Deep Learning-Based Spatiotemporal Multi-Event Reconstruction for Delay Line Detectors
- URL: http://arxiv.org/abs/2306.09359v2
- Date: Fri, 5 Jul 2024 08:46:17 GMT
- Title: Deep Learning-Based Spatiotemporal Multi-Event Reconstruction for Delay Line Detectors
- Authors: Marco Knipfer, Stefan Meier, Jonas Heimerl, Peter Hommelhoff, Sergei Gleyzer,
- Abstract summary: We present atemporal machine learning model to identify and reconstruct the position and time of multi-hit particle signals.
This model achieves a much better resolution for nearby particle hits compared to the classical approach.
We show that machine learning models can be effective in improving thetemporal performance of delay line detectors.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Accurate observation of two or more particles within a very narrow time window has always been a challenge in modern physics. It creates the possibility of correlation experiments, such as the ground-breaking Hanbury Brown-Twiss experiment, leading to new physical insights. For low-energy electrons, one possibility is to use a microchannel plate with subsequent delay lines for the readout of the incident particle hits, a setup called a Delay Line Detector. The spatial and temporal coordinates of more than one particle can be fully reconstructed outside a region called the dead radius. For interesting events, where two electrons are close in space and time, the determination of the individual positions of the electrons requires elaborate peak finding algorithms. While classical methods work well with single particle hits, they fail to identify and reconstruct events caused by multiple nearby particles. To address this challenge, we present a new spatiotemporal machine learning model to identify and reconstruct the position and time of such multi-hit particle signals. This model achieves a much better resolution for nearby particle hits compared to the classical approach, removing some of the artifacts and reducing the dead radius by half. We show that machine learning models can be effective in improving the spatiotemporal performance of delay line detectors.
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