Graph Clustering: a graph-based clustering algorithm for the electromagnetic calorimeter in LHCb

Author:

Canudas Núria VallsORCID,Gómez Míriam CalvoORCID,Vilasís-Cardona XavierORCID,Ribé Elisabet GolobardesORCID

Abstract

AbstractThe recent upgrade of the LHCb experiment pushes data processing rates up to 40 Tbit/s. Out of the whole reconstruction sequence, one of the most time consuming algorithms is the calorimeter data reconstruction. It aims at performing a clustering of the readout cells from the detector that belong to the same particle in order to measure its energy and position. This article presents a new algorithm for the calorimeter data reconstruction that makes use of graph data structures to optimise the clustering process, that will be denoted Graph Clustering. It outperforms the previously used method by $$65.4\%$$ 65.4 % in terms of computational time on average, with an equivalent efficiency and resolution. The implementation of the Graph Clustering method is detailed in this article, together with its performance results inside the LHCb framework using simulation data.

Funder

Ministerio de Ciencia e Innovación

Publisher

Springer Science and Business Media LLC

Subject

Physics and Astronomy (miscellaneous),Engineering (miscellaneous)

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