Simulating Work Extraction in a Dinuclear Quantum Battery Using a Variational Quantum Algorithm
- URL: http://arxiv.org/abs/2502.19331v1
- Date: Wed, 26 Feb 2025 17:23:19 GMT
- Title: Simulating Work Extraction in a Dinuclear Quantum Battery Using a Variational Quantum Algorithm
- Authors: Lucas Galvão, Ana Clara das Neves, Maron Anka, Clebson Cruz,
- Abstract summary: This work explores the application of quantum computational methods to study the quantum properties and work extraction processes in a dinuclear quantum battery model.<n>We have shown that the presence of a noisy environment hinders the accuracy of the evaluation of the amount of energy stored in the system.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Understanding the thermodynamic properties of quantum systems is essential for developing energy-efficient quantum technologies. In this regard, this work explores the application of quantum computational methods to study the quantum properties and work extraction processes in a dinuclear quantum battery model. Our results demonstrate that variational quantum algorithms can reproduce key trends in experimental data, making it possible to analyze the effectiveness of the presented protocol in noisy environments and providing insights into the feasibility of quantum batteries in near-term devices. We have shown that the presence of a noisy environment hinders the accuracy of the evaluation of the amount of energy stored in the system. Additionally, we analyze the work extraction precision, revealing that although the system can store energy at room temperature, the protocol is highly precise only at low temperatures, and its accuracy at ambient conditions remains limited, compromising its usability.
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