INS-DETAIDec 10, 2023

Using deep neural networks to improve the precision of fast-sampled particle timing detectors

arXiv:2312.05883v11 citationsComputer Science
Originality Incremental advance
AI Analysis

This work addresses precision limitations in particle physics experiments like CMS-PPS at CERN's LHC, representing an incremental improvement over existing methods.

The paper tackled the time walk effect in particle timing detectors by applying deep neural networks to voltage time series data, improving timing precision by 8% to 23% compared to the standard constant fraction discriminator method.

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.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes