Using deep neural networks to improve the precision of fast-sampled particle timing detectors (2312.05883v1)
Abstract: Measurements from particle timing detectors are often affected by the time walk effect caused by statistical fluctuations in the charge deposited by passing particles. The constant fraction discriminator (CFD) algorithm is frequently used to mitigate this effect both in test setups and in running experiments, such as the CMS-PPS system at the CERN's LHC. The CFD is simple and effective but does not leverage all voltage samples in a time series. Its performance could be enhanced with deep neural networks, which are commonly used for time series analysis, including computing the particle arrival time. We evaluated various neural network architectures using data acquired at the test beam facility in the DESY-II synchrotron, where a precise MCP (MicroChannel Plate) detector was installed in addition to PPS diamond timing detectors. MCP measurements were used as a reference to train the networks and compare the results with the standard CFD method. Ultimately, we improved the timing precision by 8% to 23%, depending on the detector's readout channel. The best results were obtained using a UNet-based model, which outperformed classical convolutional networks and the multilayer perceptron.
- “CMS-TOTEM Precision Proton Spectrometer”, 2014
- Roman Adolphi “The CMS experiment at the CERN LHC” In Jinst 803, 2008, pp. S08004
- “LHC machine” In Journal of instrumentation 3.08 IOP Publishing, 2008, pp. S08001
- Edoardo Bossini “The CMS Precision Proton Spectrometer timing system: performance in Run 2, future upgrades and sensor radiation hardness studies” In Journal of Instrumentation 15.05 IOP Publishing, 2020, pp. C05054
- “The SAMPIC waveform and time to digital converter” In 2014 IEEE Nuclear Science Symposium and Medical Imaging Conference (NSS/MIC), 2014, pp. 1–9 IEEE
- “Measurements of timing resolution of ultra-fast silicon detectors with the SAMPIC waveform digitizer” In Nuclear Instruments and Methods in Physics Research Section A: Accelerators, Spectrometers, Detectors and Associated Equipment 835 Elsevier, 2016, pp. 51–60
- M. Berretti, E. Bossini and N. Minafra “Timing performances of diamond detectors with Charge Sensitive Amplifier readout”, 2015
- Edoardo Bossini “Development of a Time Of Flight diamond detector and readout system for the TOTEM experiment at CERN” CERN-THESIS-2016-137, 2016
- “Improving data quality monitoring via a partnership of technologies and resources between the cms experiment at cern and industry” In EPJ Web of Conferences 214, 2019, pp. 01007 EDP Sciences
- Jonathan Shlomi, Peter Battaglia and Jean-Roch Vlimant “Graph neural networks in particle physics” In Machine Learning: Science and Technology 2.2 IOP Publishing, 2020, pp. 021001
- Meinrad Moritz Schefer “Machine Learning Techniques for selecting Forward Electrons (2.5<|η|<3.2)2.5𝜂3.2(2.5<|\eta|<3.2)( 2.5 < | italic_η | < 3.2 ) with the ATLAS High Level Trigger”, 2023
- “Time-series well performance prediction based on Long Short-Term Memory (LSTM) neural network model” In Journal of Petroleum Science and Engineering 186 Elsevier, 2020, pp. 106682
- “The study of a new time reconstruction method for MRPC read out by waveform digitizer” In Nuclear Instruments and Methods in Physics Research Section A: Accelerators, Spectrometers, Detectors and Associated Equipment 954 Elsevier, 2020, pp. 161224
- Fuyue Wang, Dong Han and Yi Wang “Improving the time resolution of the MRPC detector using deep-learning algorithms” In Journal of Instrumentation 15.09 IOP Publishing, 2020, pp. C09033
- Eric Berg and Simon R Cherry “Using convolutional neural networks to estimate time-of-flight from PET detector waveforms” In Physics in Medicine & Biology 63.2 IOP Publishing, 2018, pp. 02LT01
- “A convolutional neural network for ECG annotation as the basis for classification of cardiac rhythms” In Physiological measurement 39.10 IOP Publishing, 2018, pp. 104005
- “Robust R-Peak detection in low-quality holter ECGs using 1D convolutional neural network” In IEEE Transactions on Biomedical Engineering 69.1 IEEE, 2021, pp. 119–128
- “Test beam results of irradiated single-crystal CVD diamond detectors at DESY-II”, 2020
- Olaf Ronneberger, Philipp Fischer and Thomas Brox “U-net: Convolutional networks for biomedical image segmentation” In International Conference on Medical image computing and computer-assisted intervention, 2015, pp. 234–241 Springer
- Diederik P Kingma and Jimmy Ba “Adam: A method for stochastic optimization” In arXiv preprint arXiv:1412.6980, 2014
- “Joint training of a convolutional network and a graphical model for human pose estimation” In Advances in neural information processing systems 27, 2014
- Rich Caruana, Steve Lawrence and C Giles “Overfitting in neural nets: Backpropagation, conjugate gradient, and early stopping” In Advances in neural information processing systems 13, 2000
- “KerasTuner”, https://github.com/keras-team/keras-tuner, 2019
- “Batch normalization: Accelerating deep network training by reducing internal covariate shift” In International conference on machine learning, 2015, pp. 448–456 pmlr
- “Dropout: a simple way to prevent neural networks from overfitting” In The journal of machine learning research 15.1 JMLR. org, 2014, pp. 1929–1958
- Xavier Glorot, Antoine Bordes and Yoshua Bengio “Deep sparse rectifier neural networks” In Proceedings of the fourteenth international conference on artificial intelligence and statistics, 2011, pp. 315–323 JMLR WorkshopConference Proceedings
- Alex Bäuerle, Christian Onzenoodt and Timo Ropinski “Net2vis–a visual grammar for automatically generating publication-tailored cnn architecture visualizations” In IEEE transactions on visualization and computer graphics 27.6 IEEE, 2021, pp. 2980–2991
- “Efficient object localization using convolutional networks” In Proceedings of the IEEE conference on computer vision and pattern recognition, 2015, pp. 648–656