Events in our system are self-managed.  Group and event managers are encouraged to review privacy and security settings, and adjust them if needed.  If you need assistance please contact Indico Support - contact Help at bottom of page. https://learn.getindico.io/categories/managing/

16–19 Feb 2023
Banff Centre
Canada/Mountain timezone

Denoising of p-type point contact (PPC) HPGe detector signals with generative adversarial networks

Not scheduled
20m
Poster Room (Banff Centre)

Poster Room

Banff Centre

Poster Presentation Poster Poster Session

Speaker

Tianai Ye (Queen's University)

Description

High-purity germanium (HPGe) detectors are used in rare event searches such as neutrinoless double-beta decay, dark matter, and other beyond Standard Model physics. An efficient signal denoising algorithm can help advance these searches by improving energy resolution and background rejection techniques and allowing for the identification of low-energy signal events.

We present a machine learning based algorithm using generative adversarial networks (GAN) to reduce electronic noise in the charge pulses from a PPC HPGe detector.

Your Email tianai.ye@queensu.ca
Supervisor Ryan D. Martin
Supervisor Email ryan.martin@queensu.ca
Funding Agency Queen's University

Primary author

Tianai Ye (Queen's University)

Presentation materials

There are no materials yet.