4.6 Article

Measurement-driven reconstruction of many-particle quantum processes by semidefinite programming with application to photosynthetic light harvesting

Journal

PHYSICAL REVIEW A
Volume 86, Issue 1, Pages -

Publisher

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevA.86.012512

Keywords

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Funding

  1. NSF
  2. ARO
  3. Henry-Camille Dreyfus Foundation
  4. David-Lucile Packard Foundation
  5. Microsoft Corporation
  6. Division Of Chemistry
  7. Direct For Mathematical & Physical Scien [1152425] Funding Source: National Science Foundation

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Quantum measurements provide a trove of information about a quantum system or process without solution of the Schrodnger equation, and in principle, the associated density matrix is a function of these measurements. Inversion of the measurements can produce an estimate of the density matrix, but this estimate may be unphysical, especially when the measurements are noisy or incomplete. We develop a general approach based on semidefinite programming [D. A. Mazziotti, Phys. Rev. Lett. 106, 083001 (2011)] for reconstructing the density matrix from quantum measurements which leads naturally to nonnegative solutions, a critical attribute of physically realistic solutions. We discuss the use of this methodology for reconstructing p-particle reduced density matrices (p-RDMs) of N-particle systems where additional semidefinite constraints, known as N-representability conditions, are essential because they ensure that the p-RDM represents an N-particle system. Special attention is given to the N-representability conditions for the experimentally important cases where p = 1 or 2. We apply the methodology to reconstructing the time-dependent quantum process of exciton transfer in a photosynthetic light-harvesting complex.

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