Please use this identifier to cite or link to this item: http://hdl.handle.net/123456789/3582
Title: Function Optimization Based on Higher-Order Quantum Genetic Algorithm
Authors: Tkachuk, V.
Kozlenko, Mykola
Kuz, Mykola
Lazarovych, Ihor
Dutchak, Mariia
Keywords: function optimization
quantum state entanglement
quantum genetic algorithm
quantum computation
quantum register
Issue Date: 2019
Citation: Tkachuk V. M. Function Optimization Based on Higher-Order Quantum Genetic Algorithm / V. M. Tkachuk, M. I. Kozlenko, M. V. Kuz, I. M. Lazarovych, M. C. Dutchak // Електронне моделювання. - 2019. - Т. 41, № 3. - С. 43-57. - Режим доступу: http://nbuv.gov.ua/UJRN/elmo_2019_41_3_6
Abstract: Quantum genetic algorithms (QGA) are typically built using the traditional representation of the quantum chromosome in the form of system of independent qubits. This makes it impossible to use a very powerful quantum calculations mechanism, namely quantum state entanglement. In this paper we implement a higher-order QGA and illustrate efficiency of the algorithm on the basis of example of optimization problem solved for a test functions set. An adaptive quantum gate operator, which does not require a lookup table is also proposed. In comparison to traditional QGA, the transition to higher (more than two) orders in the algorithm implementation shows much better results in terms of the running time, convergence speed and solution precision.
URI: http://hdl.handle.net/123456789/3582
ISSN: 0204–3572
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