Two-time second-order correlation function
- URL: http://arxiv.org/abs/2406.10546v1
- Date: Sat, 15 Jun 2024 07:59:39 GMT
- Title: Two-time second-order correlation function
- Authors: Sintayehu Tesfa,
- Abstract summary: Derivation of two-time second-order correlation function by following approaches such as differential equation, coherent-state propagator, and quasi-statistical distribution function is presented.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Derivation of two-time second-order correlation function by following approaches such as stochastic differential equation, coherent-state propagator, and quasi-statistical distribution function is presented. In the process, the time dependence of the operators is transferred to the density operator by making use of trace operation in which the coherent state propagator and $Q$-function that represent the quantum system under consideration are expressed in terms of different time parameters. Even though the number of resulting integrations are found to be large, the accompanying implementation turns out to be straightforward in view that the associated $c$-number functions are Gaussian by nature. In relation to the asserted possibility of rewriting the result of one of the approaches in terms of the other, the presented derivation is expected to lay a strong foundation for viable technique of calculating correlations of various moments at different times that can be deployed in revealing quantum correlations.
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