Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Optimizing Energy Efficiency of MIMO Using Quantum Genetic Algorithm
We introduce a novel quantum genetic algorithm (QGA) that selects the optimum extreme (minimum or maximum) value of an unconstrained goal function with very low computational complexity. The quality of the initial candidate solutions of the classical genetic algorithm (CGA) has a strong influence on the speed of convergence to the best optimum result. To boost the quality of the initial selected random candidate solutions, we merge the CGA with a quantum extreme value searching algorithm (QEVSA). We exploited the proposed QGA as an embedded computational infrastructure for the uplink multiple-input multiple-output (MIMO) system. The algorithm maximizes the energy efficiency of the uplink MIMO system. Simulation results show that the suggested QGA successfully achieves maximum energy efficiency by determining the best transmit power of the active users.
Optimizing Energy Efficiency of MIMO Using Quantum Genetic Algorithm
We introduce a novel quantum genetic algorithm (QGA) that selects the optimum extreme (minimum or maximum) value of an unconstrained goal function with very low computational complexity. The quality of the initial candidate solutions of the classical genetic algorithm (CGA) has a strong influence on the speed of convergence to the best optimum result. To boost the quality of the initial selected random candidate solutions, we merge the CGA with a quantum extreme value searching algorithm (QEVSA). We exploited the proposed QGA as an embedded computational infrastructure for the uplink multiple-input multiple-output (MIMO) system. The algorithm maximizes the energy efficiency of the uplink MIMO system. Simulation results show that the suggested QGA successfully achieves maximum energy efficiency by determining the best transmit power of the active users.
Optimizing Energy Efficiency of MIMO Using Quantum Genetic Algorithm
Almasaoodi, Mohammed R. (Autor:in) / Sabaawi, Abdulbasit M. A. (Autor:in) / Gaily, Sara El (Autor:in) / Imre, Sandor (Autor:in)
20.02.2023
559003 byte
Aufsatz (Konferenz)
Elektronische Ressource
Englisch
Optimizing Exergy Efficiency of Flat Plate Solar Collectors Using SQP and Genetic Algorithm
British Library Conference Proceedings | 2013
|Optimizing welding sequence with genetic algorithm
British Library Online Contents | 2000
|Optimizing ship energy efficiency: Application of particle swarm optimization algorithm
SAGE Publications | 2018
|Genetic algorithm-based approach for optimizing the energy rating on existing buildings
SAGE Publications | 2016
|Optimizing Carbon Sequestration Potential for Chinese Fir Plantations Using Genetic Algorithm
DOAJ | 2024
|