19–25 Oct 2024
Europe/Zurich timezone

Neural network clusterization for the ALICE TPC online computing

23 Oct 2024, 14:42
18m
Room 1.C (Small Hall)

Room 1.C (Small Hall)

Talk Track 2 - Online and real-time computing Parallel (Track 2)

Speaker

Christian Sonnabend (CERN, Heidelberg University (DE))

Description

The ALICE Time Projection Chamber (TPC) is the detector with the highest data rate of the ALICE experiment at CERN and is the central detector for tracking and particle identification. Efficient online computing such as clusterization and tracking are mainly performed on GPU's with throughputs of approximately 900 GB/s. Clusterization itself has a well known background with a variety of algorithms in the field of machine learning. This work investigates a neural network approach to cluster rejection and regression on a topological basis. Central to its task are the center-of-gravity, sigma and total charge estimation as well as rejection of clusters in the TPC readout. Additionally, a momentum vector estimate is made from the 3D input across readout rows in combination with reconstructed tracks which can benefit track seeding. Performance studies on inference speed as well as model architectures and physics performance on Monte-Carlo data can be presented, showing that tracking performance can be maintained while rejecting 5-10% of raw clusters with a O(30%) reduced fake-rate for clusterization itself compared to the current GPU clusterizer.

Primary author

Christian Sonnabend (CERN, Heidelberg University (DE))

Presentation materials