Optimizing quantum battery performance by reducing battery influence in charging dynamics
- URL: http://arxiv.org/abs/2505.08029v1
- Date: Mon, 12 May 2025 19:54:19 GMT
- Title: Optimizing quantum battery performance by reducing battery influence in charging dynamics
- Authors: Rohit Kumar Shukla, Rajiv Kumar, Ujjwal Sen, Sunil K. Mishra,
- Abstract summary: We introduce a control parameter that allows us to suppress the battery s contribution during the charging dynamics.<n>Our results reveal a notable enhancement in stored energy and charging power when the battery s influence is suppressed.
- Score: 0.6083108064794253
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantum batteries have emerged as promising devices that work within the quantum regime and provide energy storage and power delivery. We investigate the interplay between the battery and charger Hamiltonians, with a particular focus on minimizing the battery s influence during the charging dynamics. To achieve this, we introduce a control parameter that allows us to suppress the battery s contribution during the charging dynamics. We explore various configurations, including a non-interacting many-body battery with an interacting many-body charger, an interacting battery with a non-interacting charger, and systems where both the battery and charger are interacting many-body systems. Our results reveal a notable enhancement in stored energy and charging power when the battery s influence is suppressed, underscoring the pivotal role of the charger in optimizing performance. Remarkably, across all scenarios, we observe that the presence of the battery s countereffect within the charger Hamiltonian consistently leads to improved storage characteristics, highlighting a fresh direction in designing efficient quantum batteries
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