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Quantum Thermodynamics
Lindbladian approach for many-qubit thermal machines: enhancing the performance with geometric heat pumping by entanglement
arXiv
Authors: GerĂ³nimo J. Caselli, Luis O. Manuel, Liliana Arrachea
Year
2025
Paper ID
16861
Status
Preprint
Abstract Read
~2 min
Abstract Words
191
Citations
N/A
Abstract
We present a detailed analysis of slowly driven quantum thermal machines based on interacting qubits within the framework of the Lindblad master equation. By implementing a systematic expansion in the driving rate, we derive explicit expressions for the rate of work of the driving forces, the heat currents exchanged with the reservoirs, and the entropy production up to second order, ensuring full thermodynamic consistency in the linear-response regime. The formalism naturally separates geometric and dissipative contributions, identified by a Berry curvature and a metric in parameter space, respectively. Analytical results show that the geometric heat pumped per cycle is bounded by kB T Nq ln 2 for Nq non-interacting qubits, in direct analogy with the Landauer limit for entropy change. This bound can be surpassed when qubit interactions and asymmetric couplings to the baths are introduced. Numerical results for the interacting two-qubit system reveal a non-trivial role of the interaction between qubits and the coupling between the qubits and the baths in the behavior of the dissipated power. The approach provides a general platform for studying dissipation, pumping, and performance optimization in driven quantum devices operating as heat engines.
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- This paper contributes to the Quantum Thermodynamics research area in the Quantum Articles archive.
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- We present a detailed analysis of slowly driven quantum thermal machines based on interacting qubits within the framework of the Lindblad master equation.
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