TL;DR
This paper introduces a domain-informed neural network architecture for particle interaction localization in TPC detectors, incorporating prior scientific knowledge to improve efficiency and maintain performance in dark matter experiments.
Contribution
The paper presents a novel neural network design that encodes detector geometry and signal characteristics, reducing parameters while preserving localization accuracy.
Findings
60% fewer parameters than traditional MLPs
Achieves similar localization performance
Incorporates domain knowledge into neural network architecture
Abstract
This work proposes a domain-informed neural network architecture for experimental particle physics, using particle interaction localization with the time-projection chamber (TPC) technology for dark matter research as an example application. A key feature of the signals generated within the TPC is that they allow localization of particle interactions through a process called reconstruction. While multilayer perceptrons (MLPs) have emerged as a leading contender for reconstruction in TPCs, such a black-box approach does not reflect prior knowledge of the underlying scientific processes. This paper looks anew at neural network-based interaction localization and encodes prior detector knowledge, in terms of both signal characteristics and detector geometry, into the feature encoding and the output layers of a multilayer neural network. The resulting Domain-informed Neural Network (DiNN)…
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