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JOURNALS // Pis'ma v Zhurnal Èksperimental'noi i Teoreticheskoi Fiziki // Archive

Pis'ma v Zh. Èksper. Teoret. Fiz., 2024 Volume 119, Issue 6, Pages 459–469 (Mi jetpl7186)

QUANTUM INFORMATION SCIENCE

Quantum-assisted open-pit optimization

G. Paradezhenko, A. Pervishko, D. Yudin

Skolkovo Institute of Science and Technology, Moscow, 121205 Russia

Abstract: With the recent advances in experimental realization of multi-qubit systems the idea of delegating certain real-life optimization tasks to a quantum computer becomes viable. In particular, we herein examine a variational quantum algorithm applied to a three-dimensional problem of open-pit mining, where the core of the classical optimization loop is provided by the probabilistic tensor sampling method. The developed technique is challenged against conventional optimization routines subjected to the essential optimization issues in variational quantum algorithms such as barren plateaus and multiple local minima. We demonstrate that the probabilistic tensor train-based approach allows one to steadily identify the ground state of a given system.

Received: 29.12.2023
Revised: 15.02.2024
Accepted: 22.02.2024

DOI: 10.31857/S1234567824060090


 English version:
Journal of Experimental and Theoretical Physics Letters, 2024, 119:6, 470–478


© Steklov Math. Inst. of RAS, 2024