Quantum Information Engines: Assessing Time, Cost and Performance Criteria
- URL: http://arxiv.org/abs/2404.17431v1
- Date: Fri, 26 Apr 2024 14:14:24 GMT
- Title: Quantum Information Engines: Assessing Time, Cost and Performance Criteria
- Authors: Henning Kirchberg, Abraham Nitzan,
- Abstract summary: We investigate the crucial role of measurement time ($t_m$), information gain and energy consumption in information engines (IEs)
As the measurement time increases, the information gain and subsequently the extracted work also increase.
By considering the product of efficiency and power as a performance metric, we can identify the optimal operating conditions for the IE.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this study, we investigate the crucial role of measurement time ($t_m$), information gain and energy consumption in information engines (IEs) utilizing a von-Neumann measurement model. These important measurement parameters allow us to analyze the efficiency and power output of these devices. As the measurement time increases, the information gain and subsequently the extracted work also increase. However, there is a corresponding increase in the energetic cost. The efficiency of converting information into free energy diminishes as $t_m$ approaches both 0 and infinity, peaking at intermediate values of $t_m$. The power output (work extracted per times) also reaches a maximum at specific operational time regimes. By considering the product of efficiency and power as a performance metric, we can identify the optimal operating conditions for the IE.
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