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Reinforcement Learning for Optimal Control in Quantum Sensing Networks

Aktivität: Vortrag oder PräsentationPosterpräsentationScience-to-public

Beschreibung

Quantum sensing networks have established new limits to precision measurements in applications such as gravitational wave detection and atomic clocks. As this technology progresses, the operations among individual sensors become increasingly flexible, mimicking those of quantum computers. While this development paves the way for novel applications, identifying optimal control strategies for such sensing networks becomes increasingly complex. To address this challenge, we propose a solution that utilizes classical machine learning by extending an existing framework for model-aware reinforcement learning (RL) with Bayesian estimation by Belliardo et al. to variational algorithms from quantum computing. This approach enables the exploration of both known and novel sensing patterns. Our preliminary results suggest that this framework has the potential to account for arbitrary field patterns across the sensors.
Zeitraum29 Apr. 2025
EreignistitelQuantum Sensing Linz 2025
VeranstaltungstypWorkshop
OrtLinz, ÖsterreichAuf Karte anzeigen
BekanntheitsgradRegional

Wissenschaftszweige

  • 102040 Quantencomputing
  • 103025 Quantenmechanik
  • 202 Elektrotechnik, Elektronik, Informationstechnik
  • 102 Informatik

JKU-Schwerpunkte

  • Digital Transformation