Variational quantum algorithm for ergotropy estimation in quantum
many-body batteries
- URL: http://arxiv.org/abs/2308.03334v2
- Date: Fri, 2 Feb 2024 02:58:28 GMT
- Title: Variational quantum algorithm for ergotropy estimation in quantum
many-body batteries
- Authors: Duc Tuan Hoang, Friederike Metz, Andreas Thomasen, Tran Duong Anh-Tai,
Thomas Busch and Thom\'as Fogarty
- Abstract summary: We simulate the charging process and work extraction of many-body quantum batteries on noisy-intermediate scale quantum (NISQ) devices.
We devise the Variational Quantum Ergotropy (VQErgo) algorithm which finds the optimal unitary operation that maximises work extraction from the battery.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantum batteries are predicted to have the potential to outperform their
classical counterparts and are therefore an important element in the
development of quantum technologies. Of particular interest is the role of
correlations in many-body quantum batteries and how these can affect the
maximal work extraction, quantified by the ergotropy. In this work we simulate
the charging process and work extraction of many-body quantum batteries on
noisy-intermediate scale quantum (NISQ) devices, and devise the Variational
Quantum Ergotropy (VQErgo) algorithm which finds the optimal unitary operation
that maximises work extraction from the battery. We test VQErgo by calculating
the ergotropy of a many-body quantum battery undergoing transverse field Ising
dynamics following a sudden quench. We investigate the battery for different
system sizes and charging times, and analyze the minimum number of ansatz
circuit repetitions needed for the variational optimization using both ideal
and noisy simulators. We also discuss how the growth of long-range correlations
can hamper the accuracy of VQErgo in larger systems, requiring increased
repetitions of the ansatz circuit to reduce error. Finally, we optimize part of
the VQErgo algorithm and calculate the ergotropy on one of IBM's quantum
devices.
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