Optimizing Entanglement Generation and Distribution Using Genetic Algorithms
Francisco Ferreira da Silva, Ariana Torres-Knoop, Tim Coopmans, David, Maier, Stephanie Wehner

TL;DR
This paper introduces a genetic algorithm-based methodology to optimize entanglement distribution in quantum repeater networks, aiding the development of scalable quantum internet infrastructure.
Contribution
It presents a novel optimization approach using genetic algorithms and simulations to improve quantum repeater network performance and identify minimal viable configurations.
Findings
Effective optimization of quantum repeater chains demonstrated
Identified minimum viable repeaters for given performance benchmarks
Applicable to real-world fiber network topologies
Abstract
Long-distance quantum communication via entanglement distribution is of great importance for the quantum internet. However, scaling up to such long distances has proved challenging due to the loss of photons, which grows exponentially with the distance covered. Quantum repeaters could in theory be used to extend the distances over which entanglement can be distributed, but in practice hardware quality is still lacking. Furthermore, it is generally not clear how an improvement in a certain repeater parameter, such as memory quality or attempt rate, impacts the overall network performance, rendering the path towards scalable quantum repeaters unclear. In this work we propose a methodology based on genetic algorithms and simulations of quantum repeater chains for optimization of entanglement generation and distribution. By applying it to simulations of several different repeater chains,…
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