TY - JOUR
T1 - Shower separation in five dimensions for highly granular calorimeters using machine learning
AU - The CALICE Collaboration
AU - Lai, S.
AU - Utehs, J.
AU - Wilhahn, A.
AU - Fouz, M. C.
AU - Bach, O.
AU - Brianne, E.
AU - Ebrahimi, A.
AU - Gadow, K.
AU - Göttlicher, P.
AU - Hartbrich, O.
AU - Heuchel, D.
AU - Irles, A.
AU - Krüger, K.
AU - Kvasnicka, J.
AU - Lu, S.
AU - Neubüser, C.
AU - Provenza, A.
AU - Reinecke, M.
AU - Sefkow, F.
AU - Schuwalow, S.
AU - De Silva, M.
AU - Sudo, Y.
AU - Tran, H. L.
AU - Liu, L.
AU - Masuda, R.
AU - Murata, T.
AU - Ootani, W.
AU - Seino, T.
AU - Takatsu, T.
AU - Tsuji, N.
AU - Pöschl, R.
AU - Richard, F.
AU - Zerwas, D.
AU - Hummer, F.
AU - Simon, F.
AU - Boudry, V.
AU - Brient, J. C.
AU - Nanni, J.
AU - Videau, H.
AU - Buhmann, E.
AU - Garutti, E.
AU - Huck, S.
AU - Kasieczka, G.
AU - Martens, S.
AU - Rolph, J.
AU - Wellhausen, J.
AU - Bilki, B.
AU - Northacker, D.
AU - Onel, Y.
AU - Emberger, L.
N1 - Publisher Copyright:
© 2024 The Author(s)
PY - 2024/10/1
Y1 - 2024/10/1
N2 - To achieve state-of-the-art jet energy resolution for Particle Flow, sophisticated energy clustering algorithms must be developed that can fully exploit available information to separate energy deposits from charged and neutral particles. Three published neural network-based shower separation models were applied to simulation and experimental data to measure the performance of the highly granular CALICE Analogue Hadronic Calorimeter (AHCAL) technological prototype in distinguishing the energy deposited by a single charged and single neutral hadron for Particle Flow. The performance of models trained using only standard spatial, energy and charged track position information from an event was compared to models trained using timing information available from AHCAL, which is expected to improve sensitivity to shower development and, therefore, aid in clustering. Both simulation and experimental data were used to train and test the models and their performances were compared. The best-performing neural network achieved significantly superior event reconstruction when timing information was utilised in training for the case where the charged hadron had more energy than the neutral one, motivating temporally sensitive calorimeters. All models under test were observed to tend to allocate energy deposited by the more energetic of the two showers to the less energetic one. Similar shower reconstruction performance was observed for a model trained on simulation and applied to data and a model trained and applied to data.
AB - To achieve state-of-the-art jet energy resolution for Particle Flow, sophisticated energy clustering algorithms must be developed that can fully exploit available information to separate energy deposits from charged and neutral particles. Three published neural network-based shower separation models were applied to simulation and experimental data to measure the performance of the highly granular CALICE Analogue Hadronic Calorimeter (AHCAL) technological prototype in distinguishing the energy deposited by a single charged and single neutral hadron for Particle Flow. The performance of models trained using only standard spatial, energy and charged track position information from an event was compared to models trained using timing information available from AHCAL, which is expected to improve sensitivity to shower development and, therefore, aid in clustering. Both simulation and experimental data were used to train and test the models and their performances were compared. The best-performing neural network achieved significantly superior event reconstruction when timing information was utilised in training for the case where the charged hadron had more energy than the neutral one, motivating temporally sensitive calorimeters. All models under test were observed to tend to allocate energy deposited by the more energetic of the two showers to the less energetic one. Similar shower reconstruction performance was observed for a model trained on simulation and applied to data and a model trained and applied to data.
KW - Large detector systems for particle and astroparticle physics
KW - Pattern recognition, cluster finding, calibration and fitting methods
KW - Performance of High Energy Physics Detectors
UR - https://www.scopus.com/pages/publications/85214998509
U2 - 10.1088/1748-0221/19/10/P10027
DO - 10.1088/1748-0221/19/10/P10027
M3 - Article
AN - SCOPUS:85214998509
SN - 1748-0221
VL - 19
JO - Journal of Instrumentation
JF - Journal of Instrumentation
IS - 10
M1 - P10027
ER -