4.6 Article

Detecting macroscopic indefiniteness of cat states in bosonic interferometers

期刊

PHYSICAL REVIEW A
卷 100, 期 3, 页码 -

出版社

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevA.100.032117

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资金

  1. NSF [DMR-1411345]
  2. UC Office of the President through the UC Laboratory Fees Research Program [LGF-17-476883]
  3. Laboratory Directed Research and Development program of Los Alamos National Laboratory [20180045DR]
  4. National Nuclear Security Administration of the U.S. Department of Energy [89233218CNA000001]

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The paradigm of Schrodinger's cat illustrates how quantum states preclude the assignment of definite properties to a macroscopic object (realism). In this work, we develop a method to investigate the indefiniteness of cat states using currently available cold atom technology. The method we propose uses the observation of a statistical distribution to demonstrate the macroscopic distinction between dead and alive states and uses the determination of the interferometric sensitivity (Fisher information) to detect the indefiniteness of the cat state's vital status. We show how combining the two observations can provide information about the structure of the quantum state without the need for full quantum state tomography and propose a measure of the indefiniteness based on this structure. We test this method using a cat state proposed by Gordon and Savage [Phys. Rev. A 59, 4623 (1999)] which is dynamically produced from a coherent state. As a control, we consider a set of states produced using the same dynamical procedure acting on an initial thermal distribution. Numerically simulating our proposed method, we show that as the temperature of this initial state is increased, the produced state undergoes a quantum to classical crossover where the indefiniteness of the cat state's vital status is lost, while the macroscopic distinction between dead and alive states of the cat state is maintained.

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