Physics:Quantum data analysis/Calorimetry: Difference between revisions
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== Analysis use == | == Analysis use == | ||
Calorimeter clusters contribute to electron, photon, tau, jet, and missing-energy reconstruction. Their resolution and tails often dominate important systematic uncertainties.<ref name="pdg2024">{{cite journal |collaboration=Particle Data Group |title=Review of Particle Physics |journal=Physical Review D |volume=110 |issue=3 |pages=030001 |year=2024 |doi=10.1103/PhysRevD.110.030001}}</ref> | Calorimeter clusters contribute to electron, photon, tau, jet, and missing-energy reconstruction. Their resolution and tails often dominate important systematic uncertainties.<ref name="pdg2024">{{cite journal |collaboration=Particle Data Group |title=Review of Particle Physics |journal=Physical Review D |volume=110 |issue=3 |pages=030001 |year=2024 |doi=10.1103/PhysRevD.110.030001}}</ref> | ||
== Overview == | |||
'''Calorimetry''' is used in particle-physics data analysis to turn detector output, simulated samples, and theoretical models into quantitative physics results. In high-energy experiments the term is connected with event selection, calibration, uncertainty treatment, validation, and comparison with Standard Model or beyond-Standard-Model predictions. | |||
== Analysis role == | |||
The analysis task is usually defined by the observable being measured or the signal being searched for. A robust workflow keeps raw detector information, reconstructed objects, simulated events, control samples, and statistical models traceable so that assumptions can be checked and systematic uncertainties can be propagated. | |||
== Practical considerations == | |||
In practice, calorimetry must be documented with selection definitions, units, binning choices, correction factors, and reproducible code or configuration. This makes the result easier to compare across experiments and easier to reinterpret when improved simulations, calibrations, or theoretical predictions become available.<ref name="pdg-data">{{cite journal |collaboration=Particle Data Group |title=Review of Particle Physics |journal=Physical Review D |volume=110 |issue=3 |pages=030001 |year=2024 |doi=10.1103/PhysRevD.110.030001}}</ref> | |||
=See also= | =See also= | ||
Revision as of 23:09, 19 May 2026
Calorimetry measures particle energy by absorbing particles in detector material and sampling the resulting electromagnetic or hadronic shower. Calorimeters are essential for measuring photons, electrons, jets, missing transverse momentum, and total event energy. In data analysis, calorimeter information must be calibrated, clustered, corrected, and combined with tracking and muon information.[1]
Electromagnetic and hadronic calorimeters
Electromagnetic calorimeters measure showers from electrons and photons, while hadronic calorimeters measure showers from strongly interacting particles. Hadronic response is more complex because invisible energy and shower fluctuations are larger.[1]
Calibration
Calibration corrects for detector response, nonuniformity, material effects, pileup, and energy scale. Control samples such as known resonances, isolated particles, and test-beam data are used to validate the response.[2][3]
Analysis use
Calorimeter clusters contribute to electron, photon, tau, jet, and missing-energy reconstruction. Their resolution and tails often dominate important systematic uncertainties.[4]
Overview
Calorimetry is used in particle-physics data analysis to turn detector output, simulated samples, and theoretical models into quantitative physics results. In high-energy experiments the term is connected with event selection, calibration, uncertainty treatment, validation, and comparison with Standard Model or beyond-Standard-Model predictions.
Analysis role
The analysis task is usually defined by the observable being measured or the signal being searched for. A robust workflow keeps raw detector information, reconstructed objects, simulated events, control samples, and statistical models traceable so that assumptions can be checked and systematic uncertainties can be propagated.
Practical considerations
In practice, calorimetry must be documented with selection definitions, units, binning choices, correction factors, and reproducible code or configuration. This makes the result easier to compare across experiments and easier to reinterpret when improved simulations, calibrations, or theoretical predictions become available.[5]
See also
Table of contents (60 articles)
Index
Full contents
References
- ↑ 1.0 1.1 Leo, William R. (1994). Techniques for Nuclear and Particle Physics Experiments. Springer. ISBN 978-3-540-57280-0.
- ↑ "The ATLAS Experiment at the CERN Large Hadron Collider". Journal of Instrumentation 3: S08003. 2008. doi:10.1088/1748-0221/3/08/S08003.
- ↑ "The CMS experiment at the CERN LHC". Journal of Instrumentation 3: S08004. 2008. doi:10.1088/1748-0221/3/08/S08004.
- ↑ "Review of Particle Physics". Physical Review D 110 (3): 030001. 2024. doi:10.1103/PhysRevD.110.030001.
- ↑ "Review of Particle Physics". Physical Review D 110 (3): 030001. 2024. doi:10.1103/PhysRevD.110.030001.
Source attribution: Physics:Quantum data analysis/Calorimetry
