New angles on fast calorimeter shower simulation

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Abstract

The demands placed on computational resources by the simulation requirements of high energy physics experiments motivate the development of novel simulation tools. Machine learning based generative models offer a solution that is both fast and accurate. In this work we extend the Bounded Information Bottleneck Autoencoder (BIB-AE) architecture, designed for the simulation of particle showers in highly granular calorimeters, in two key directions. First, we generalise the model to a multi-parameter conditioning scenario, while retaining a high degree of physics fidelity. In a second step, we perform a detailed study of the effect of applying a state-of-the-art particle flow-based reconstruction procedure to the generated showers. We demonstrate that the performance of the model remains high after reconstruction. These results are an important step towards creating a more general simulation tool, where maintaining physics performance after reconstruction is the ultimate target.

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Diefenbacher, S., Eren, E., Gaede, F., Kasieczka, G., Korol, A., Krüger, K., … Rustige, L. (2023). New angles on fast calorimeter shower simulation. Machine Learning: Science and Technology, 4(3). https://doi.org/10.1088/2632-2153/acefa9

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