Sign Up to like & get
recommendations!
1
Published in 2020 at "Journal of Molecular Modeling"
DOI: 10.1007/s00894-020-04576-1
Abstract: Alloy clusters of NaxLiy (4 ≤ x + y ≤ 10) are studied by exploring the potential energy surface in the ab initio MP2 level with the support of a quantum genetic algorithm (QGA). In some cases, the structures have been…
read more here.
Keywords:
clusters naxliy;
quantum genetic;
analysis;
genetic algorithm ... See more keywords
Sign Up to like & get
recommendations!
0
Published in 2025 at "IEEE Transactions on Circuits and Systems I: Regular Papers"
DOI: 10.1109/tcsi.2024.3486576
Abstract: Modular multilevel converters (MMCs) obtain widespread utilization in high-voltage direct current (HVdc) applications scenarios. The cost of power losses plays a significant part in MMC’s operating costs. Hence, this article proposes a quantum genetic algorithm-based…
read more here.
Keywords:
losses optimization;
genetic algorithm;
quantum genetic;
power losses ... See more keywords
Sign Up to like & get
recommendations!
1
Published in 2019 at "Shock and Vibration"
DOI: 10.1155/2019/3253280
Abstract: When performing flutter analysis through the traditional methods, it is difficult to solve high-order strong nonlinear equations. For overcoming this difficulty, this paper establishes a double-parameter optimization model for searching the flutter critical wind speed…
read more here.
Keywords:
firefly algorithm;
genetic firefly;
search;
quantum genetic ... See more keywords
Sign Up to like & get
recommendations!
0
Published in 2025 at "GEOPHYSICS"
DOI: 10.1190/geo2024-0400.1
Abstract: The self-potential (SP) method is widely used in mineral exploration for its simplicity and cost-effectiveness. Traditional inversion approaches often face challenges with local optima and computational inefficiency in complex models. A quantum genetic algorithm (QGA)…
read more here.
Keywords:
potential inversion;
genetic algorithm;
quantum genetic;
inversion ... See more keywords
Sign Up to like & get
recommendations!
0
Published in 2025 at "Algorithms"
DOI: 10.3390/a18030154
Abstract: Dimensionality reduction is essential in machine learning, reducing dataset dimensions while enhancing classification performance. Feature Selection, a key subset of dimensionality reduction, identifies the most relevant features. Genetic Algorithms (GA) are widely used for feature…
read more here.
Keywords:
genetic algorithm;
quantum genetic;
reduction;
feature ... See more keywords