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Universitas Hasanuddin
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Prediction of energy resolution in the JUNO experiment

Abusleme A.

Chinese Physics C

Q1
Published: 2025Citations: 14

Abstract

Abstract This paper presents an energy resolution study of the JUNO experiment, incorporating the latest knowledge acquired during the detector construction phase. The determination of neutrino mass ordering in JUNO requires an exceptional energy resolution better than 3% at 1 MeV. To achieve this ambitious goal, significant efforts have been undertaken in the design and production of the key components of the JUNO detector. Various factors affecting the detection of inverse beta decay signals have an impact on the energy resolution, extending beyond the statistical fluctuations of the detected number of photons, such as the properties of the liquid scintillator, performance of photomultiplier tubes, and the energy reconstruction algorithm. To account for these effects, a full JUNO simulation and reconstruction approach is employed. This enables the modeling of all relevant effects and the evaluation of associated inputs to accurately estimate the energy resolution. The results of this study reveal an energy resolution of 2.95% at 1 MeV. Furthermore, this study assesses the contribution of major effects to the overall energy resolution budget. This analysis serves as a reference for interpreting future measurements of energy resolution during JUNO data collection. Moreover, it provides a guideline for comprehending the energy resolution characteristics of liquid scintillator-based detectors.

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10.1088/1674-1137/ad83aa

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Resolution (logic)Sciences
ScintillatorSciences
PhysicsSciences
DetectorSciences
Energy (signal processing)Sciences
NeutrinoSciences
PhotomultiplierSciences
Neutrino detectorSciences
OpticsSciences
Nuclear physicsSciences
Neutrino oscillationSciences
Computer scienceSciences
Artificial intelligenceSciences
Quantum mechanicsSciences