Reservoir-Engineered Exceptional Points for Quantum Energy Storage
Borhan Ahmadi, Andr\'e H. A. Malavazi, Pawe{\l} Mazurek, Pawe{\l} Horodecki, Shabir Barzanjeh

TL;DR
This paper presents a passive quantum energy storage method utilizing exceptional point physics through reservoir engineering, enabling rapid and robust energy transfer without gain media or nonlinear amplification.
Contribution
It introduces a novel reservoir engineering approach to realize exceptional points in passive quantum systems for energy storage, avoiding gain or non-Hermitian Hamiltonians.
Findings
Demonstrates stable and broken energy growth regimes.
Achieves rapid energy charging via dissipative interference.
Compatible with various quantum platforms.
Abstract
Exceptional points are spectral singularities where both eigenvalues and eigenvectors collapse onto a single mode, causing the system behavior to shift abruptly and making it highly responsive to even small perturbations. Although widely studied in optical and quantum systems, using them for energy storage in quantum systems has been difficult because existing approaches rely on gain, precise balanced loss, or explicitly non-Hermitian Hamiltonians. Here we introduce a quantum energy-storage mechanism that realizes exceptional-point physics in a fully passive, physically consistent open quantum system. Instead of amplification, we use trace-preserving reservoir engineering to create an effective complex interaction between a charging mode and a storage mode through a dissipative mediator, generating an exceptional point directly in the drift matrix of the Heisenberg-Langevin equations…
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Taxonomy
TopicsMechanical and Optical Resonators · Quantum Mechanics and Non-Hermitian Physics · Neural Networks and Reservoir Computing
