner
2022
Karlsruhe Institute of Technology
Karlsruhe
Abstract: The monte carlo simulations of particle shower responses in electromagnetic calorimeters demand enormous computational resources and time. The area of deep learning and its application to various fields has made significant progress in the past decade. Fast simulation using deep learning can potentially help in reducing the simulation time. The objective of this thesis is to develop a fast simulation of MC particle shower responses in the electromagnetic calorimeter using deep learning models. Generative networks such as the Wasserstein Generative Adversarial Network, Variational Autoencoders, and their combinations are investigated for the studies.
Note: Presented on 29 07 2022
Note: PhD
The record appears in these collections:
Books, Theses & Reports > Theses > PhD Theses