Robust Interior Point Method for Quantum Key Distribution Rate Computation

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Publication:6364837

arXiv2104.03847MaRDI QIDQ6364837

Norbert Lütkenhaus, Henry Wolkowicz, Jie Lin, Jiyoung Im, Hao Hu

Publication date: 8 April 2021

Abstract: Security proof methods for quantum key distribution, QKD, that are based on the numerical key rate calculation problem, are powerful in principle. However, the practicality of the methods are limited by computational resources and the efficiency and accuracy of the underlying algorithms for convex optimization. We derive a stable reformulation of the convex nonlinear semidefinite programming, SDP, model for the key rate calculation problems. We use this to develop an efficient, accurate algorithm. The stable reformulation is based on novel forms of facial reduction, FR, for both the linear constraints and nonlinear quantum relative entropy objective function. This allows for a Gauss-Newton type interior-point approach that avoids the need for perturbations to obtain strict feasibility, a technique currently used in the literature. The result is high accuracy solutions with theoretically proven lower bounds for the original QKD from the FR stable reformulation. This provides novel contributions for FR for general SDP. We report on empirical results that dramatically improve on speed and accuracy, as well as solving previously intractable problems.




Has companion code repository: https://github.com/rebeccacrb07/openqkdsecurity








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