Constrained Optimization of Charged Particle Tracking with Multi-Agent Reinforcement Learning
Tobias Kortus, Ralf Keidel, Nicolas R. Gauger, Jan Kieseler (for the, Bergen pCT Collaboration)

TL;DR
This paper introduces a multi-agent reinforcement learning method with constraints for reconstructing particle tracks in detectors, improving accuracy and stability over existing approaches.
Contribution
It develops a constrained multi-agent RL framework with a safety layer and cost margin enforcement, advancing particle tracking in physics experiments.
Findings
Effective on simulated proton imaging data
Improves reconstruction accuracy and stability
Enables flexible, constrained policy optimization
Abstract
Reinforcement learning demonstrated immense success in modelling complex physics-driven systems, providing end-to-end trainable solutions by interacting with a simulated or real environment, maximizing a scalar reward signal. In this work, we propose, building upon previous work, a multi-agent reinforcement learning approach with assignment constraints for reconstructing particle tracks in pixelated particle detectors. Our approach optimizes collaboratively a parametrized policy, functioning as a heuristic to a multidimensional assignment problem, by jointly minimizing the total amount of particle scattering over the reconstructed tracks in a readout frame. To satisfy constraints, guaranteeing a unique assignment of particle hits, we propose a safety layer solving a linear assignment problem for every joint action. Further, to enforce cost margins, increasing the distance of the local…
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Taxonomy
TopicsAir Quality Monitoring and Forecasting · Advanced Neural Network Applications · Machine Learning and ELM
