QUANT-PHSYSYFeb 13, 2015

Optimization of distributed EPR entanglement generated between two Gaussian fields by the modified steepest descent method

arXiv:1502.010701.24 citationsh-index: 24
Originality Synthesis-oriented
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For researchers in quantum optics and continuous-variable quantum information, this work provides an optimization method for entanglement generation in coherent feedback networks, though it is an incremental improvement over existing dual-NOPA setups.

The authors optimized the EPR entanglement generated between two Gaussian fields in a dual-NOPA coherent feedback network using a modified steepest descent method, achieving a locally maximal entanglement configuration realized by beam splitters.

Recent theoretical investigations on quantum coherent feedback networks have found that with the same pump power, the Einstein-Podolski-Rosen (EPR)-like entanglement generated via a dual nondegenerate optical parametric amplifier (NOPA) system placed in a certain coherent feedback loop is stronger than the EPR-like entangled pairs produced by a single NOPA. In this paper, we present a linear quantum system consisting of two NOPAs and a static linear passive network of optical devices. The network has six inputs and six outputs, among which four outputs and four inputs are connected in a coherent feedback loop with the two NOPAs. This passive network is represented by a $6 \times 6$ complex unitary matrix. A modified steepest descent method is used to find a passive complex unitary matrix at which the entanglement of this dual-NOPA network is locally maximized. Here we choose the matrix corresponding to a dual-NOPA coherent feedback network from our previous work as a starting point for the modified steepest descent algorithm. By decomposing the unitary matrix obtained by the algorithm as the product of so-called two-level unitary matrices, we find an optimized configuration in which the complex matrix is realized by a static optical network made of beam splitters.

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