Searches for New Physics Using Innovative Data Acquisition, Analysis, and Compression Techniques
Sökande efter ny fysik med innvoativ datainsamling, analys, och kompression
Author
Summary, in English
In the data taking period of 2015-2018, the ATLAS experiment received 10-70 simultaneous proton-proton collision events every 25 ns. At these high event rates, the experiment relies on trigger methods which only process the interesting collision events and keep detector readout and data storage within bandwidth constraints. The Trigger Level Analysis (TLA) presented in this thesis circumvents these bandwidth constraints by using the smaller event objects reconstructed at the trigger level as input to the analysis. The trigger level objects require custom calibration schemes, one of these was developed as part of this thesis to be used in the current and next iterations of the analysis.
The LHC is scheduled to be upgraded to the High Luminosity LHC (HL-LHC) and deliver 200 simultaneous proton-proton collision events. To provide the necessary resolution, readout speed, and radiation hardness, the ATLAS Inner Detector will be upgraded to the new fully silicon-based Inner Tracker (ITk). This thesis presents the work performed in developing, manufacturing, and delivering an automated quality control system for the new detector modules. Quality testing of the detector modules using this system is currently ongoing at multiple international institutes.
The large amount of simultaneous events provided by the HL-LHC will also be challenging for data storage, where the amount of ATLAS generated data is projected to be 5 times larger than the storage resources. As the data are already highly compressed using lossless methods, the work in this thesis presents proof-of-principle studies using machine learning-based methods to derive lossy compression algorithms tailored to a variety of datasets. The tool developed for this purpose is made available as an open-source project called "Baler".
Publishing year
2024-04-22
Language
English
Full text
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Document type
Dissertation
Publisher
Lunds universitet
Topic
- Subatomic Physics
Keywords
- Particle Physics
- Large Hadron collider LHC
- ATLAS
- Automation
- Calibration
- Analysis
- Dark Matter
- Machine Learning (ML)
- Artificial Intelligence (AI)
- Data Compression
- Open-source
Status
Published
Supervisor
- Caterina Doglioni
- Oxana Smirnova
- Luis Sarmiento Pico
- Krisztian Peters
ISBN/ISSN/Other
- ISBN: 9789181040128
- ISBN: 9789181040135
Defence date
17 May 2024
Defence time
13:00
Defence place
Rydbergsalen Join via zoom: https://lu-se.zoom.us/j/65184718387?pwd=dzZzeHVOMjBnSFZ3dU5wVzc2d1A0dz09 password: 20133724
Opponent
- Thea Aarrestad (Doctor)